Embodiments according to the invention are related to an audio decoder for providing a decoded audio information on the basis of an encoded audio information, an audio encoder for providing an encoded audio information on the basis of an input audio information, a method for providing a decoded audio information on the basis of an encoded audio information, a method for providing an encoded audio information on the basis of an input audio information and a computer program.
Embodiments according to the invention are related to an improved spectral noiseless coding, which can be used in an audio encoder or decoder, like, for example, a so-called unified-speech-and-audio coder (USAC).
Embodiment according to the invention are related to an update of spectral coding tables for application in a current USAC specification.
In the following, the background of the invention will be briefly explained in order to facilitate the understanding of the invention and the advantages thereof. During the past decade, big efforts have been put on creating the possibility to digitally store and distribute audio contents with good bitrate efficiency. One important achievement on this way is the definition of the International Standard ISO/IEC 14496-3. Part 3 of this Standard is related to an encoding and decoding of audio contents, and subpart 4 of part 3 is related to general audio coding. ISO/IEC 14496 part 3, subpart 4 defines a concept for encoding and decoding of general audio content. In addition, further improvements have been proposed in order to improve the quality and/or to reduce the bit rate that may be used.
According to the concept described in said Standard, a time-domain audio signal is converted into a time-frequency representation. The transform from the time-domain to the time-frequency-domain is typically performed using transform blocks, which are also designated as “frames”, of time-domain samples. It has been found that it is advantageous to use overlapping frames, which are shifted, for example, by half a frame, because the overlap allows to efficiently avoid (or at least reduce) artifacts. In addition, it has been found that a windowing should be performed in order to avoid the artifacts originating from this processing of temporally limited frames.
By transforming a windowed portion of the input audio signal from the time-domain to the time-frequency domain, an energy compaction is obtained in many cases, such that some of the spectral values comprise a significantly larger magnitude than a plurality of other spectral values. Accordingly, there are, in many cases, a comparatively small number of spectral values having a magnitude, which is significantly above an average magnitude of the spectral values. A typical example of a time-domain to time-frequency domain transform resulting in an energy compaction is the so-called modified-discrete-cosine-transform (MDCT).
The spectral values are often scaled and quantized in accordance with a psychoacoustic mode1, such that quantization errors are comparatively smaller for psychoacoustically more important spectral values, and are comparatively larger for psychoacoustically less-important spectral values. The scaled and quantized spectral values are encoded in order to provide a bitrate-efficient representation thereof.
For example, the usage of a so-called Huffman coding of quantized spectral coefficients is described in the International Standard ISO/IEC 14496-3:2005(E), part 3, subpart 4.
However, it has been found that the quality of the coding of the spectral values has a significant impact on the bit rate that may be used. Also, it has been found that the complexity of an audio decoder, which is often implemented in a portable consumer device, and which should therefore be cheap and of low power consumption, is dependent on the coding used for encoding the spectral values.
In view of this situation, there is a need for a concept for an encoding and decoding of an audio content, which provides for an improved trade-off between bitrate-efficiency and resource efficiency.
In accordance with one embodiment, an audio decoder for providing a decoded audio information on the basis of an encoded audio information may have: an arithmetic decoder for providing a plurality of decoded spectral values on the basis of an arithmetically encoded representation of the spectral values included in the encoded audio information; and a frequency-domain-to-time-domain converter for providing a time-domain audio representation using the decoded spectral values, in order to obtain the decoded audio information; wherein the arithmetic decoder is configured to select a mapping rule describing a mapping of a code value of the arithmetically encoded representation of spectral values representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in an encoded form, onto a symbol code representing one or more of the spectral values, or a most significant bitplane of one or more of the spectral values, in a decoded form, in dependence on a context state described by a numeric current context value; wherein the arithmetic decoder is configured to determine the numeric current context value in dependence on a plurality of previously decoded spectral values; wherein the arithmetic decoder is configured to evaluate a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, in order to select the mapping rule, wherein the arithmetic decoder is configured to evaluate the hash table for finding a hash table index value for which the value ari_hash_m[i]>>8 is equal or greater than c, while, if the found hash table index value i is greater than 0, the value ari_hash_m[i−1]>>8 is lower than c; wherein the arithmetic decoder is configured to select the mapping rule which is determined by a probability model index which equals to ari_hash_m[i]& 0xFF when ari_hash_m[i]>>8 is equal to c, or equals to ari_lookup_m[i] otherwise; wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4); and wherein the mapping table ari_lookup_m is defined as given in
In accordance with another embodiment, an audio decoder for providing a decoded audio information on the basis of an encoded audio information may have: an arithmetic decoder for providing a plurality of decoded spectral values on the basis of an arithmetically encoded representation of the spectral values included in the encoded audio information; and a frequency-domain-to-time-domain converter for providing a time-domain audio representation using the decoded spectral values, in order to acquire the decoded audio information; wherein the arithmetic decoder is configured to select a mapping rule describing a mapping of a code value of the arithmetically encoded representation of spectral values representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in an encoded form, onto a symbol code representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in a decoded form, in dependence on a context state described by a numeric current context value; wherein the arithmetic decoder is configured to determine the numeric current context value in dependence on a plurality of previously decoded spectral values; wherein the arithmetic decoder is configured to evaluate a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, in order to select the mapping rule, wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4); wherein the arithmetic decoder is configured to evaluate the hash table, to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and to derive a mapping rule index value describing a selected mapping rule in dependence on a result of the evaluation, wherein a mapping rule index value is individually associated to a numeric context value being a significant state value.
In accordance with another embodiment, a method for providing a decoded audio information on the basis of an encoded audio information may have the steps of: providing a plurality of decoded spectral values on the basis of an arithmetically encoded representation of the spectral values included in the encoded audio information; and providing a time-domain audio representation using the decoded spectral values, in order to acquire the decoded audio information; wherein providing the plurality of decoded spectral values includes selecting a mapping rule describing a mapping of a code value of the arithmetically encoded representation of spectral values representing one or more of the spectral values, or a most-significant bit-plane of one or more of the spectral values, in an encoded form, onto a symbol code representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in a decoded form, in dependence on a context state described by a numeric current context value; wherein the numeric current context value is determined in dependence on a plurality of previously decoded spectral values; wherein a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, is evaluated in order to select the mapping rule, wherein the hash table is evaluated using the algorithm
wherein c designates a variable representing the numeric current context value or a scaled version thereof; wherein i is a variable describing a current hash table index value; wherein i_min is a variable initialized to designate a hash table index value of a first entry of the hash table and selectively updated in dependence on a comparison between c and; wherein the condition “c<(j>>8)” defines that a state value described by the variable c is smaller than a state value described by the table entry ari_hash_m[i]; wherein “j&0xFF” describes a mapping rule index value described by the table entry ari_hash_m[i]; wherein i_max is a variable initialized to designate a hash table index value of a last entry of the hash table and selectively updated in dependence on a comparison between c and; wherein the condition “c>(j>>8)” defines that a state value described by the variable c is larger than a state value described by the table entry ari_hash_m[i]; wherein j is a variable; wherein the return value designates an index pki of a probability model, and is a mapping rule index value; wherein ari_hash_m designates the hash table; wherein ari_hash_m[i] designates an entry of the hash table ari_hash_m having hash table index value i; wherein ari_lookup_m designates a mapping table; wherein ari_lookup_m[i_max] designates an entry of the mapping table ari_lookup_m having mapping table index value i_max; wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3), 22(4); and wherein the mapping table ari_lookup_m is defined as given in
In accordance with another embodiment, a method for providing a decoded audio information on the basis of an encoded audio information may have the steps of: providing a plurality of decoded spectral values on the basis of an arithmetically encoded representation of the spectral values included in the encoded audio information; and providing a time-domain audio representation using the decoded spectral values, in order to acquire the decoded audio information; wherein providing a plurality of decoded spectral values includes selecting a mapping rule describing a mapping of a code value of the arithmetically encoded representation of spectral values representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in an encoded form onto a symbol code representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in a decoded form, in dependence on a context state described by a numeric current context value; wherein the numeric current context value is determined in dependence on a plurality of previously decoded spectral values; wherein a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, is evaluated in order to select the mapping rule, wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4); wherein the hash table is evaluated to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and wherein a mapping rule index value describing a selected mapping rule is derived in dependence on a result of the evaluation; wherein a mapping rule index value is individually associated to a numeric context value being a significant state value.
In accordance with another embodiment, an audio encoder for providing an encoded audio information on the basis of an input audio information may have: an energy-compacting time-domain-to-frequency-domain converter for providing a frequency-domain audio representation on the basis of a time-domain representation of the input audio information, such that the frequency-domain audio representation includes a set of spectral values; and an arithmetic encoder configured to encode one or more of the spectral values or a preprocessed version thereof using a variable length codeword, wherein the arithmetic encoder is configured to map one or more of the spectral values, or a value of a most significant bit-plane of one or more of the spectral values, onto a code value, wherein the arithmetic encoder is configured to select a mapping rule describing a mapping of the one or more spectral values, or of a most significant bit-plane of the one or more spectral values, onto the code value, in dependence on a context state described by a numeric current context value; and wherein the arithmetic encoder is configured to determine the numeric current context value in dependence on a plurality of previously-encoded spectral values; and wherein the arithmetic encoder is configured to evaluate a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, in order to select the mapping rule, wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4); wherein the arithmetic encoder is configured to evaluate the hash table, to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and to derive a mapping rule index value describing a selected mapping rule in dependence on a result of the evaluation; wherein a mapping rule index value is individually associated to a numeric context value being a significant state value.
In accordance with another embodiment, a method for providing an encoded audio information on the basis of an input audio information may have the steps of: providing a frequency-domain audio representation on the basis of a time-domain representation of the input audio information using an energy-compacting time-domain-to-frequency-domain conversion, such that the frequency-domain audio representation includes a set of spectral values; and arithmetically encoding one or more of the spectral values or a preprocessed version thereof using a variable length codeword, wherein one or more of the spectral values, or a value of a most significant bit-plane of one or more of the spectral values, is mapped onto a code value, wherein a mapping rule describing a mapping of one or more of the spectral values, or of a most significant bit-plane of one or more of the spectral values, onto a code value, is selected in dependence on a context state described by a numeric current context value; and wherein the numeric current context value is determined in dependence on a plurality of previously-encoded spectral values; and wherein a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, is evaluated in order to select the mapping rule, wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4); and wherein the hash table is evaluated, to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and wherein a mapping rule index value describing a selected mapping rule is derived in dependence on a result of the evaluation; wherein a mapping rule index value is individually associated to a numeric context value being a significant state value.
Another embodiment may have a computer program for performing the method for providing a decoded audio information on the basis of an encoded audio information, which method may have the steps of: providing a plurality of decoded spectral values on the basis of an arithmetically encoded representation of the spectral values included in the encoded audio information; and providing a time-domain audio representation using the decoded spectral values, in order to acquire the decoded audio information; wherein providing a plurality of decoded spectral values includes selecting a mapping rule describing a mapping of a code value of the arithmetically encoded representation of spectral values representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in an encoded form onto a symbol code representing one or more of the spectral values, or a most significant bit-plane of one or more of the spectral values, in a decoded form, in dependence on a context state described by a numeric current context value; wherein the numeric current context value is determined in dependence on a plurality of previously decoded spectral values; wherein a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, is evaluated in order to select the mapping rule, wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4); wherein the hash table is evaluated to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and wherein a mapping rule index value describing a selected mapping rule is derived in dependence on a result of the evaluation; wherein a mapping rule index value is individually associated to a numeric context value being a significant state value, when the computer program runs on a computer.
Another embodiment may have a computer program for performing the method for providing an encoded audio information on the basis of an input audio information, which method may have the steps of: providing a frequency-domain audio representation on the basis of a time-domain representation of the input audio information using an energy-compacting time-domain-to-frequency-domain conversion, such that the frequency-domain audio representation includes a set of spectral values; and arithmetically encoding one or more of the spectral values or a preprocessed version thereof using a variable length codeword, wherein one or more of the spectral values, or a value of a most significant bit-plane of one or more of the spectral values, is mapped onto a code value, wherein a mapping rule describing a mapping of one or more of the spectral values, or of a most significant bit-plane of one or more of the spectral values, onto a code value, is selected in dependence on a context state described by a numeric current context value; and wherein the numeric current context value is determined in dependence on a plurality of previously-encoded spectral values; and wherein a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of non-significant state values amongst the numeric context values, is evaluated in order to select the mapping rule, wherein the hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4); and wherein the hash table is evaluated, to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and wherein a mapping rule index value describing a selected mapping rule is derived in dependence on a result of the evaluation; wherein a mapping rule index value is individually associated to a numeric context value being a significant state value, when the computer program runs on a computer.
It has been found that the combination of the above mentioned algorithm with the hash table of FIGS. 22(1) to 22(4) allows for a particularly efficient selection of a mapping rule, as the hash table in accordance with FIGS. 22(1) to 22(4) defines, in a particularly well-suited manner, both significant values of the numeric context value and state intervals. Moreover, the interaction between said algorithm and the hash table in accordance with FIGS. 22(1) to 22(4) has shown to bring along particularly good results while keeping computational complexity reasonable small. Moreover, the mapping table defined in
In an advantageous embodiment, the arithmetic decoder is configured to evaluate the hash table using the algorithm as defined in
It has been found that the combination of the above mentioned algorithm, as shown in
However, it should be noted that slight changes (which are easily feasible) or even significant changes of the search algorithm may be made without changing the concept according to the present invention.
In other words, the search method is not constrained to the mentioned methods. Even though the usage of the bi-section method (for example, according to
In an advantageous embodiment, the arithmetic decoder is configured to select the mapping rule describing a mapping of a code value onto a symbol code on the basis of the mapping rule index value pki, which is, for example provided as a return value of the algorithm shown in
In an advantageous embodiment, the arithmetic decoder is configured to use the mapping rule index value as a table index value to select the mapping rule describing a mapping of a code value onto a symbol code. The usage of the mapping rule index value as a table index value allows for a computationally efficient an memory efficient selection of the mapping rule.
In an advantageous embodiment, the arithmetic decoder is configured to select one of the sub-tables of the table ari_cf_m[64][17], as defined in FIG. 23(1), 23(2), 23(3), as the selected mapping rule. This concept is based on the fact that the mapping rules defined by sub tables of the table ari_cf_m[64][17], as defined in FIG. 23(1),(2), (3), are well-adapted to the results which can be achieved by the execution of the above mentioned algorithm according to
In an advantageous embodiment, the arithmetic decoder is configured to obtain the numeric context value on the basis of a numeric previous context value using an algorithm in accordance with
In an advantageous embodiment, the arithmetic decoder is configured to update a context sub region value q[1][i] associated with a current audio frame and having associated the current frequency index of the two-tuple of spectral values currently decoded using an algorithm according to
In an advantageous embodiment, the arithmetic decoder is configured to provide a decoded value m representing a two-tuple of decoded spectral values using the arithmetic decoding algorithm according to
Another embodiment according to the invention creates a decoder for providing a decoded audio information on the basis of an encoded audio information. The audio decoder comprises an arithmetic decoder for providing a plurality of decoded spectral values on the basis of an arithmetically encoded representation of the spectral values. The audio decoder also comprises a frequency-domain-to-time-domain converter for providing a time-domain audio representation using the decoded spectral values, in order to obtain the decoded audio information. The arithmetic decoder is configured to select a mapping rule describing a mapping of a code value representing a spectral value, or a most-significant bit-plane of a spectral value, in a encoded form, onto a symbol code representing a spectral value, or a most-significant bit-plane of a spectral value, in a decoded form, in dependence on a context state described by a numeric current context value. The arithmetic decoder is configured to determine the numeric current context value in dependence on a plurality of previously decoded spectral values. The arithmetic decoder is configured to evaluate the hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of numeric context values, in order to select the mapping rule. The hash table ari_hash_m is defined as given in FIGS. 22(1), 22(2), 22(3) and 22(4). The arithmetic decoder is configured to evaluate the hash table to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and to derive a mapping rule index value describing a selected mapping rule in dependence on a result of a evaluation. It has been found that the hash table ari_hash_m ais given in FIGS. 22(1) to 22(4) is well-suited for a parsing for table context values described by entries of the hash table and intervals described by entries of the hash table, to thereby derive the mapping index value. It has been found that the definition of both table context values and intervals by the hash table in accordance with FIGS. 22(1) to 22(4) provides an efficient mechanism for the selection of the mapping rule when taken in combination with a simple concept for the evaluation of the hash table which uses entries of said hash table both to a check for table context values and to determine in which interval defined by entries of the hash table a non-table context values lies.
In an advantageous embodiment, the arithmetic decoder is configured to compare the numeric current context value, or a scaled version of the numeric current context value, with a series of the numerically ordered entries or sub-entries of the hash table, to iteratively obtain a hash table index value of a table entry, such that the numeric current context value lies within a interval defined by the obtained hash table entry designated by the obtained hash table index value and an adjacent hash table entry. In this case, the arithmetic decoder is configured to determine a next entry of the series of entries of the hash table in dependence on a result of a comparison between the numeric current context value, or a scaled version of the numeric current context value, and a current entry or sub-entry. It has been recognized that this mechanism allows for a particularly efficient evaluation of the hash table in accordance with FIGS. 22(1) to 22(4).
In an advantageous embodiment, the arithmetic decoder is configured to select a mapping rule defined by a second sub-entry of the hash table designated by the current hash table index value if it is found that the numeric current context value or a scaled version thereof is equal to the first sub-entry of the hash table designated by the current hash table index value. Accordingly, the entries of the hash-table, as defined in accordance with FIGS. 22(1) to 22(4) take over a double function. A first sub-entry (i.e., a first portion of an entry) of the hash table is used for identifying particularly significant states of the numeric (current) context value, while a second sub-entry of the hash table (i.e., a second part of such an entry) defines a mapping rule, for example, by defining a mapping rule index value. Thus, the entries of the hash table are used in a very efficient manner. Also, the mechanism is particularly efficient in providing mapping rule index values for the particularly important states of the numeric current context values, which are described by entries of the hash table, or, more precisely, by sub-entries of the hash table. Thus, a complete entry of the hash table, as defined in FIGS. 22(1) to 22(4), defines rules a mapping of a particularly important state of the numeric (current) context value to a mapping rule and interval boundaries of regions (or intervals) of less important states of the numeric current context value.
In an advantageous embodiment, the arithmetic decoder is configured to select a mapping rule defined by an entry or sub-entry of a mapping table ari_lookup_m if it is not found that the numeric current context value is equal to a sub-entry of the hash table. In this case, the arithmetic decoder is configured to choose the entry or sub-entry of the mapping table in dependence on the iteratively obtained hash table index value. Thus, a particularly efficient two-table mechanism is created, which allows to efficiently provide a mapping rule index value both for particularly important states of the numeric current context value and for less important states of the numeric current context value (wherein the less important states of the numeric current context value are not explicitly, i.e. individually, described by entries or sub-entries of the hash table).
In an advantageous embodiment, the arithmetic decoder is configured to selectively provide a mapping rule index value defined by the entry of the hash table designated by the obtained hash table index value if it is found that the numeric current context value equals the value defined by the entry of the hash table designated by the current hash table index value. Thus, there is an efficient mechanism which allows for the double-usage of the entries of the hash table.
Further embodiments of the invention create methods for providing a decoded audio information on the basis of an encoded audio information. Said methods fulfill the functionality of the audio decoders discussed before. Accordingly, the methods are based on the same ideas and findings as the audio decoders, such that a discussion is omitted here for the sake of brevity. It should be noted that the methods can be supplemented by any of the features and functionalities of the audio decoders.
Another embodiment according to the invention creates an audio decoder for providing an encoded audio information on the basis of an input audio information. The audio encoder comprises an energy-compacting time-domain-to-frequency-domain converter for providing a frequency-domain audio representation on the basis of a time-domain representation of the input audio information, such that the frequency-domain audio representation comprises a set of spectral values. The audio encoder also comprises an arithmetic encoder configured to encode a spectral value or a preprocessed version thereof using a variable length codeword.
The arithmetic encoder is configured to map a spectral value, or a value of a most significant bit-plane of a spectral value, onto a code value. The arithmetic encoder is also configured to select a mapping rule describing a mapping of a spectral value, or a most significant bit-plane of a spectral value, onto a code value, in dependence on a context state described by a numeric current context value. The arithmetic encoder is configured to determine the numeric current context value in dependence on a plurality of previously-encoded spectral values. The arithmetic encoder is also configured to evaluate a hash table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of numeric context values, in order to select the mapping rule. The hash table ari_hash_m is defined as given in FIGS. 22(1) to 22(4). The arithmetic encoder is configured to evaluate the hash table to determine whether the numeric current context value is identical to a table context value described by an entry of the hash table or to determine an interval described by entries of the hash table within which the numeric current context value lies, and to derive a mapping rule index value describing a selected mapping rule in dependence on a result of said evaluation. It should be noted that the functionality of the audio encoder is in parallel with the functionality of the audio decoder discussed above. Accordingly, reference is made to the above discussion of the key ideas of the audio decoder for the sake of brevity.
Moreover, it should be noted that the audio encoder can be supplemented by any of the features and functionalities of the audio decoder. In particular, any of the features regarding the selection of the mapping rule can be implemented in the audio encoder as well, wherein encoded spectral values take the place of decoded spectral values, and so on.
Another embodiment according to the invention creates a method for providing an encoded audio information on the basis for an input audio information. The method performs the functionality of the audio encoder described before in is based on the same ideas.
Another embodiment according to the invention creates a computer program for performing at least one of the methods described before.
Embodiments according to the present invention will subsequently be described taking reference to the enclosed figures, in which:
a shows a pseudo-program-code representation of an algorithm “arith_map_context( )” for mapping a context;
b shows a pseudo-program-code representation of another algorithm “arith_map_context( )” for mapping a context;
c shows a pseudo-program-code representation of an algorithm “arith_get_context( )” for obtaining a context state value;
d shows a pseudo-program-code representation of another algorithm “arith_get_context( )” for obtaining a context state value;
e shows a pseudo-program-code representation of an algorithm “arith_get_pk( )” for deriving a cumulative-frequencies-table index value “pki” from a state value (or a state variable);
f shows a pseudo-program-code representation of another algorithm “arith_get_pk( )” for deriving a cumulative-frequencies-table index value “pki” from a state value (or a state variable);
g shows a pseudo-program-code representation of an algorithm “arith_decode( )” for arithmetically decoding a symbol from a variable length codeword;
h shows a first part of a pseudo-program-code representation of another algorithm “arith_decode( )” for arithmetically decoding a symbol from a variable length codeword;
i shows a second part of a pseudo-program-code representation of the other algorithm “arith_decode( )” for arithmetically decoding a symbol from a variable length codeword;
j shows a pseudo-program-code representation of an algorithm for deriving absolute values a,b of spectral values from a common value m;
k shows a pseudo-program-code representation of an algorithm for entering the decoded values a,b into an array of decoded spectral values;
l shows a pseudo-program-code representation of an algorithm “arith_update_context( )” for obtaining a context subregion value on the basis of absolute values a,b of decoded spectral values;
m shows a pseudo-program-code representation of an algorithm “arith_finish( )” for filling entries of an array of decoded spectral values and an array of context subregion values;
n shows a pseudo-program-code representation of another algorithm for deriving absolute values a,b of decoded spectral values from a common value m;
o shows a pseudo-program-code representation of an algorithm “arith_update_context( )” for updating an array of decoded spectral values and an array of context subregion values;
p shows a pseudo-program-code representation of an algorithm “arith_save_context( )” for filling entries of an array of decoded spectral values and entries of an array of context subregion values;
q shows a legend of definitions;
r shows another legend of definitions;
a shows a syntax representation of a unified-speech-and-audio-coding (USAC) raw data block;
b shows a syntax representation of a single channel element;
c shows a syntax representation of a channel pair element;
d shows a syntax representation of an “ICS” control information;
e shows a syntax representation of a frequency-domain channel stream;
f shows a syntax representation of arithmetically coded spectral data;
g shows a syntax representation for decoding a set of spectral values;
h shows another syntax representation for decoding a set of spectral values;
i shows a legend of data elements and variables;
j shows another legend of data elements and variables;
k shows a syntax representation of a USAC single channel element “UsacSingleChannelElement( )”;
l shows a syntax representation of a USAC channel pair element “UsacChannelPairElement( )”;
m shows a syntax representation of an “ICS” control information;
n shows a syntax representation of USAC core coder data “UsacCoreCoderData”;
o shows a syntax representation of a frequency domain channel stream “fd_channel_stream( )”;
p shows a syntax representation of arithmetically coded spectral data “ac_spectral_data( )”;
a shows a schematic representation of a context for a state calculation, as it is used in accordance with working draft 4 of the USAC Draft Standard;
b shows an overview of the tables as used in the arithmetic coding scheme according to working draft 4 of the USAC Draft Standard;
a shows a schematic representation of a context for a state calculation, as it is used in embodiments according to the invention;
b shows an overview of the tables as used in the arithmetic coding scheme according to a comparison example;
a shows a graphical representation of a read-only memory demand for the noiseless coding scheme according a comparison example, and according to working draft 5 of the USAC Draft Standard, and according to the AAC (advanced audio coding) Huffman Coding;
b shows a graphical representation of a total USAC decoder data read-only memory demand in accordance with a comparison example and in accordance with the concept according to working draft 5 of the USAC Draft Standard;
FIGS. 22(1) to 22(4) show a table representation of a content of a table “ari_hash_m[742]”, according to an embodiment of the invention;
FIGS. 23(1) to 23(3) show a table representation of a content of a table “ari_cf_m[64][17]”, according to an embodiment of the invention; and
Demand for WD6, for a comparison example (“M17588”) and for an embodiment according to the invention (“New Proposal”);
a shows a pseudo-program-code representation of a function or algorithm “arith_map_context”, according to an embodiment of the invention;
b shows a pseudo-program-code representation of a function or algorithm “arith_get_context”, according to an embodiment of the invention;
c shows a pseudo-program-code representation of a function or algorithm “arith_map_pk”, according to an embodiment of the invention;
d shows a pseudo-program-code representation of a first portion of a function or algorithm “arith_decode”, according to an embodiment of the invention;
e shows a pseudo-program-code representation of a second portion of a function or algorithm “arith_decode”, according to an embodiment of the invention;
f shows a pseudo-program-code representation of a function or algorithm for decoding one or more least significant bits, according to an embodiment of the invention;
g shows a pseudo-program-code representation of a function or algorithm “arith_update_context”, according to an embodiment of the invention;
h shows a pseudo-program-code representation of a function or algorithm “arith_save_context”, according to an embodiment of the invention;
FIGS. 41(1) and 41(2) show a table representation of a content of a table “ari_lookup_m[742]”, according to an embodiment of the invention;
1. Audio Encoder according to
The audio encoder comprises an energy-compacting time-domain-to-frequency-domain converter 720 which is configured to provide a frequency-domain audio representation 722 on the basis of a time-domain representation of the input audio information 710, such that the frequency-domain audio representation 722 comprises a set of spectral values.
The audio encoder 700 also comprises an arithmetic encoder 730 configured to encode a spectral value (out of the set of spectral values forming the frequency-domain audio representation 722), or a pre-processed version thereof, using a variable-length codeword in order to obtain the encoded audio information 712 (which may comprise, for example, a plurality of variable-length codewords).
The arithmetic encoder 730 is configured to map a spectral value, or a value of a most-significant bit-plane of a spectral value, onto a code value (i.e. onto a variable-length codeword) in dependence on a context state.
The arithmetic encoder is configured to select a mapping rule describing a mapping of a spectral value, or of a most-significant bit-plane of a spectral value, onto a code value, in dependence on a (current) context state. The arithmetic encoder is configured to determine the current context state, or a numeric current context value describing the current context state, in dependence on a plurality of previously-encoded (advantageously, but not necessarily, adjacent) spectral values.
For this purpose, the arithmetic encoder is configured to evaluate a hash-table, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of numeric context values.
The hash_table (also designated as “ari_hash_m” in the following) is advantageously defined as given in the table representation of FIGS. 22(1), 22(2), 22(3) and 22(4).
Moreover, the arithmetic encoder is advantageously configured to evaluate the hash table(ari_hash_m), to determine whether the numeric current context value is identical to a table context value described by entries of the hash table (ari_hash_m) and/or to determine an interval described by entries of the hash table (ari_hash_m) within which the numeric current context value lies, and to derive a mapping rule index value (for example, designated with “pki” herein) describing a selected mapping rule in dependence on a result of the evaluation.
In some cases, a mapping rule index value may be individually associated to a numeric (current) context value being a significant state value. Also, a common mapping rule index value may be associated to different numeric (current) context values lying within an interval bounded by interval boundaries (wherein the interval boundaries are advantageously defined by the entries of the hash table).
As can be seen, the mapping of a spectral value (of the frequency-domain audio representation 722), or of a most-significant bit-plane of a spectral value, onto a code value (of the encoded audio information 712), may be performed by a spectral value encoding 740 using a mapping rule 742. A state tracker 750 may be configured to track the context state. The state tracker 750 provides an information 754 describing the current context state. The information 754 describing the current context state may advantageously take the form of a numeric current context value. A mapping rule selector 760 is configured to select a mapping rule, for example, a cumulative-frequencies-table, describing a mapping of a spectral value, or of a most-significant bit-plane of a spectral value, onto a code value. Accordingly, the mapping rule selector 760 provides the mapping rule information 742 to the spectral value encoding 740. The mapping rule information 742 may take the form of a mapping rule index value or of a cumulative-frequencies-table selected in dependence on a mapping rule index value. The mapping rule selector 760 comprises (or at least evaluates) a hash-table 752, entries of which define both significant state values amongst the numeric context values and boundaries and intervals of numeric context values. Advantageously, the entries of the hash table 762 (ari_hash_m[742]) are defined as given in the table representation of FIGS. 22(1) to 22(4). The hash-table 762 is evaluated in order to select the mapping rule, i.e. in order to provide the mapping rule information 742.
Advantageously, but not necessarily, a mapping rule index value may be individually associated to a numeric context value being a significant state value, and a common mapping rule index value may be associated to different numeric context values lying within an interval bounded by interval boundaries.
To summarize the above, the audio encoder 700 performs an arithmetic encoding of a frequency-domain audio representation provided by the time-domain-to-frequency-domain converter. The arithmetic encoding is context-dependent, such that a mapping rule (e.g. a cumulative-frequencies-table) is selected in dependence on previously encoded spectral values. Accordingly, spectral values adjacent in time and/or frequency (or, at least, within a predetermined environment) to each other and/or to the currently-encoded spectral value (i.e. spectral values within a predetermined environment of the currently encoded spectral value) are considered in the arithmetic encoding to adjust the probability distribution evaluated by the arithmetic encoding. When selecting an appropriate mapping rule, numeric context current values 754 provided by a state tracker 750 are evaluated. As typically the number of different mapping rules is significantly smaller than the number of possible values of the numeric current context values 754, the mapping rule selector 760 allocates the same mapping rules (described, for example, by a mapping rule index value) to a comparatively large number of different numeric context values. Nevertheless, there are typically specific spectral configurations (represented by specific numeric context values) to which a particular mapping rule should be associated in order to obtain a good coding efficiency.
It has been found that the selection of a mapping rule in dependence on a numeric current context value can be performed with particularly high computational efficiency if entries of a single hash-table define both significant state values and boundaries of intervals of numeric (current) context values. Moreover, it has been found that the usage of the hash table as defined in FIGS. 22(1), 22(2), 22(3), 22(4) brings along a particularly high coding efficiency. It has been found that this mechanism, in combination with said hash table, is well-adapted to the requirements of the mapping rule selection, because there are many cases in which a single significant state value (or significant numeric context value) is embedded between a left-sided interval of a plurality of non-significant state values (to which a common mapping rule is associated) and a right-sided interval of a plurality of non-significant state values (to which a common mapping rule is associated). Also, the mechanism of using a single hash-table, entries of which are defined in the tables of FIGS. 22(1), 22(2), 22(3), 22(4) and define both significant state values and boundaries of intervals of numeric (current) context values can efficiently handle different cases, in which, for example, there are two adjacent intervals of non-significant state values (also designated as non-significant numeric context values) without a significant state value in between. A particularly high computational efficiency is achieved due to a number of table accesses being kept small. For example, a single iterative table search is sufficient in most embodiments in order to find out whether the numeric current context value is equal to any of the significant state values defined by the entries of said hash table, or in which of the intervals of non-significant state values the numeric current context value lays. Consequently, the number of table accesses which are both, time-consuming and energy-consuming, can be kept small. Thus, the mapping rule selector 760, which uses the hash-table 762, may be considered as a particularly efficient mapping rule selector in terms of computational complexity, while still allowing to obtain a good encoding efficiency (in terms of bitrate).
Further details regarding the derivation of the mapping rule information 742 from the numeric current context value 754 will be described below.
2. Audio Decoder According to
The audio decoder 800 comprises an arithmetic decoder 820 which is configured to provide a plurality of spectral values 822 on the basis of an arithmetically encoded representation 821 of the spectral values.
The audio decoder 800 also comprises a frequency-domain-to-time-domain converter 830 which is configured to receive the decoded spectral values 822 and to provide the time-domain audio representation 812, which may constitute the decoded audio information, using the decoded spectral values 822, in order to obtain a decoded audio information 812.
The arithmetic decoder 820 comprises a spectral value determinator 824, which is configured to map a code value of the arithmetically-encoded representation 821 of spectral values onto a symbol code representing one or more of the decoded spectral values, or at least a portion (for example, a most-significant bit-plane) of one or more of the decoded spectral values. The spectral value determinator 824 may be configured to perform a mapping in dependence on a mapping rule, which may be described by a mapping rule information 828a. The mapping rule information 828a may, for example, take the form of a mapping rule index value, or of a selected cumulative-frequencies-table (selected, for example, in dependence on a mapping rule index value).
The arithmetic decoder 820 is configured to select a mapping rule (e.g. a cumulative-frequencies-table) describing a mapping of code values (described by the arithmetically-encoded representation 821 of spectral values) onto a symbol code (describing one or more spectral values, or a most-significant bit-plane thereof, in a decoded form) in dependence on a context state (which may be described by the context state information 826a).
The arithmetic decoder 820 is configured to determine the current context state (described by the numeric current context value) in dependence on a plurality of previously-decoded spectral values. For this purpose, a state tracker 826 may be used, which receives an information describing the previously-decoded spectral values and which provides, on the basis thereof, a numeric current context value 826a describing the current context state.
The arithmetic decoder is also configured to evaluate a hash-table 829, entries of which define both significant state values amongst the numeric context values and boundaries of intervals of numeric context values, in order to select the mapping rule. Advantageously, the entries of the hash table 829 (ari_hash_m[742]) are defined as given in the table representation of FIGS. 22(1) to 22(4). The hash-table 829 is evaluated in order to select the mapping rule, i.e. in order to provide the mapping rule information 829.
Advantageously, a mapping rule index value is individually associated to a numeric context value being a significant state value, and a common mapping rule index value is associated to different numeric context values lying within an interval bounded by interval boundaries. The evaluation of the hash-table 829 may, for example, be performed using a hash-table evaluator which may be part of the mapping rule selector 828. Accordingly, a mapping rule information 828a, for example, in the form of a mapping rule index value, is obtained on the basis of the numeric current context value 826a describing the current context state. The mapping rule selector 828 may, for example, determine the mapping rule index value 828a in dependence on a result of the evaluation of the hash-table 829. Alternatively, the evaluation of the hash-table 829 may directly provide the mapping rule index value.
Regarding the functionality of the audio signal decoder 800, it should be noted that the arithmetic decoder 820 is configured to select a mapping rule (e.g. a cumulative-frequencies-table) which is, on average, well adapted to the spectral values to be decoded, as the mapping rule is selected in dependence on the current context state (described, for example, by the numeric current context value), which in turn is determined in dependence on a plurality of previously-decoded spectral values. Accordingly, statistical dependencies between adjacent spectral values to be decoded can be exploited. Moreover, the arithmetic decoder 820 can be implemented efficiently, with a good trade-off between computational complexity, table size, and coding efficiency, using the mapping rule selector 828. By evaluating a (single) hash-table 829, entries of which describe both significant state values and interval boundaries of intervals of non-significant state values, a single iterative table search may be sufficient in order to derive the mapping rule information 828a from the numeric current context value 826a. Moreover, it has been found that the usage of the hash table as defined in FIGS. 22(1), 22(2), 22(3), 22(4) brings along a particularly high coding efficiency. Accordingly, it is possible to map a comparatively large number of different possible numeric (current) context values onto a comparatively smaller number of different mapping rule index values. By using the hash-table 829, as described above, and as defined in the table representation of FIGS. 22(1) to 22(4), it is possible to exploit the finding that, in many cases, a single isolated significant state value (significant context value) is embedded between a left-sided interval of non-significant state values (non-significant context values) and a right-sided interval of non-significant state values (non-significant context values), wherein a different mapping rule index value is associated with the significant state value (significant context value), when compared to the state values (context values) of the left-sided interval and the state values (context values) of the right-sided interval. However, usage of the hash-table 829 is also well-suited for situations in which two intervals of numeric state values are immediately adjacent, without a significant state value in between.
To conclude, the mapping rule selector 828, which evaluates the hash-table 829 “ari_hash_m[742], brings along a particularly good efficiency when selecting a mapping rule (or when providing a mapping rule index value) in dependence on the current context state (or in dependence on the numeric current context value describing the current context state), because the hashing mechanism is well-adapted to the typical context scenarios in an audio decoder.
Further details will be described below.
3. Context Value Hashing Mechanism According to
In the following, a context hashing mechanism will be disclosed, which may be implemented in the mapping rule selector 760 and/or the mapping rule selector 828. The hash-table 762 and/or the hash-table 829, as defined in the table representation of FIGS. 22(1) to 22(4), may be used in order to implement said context value hashing mechanism.
Taking reference now to
As can be seen, a hash-table entry “ari_hash_m[i1]” describes an individual (true) significant state having a numeric context value of c1. As can be seen, the mapping rule index value mriv1 is associated to the individual (true) significant state having the numeric context value c1. Accordingly, both the numeric context value c1 and the mapping rule index value mriv1 may be described by the hash-table entry “ari_hash_m[i1]”. An interval 932 of numeric context values is bounded by the numeric context value c1, wherein the numeric context value c1 does not belong to the interval 932, such that the largest numeric context value of interval 932 is equal to c1−1. A mapping rule index value of mriv4 (which is different from mriv1) is associated with the numeric context values of the interval 932. The mapping rule index value mriv4 may, for example, be described by the table entry “ari_lookup_m[i1−1]” of an additional table “ari_lookup_m”.
Moreover, a mapping rule index value mriv2 may be associated with numeric context values lying within an interval 934. A lower bound of interval 934 is determined by the numeric context value c1, which is a significant numeric context value, wherein the numeric context value c1 does not belong to the interval 932. Accordingly, the smallest value of the interval 934 is equal to c1+1 (assuming integer numeric context values). Another boundary of the interval 934 is determined by the numeric context value c2, wherein the numeric context value c2 does not belong to the interval 934, such that the largest value of the interval 934 is equal to c2−1. The numeric context value c2 is a so-called “improper” numeric context value, which is described by a hash-table entry “ari_hash_m[i2]”. For example, the mapping rule index value mriv2 may be associated with the numeric context value c2, such that the numeric context value associated with the “improper” significant numeric context value c2 is equal to the mapping rule index value associated with the interval 934 bounded by the numeric context value c2. Moreover, an interval 936 of numeric context value is also bounded by the numeric context value c2, wherein the numeric context value c2 does not belong to the interval 936, such that the smallest numeric context value of the interval 936 is equal to c2+1. A mapping rule index value mriv3, which is typically different from the mapping rule index value mriv2, is associated with the numeric context values of the interval 936.
As can be seen, the mapping rule index value mriv4, which is associated to the interval 932 of numeric context values, may be described by an entry “ari_lookup_m[i1−1]” of a table “ari_lookup_m”, the mapping rule index mriv2, which is associated with the numeric context values of the interval 934, may be described by a table entry “ari_lookup_m[i1]” of the table “ari_lookup_m”, and the mapping rule index value mriv3 may be described by a table entry “ari_lookup_m[i2]” of the table “ari_lookup_m”. In the example given here, the hash-table index value i2, may be larger, by 1, than the hash-table index value i1.
As can be seen from
Moreover, the evaluation of the hash-table “ari_hash_m” may be used to obtain a hash-table index value (for example, i1−1, i1 or i2). Thus, the mapping rule selector 760, 828 may be configured to obtain, by evaluating a single hash-table 762, 829 (for example, the hash-table “ari_hash_m”), a hash-table index value (for example, i1−1, i1 or i2) designating a significant state value (e.g., c1 or c2) and/or an interval (e.g., 932,934,936) and an information as to whether the numeric current context value is a significant context value (also designated as significant state value) or not.
Moreover, if it is found in the evaluation of the hash-table 762, 829, “ari_hash_m”, that the numeric current context value is not a “significant” context value (or “significant” state value), the hash-table index value (for example, i1−1, i1 or i2) obtained from the evaluation of the hash-table (“ari_hash_m”) may be used to obtain a mapping rule index value associated with an interval 932, 934, 936 of numeric context values. For example, the hash-table index value (e.g., i1−1, i1 or i2) may be used to designate an entry of an additional mapping table (for example, “ari_lookup_m”), which describes the mapping rule index values associated with the interval 932, 934, 936 within which the numeric current context value lies.
For further details, reference is made to the detailed discussion below of the algorithm “arith_get_pk” (wherein there are different options for this algorithm “arith_get_pk( )”, examples of which are shown in
Moreover, it should be noted that the size of the intervals may differ from one case to another. In some cases, an interval of numeric context values comprises a single numeric context value. However, in many cases, an interval may comprise a plurality of numeric context values.
4. Audio Encoder According to
The audio encoder 1000 is configured to receive an input audio information 710 and to provide, on the basis thereof, an encoded audio information 712. The audio encoder 1000 comprises an energy-compacting time-domain-to-frequency-domain converter 720, which is configured to provide a frequency-domain representation 722 on the basis of a time-domain representation of the input audio information 710, such that the frequency-domain audio representation 722 comprises a set of spectral values. The audio encoder 1000 also comprises an arithmetic encoder 1030 configured to encode a spectral value (out of the set of spectral values forming the frequency-domain audio representation 722), or a pre-processed version thereof, using a variable-length codeword to obtain the encoded audio information 712 (which may comprise, for example, a plurality of variable-length codewords).
The arithmetic encoder 1030 is configured to map a spectral value, or a plurality of spectral values, or a value of a most-significant bit-plane of a spectral value or of a plurality of spectral values, onto a code value (i.e. onto a variable-length codeword) in dependence on a context state. The arithmetic encoder 1030 is configured to select a mapping rule describing a mapping of a spectral value, or of a plurality of spectral values, or of a most-significant bit-plane of a spectral value or of a plurality of spectral values, onto a code value in dependence on a context state. The arithmetic encoder is configured to determine the current context state in dependence on a plurality of previously-encoded (advantageously, but not necessarily adjacent) spectral values. For this purpose, the arithmetic encoder is configured to modify a number representation of a numeric previous context value, describing a context state associated with one or more previously-encoded spectral values (for example, to select a corresponding mapping rule), in dependence on a context sub-region value, to obtain a number representation of a numeric current context value describing a context state associated with one or more spectral values to be encoded (for example, to select a corresponding mapping rule).
As can be seen, the mapping of a spectral value, or of a plurality of spectral values, or of a most-significant bit-plane of a spectral value or of a plurality of spectral values, onto a code value may be performed by a spectral value encoding 740 using a mapping rule described by a mapping rule information 742. A state tracker 750 may be configured to track the context state. The state tracker 750 may be configured to modify a number representation of a numeric previous context value, describing a context state associated with an encoding of one or more previously-encoded spectral values, in dependence on a context sub-region value, to obtain a number representation of a numeric current context value describing a context state associated with an encoding of one or more spectral values to be encoded. The modification of the number representation of the numeric previous context value may, for example, be performed by a number representation modifier 1052, which receives the numeric previous context value and one or more context sub-region values and provides the numeric current context value. Accordingly, the state tracker 1050 provides an information 754 describing the current context state, for example, in the form of a numeric current context value. A mapping rule selector 1060 may select a mapping rule, for example, a cumulative-frequencies-table, describing a mapping of a spectral value, or of a plurality of spectral values, or of a most-significant bit-plane of a spectral value or of a plurality of spectral values, onto a code value. Accordingly, the mapping rule selector 1060 provides the mapping rule information 742 to the spectral encoding 740.
It should be noted that, in some embodiments, the state tracker 1050 may be identical to the state tracker 750 or the state tracker 826. It should also be noted that the mapping rule selector 1060 may, in some embodiments, be identical to the mapping rule selector 760, or the mapping rule selector 828. Advantageously, the mapping rule selector 828 may be configured to use a hash table “ari_hash_m[742]”, as defined in the table representation of FIGS. 22(1) to 22(4), for the selection of the mapping rule. For example, the mapping rule selector may perform the functionality as described above with reference to
To summarize the above, the audio encoder 1000 performs an arithmetic encoding of a frequency-domain audio representation provided by the time-domain-to-frequency-domain converter. The arithmetic encoding is context dependent, such that a mapping rule (e.g. a cumulative-frequencies-table) is selected in dependence on previously-encoded spectral values. Accordingly, spectral values adjacent in time and/or frequency (or at least within a predetermined environment) to each other and/or to the currently-encoded spectral value (i.e. spectral values within a predetermined environment of the currently-encoded spectral value) are considered in the arithmetic encoding to adjust the probability distribution evaluated by the arithmetic encoding.
When determining the numeric current context value, a number representation of a numeric previous context value, describing a context state associated with one or more previously-encoded spectral values, is modified in dependence on a context sub-region value, to obtain a number representation of a numeric current context value describing a context state associated with one or more spectral values to be encoded. This approach allows avoiding a complete re-computation of the numeric current context value, which complete re-computation consumes a significant amount of resources in conventional approaches. A large variety of possibilities exist for the modification of the number representation of the numeric previous context value, including a combination of a re-scaling of a number representation of the numeric previous context value, an addition of a context sub-region value or a value derived therefrom to the number representation of the numeric previous context value or to a processed number representation of the numeric previous context value, a replacement of a portion of the number representation (rather than the entire number representation) of the numeric previous context value in dependence on the context sub-region value, and so on. Thus, typically the numeric representation of the numeric current context value is obtained on the basis of the number representation of the numeric previous context value and also on the basis of at least one context sub-region value, wherein typically a combination of operations are performed to combine the numeric previous context value with a context sub-region value, such as for example, two or more operations out of an addition operation, a subtraction operation, a multiplication operation, a division operation, a Boolean-AND operation, a Boolean-OR operation, a Boolean-NAND operation, a Boolean NOR operation, a Boolean-negation operation, a complement operation or a shift operation. Accordingly, at least a portion of the number representation of the numeric previous context value is typically maintained unchanged (except for an optional shift to a different position) when deriving the numeric current context value from the numeric previous context value. In contrast, other portions of the number representation of the numeric previous context value are changed in dependence on one or more context sub-region values. Thus, the numeric current context value can be obtained with a comparatively small computational effort, while avoiding a complete re-computation of the numeric current context value.
Thus, a meaningful numeric current context value can be obtained, which is well-suited for the use by the mapping rule selector 1060, and which is particularly well suited for use in combination with the hash table ari_hash_m as defined in the table representation of FIGS. 22(1),22(2),22(3),22(4).
Consequently, an efficient encoding can be achieved by keeping the context calculation sufficiently simple.
5. Audio Decoder According to
The audio decoder 1100 is configured to receive an encoded audio information 810 and to provide, on the basis thereof, a decoded audio information 812. The audio decoder 1100 comprises an arithmetic decoder 1120 that is configured to provide a plurality of decoded spectral values 822 on the basis of an arithmetically-encoded representation 821 of the spectral values. The audio decoder 1100 also comprises a frequency-domain-to-time-domain converter 830 which is configured to receive the decoded spectral values 822 and to provide the time-domain audio representation 812, which may constitute the decoded audio information, using the decoded spectral values 822, in order to obtain a decoded audio information 812.
The arithmetic decoder 1120 comprises a spectral value determinator 824, which is configured to map a code value of the arithmetically-encoded representation 821 of spectral values onto a symbol code representing one or more of the decoded spectral values, or at least a portion (for example, a most-significant bit-plane) of one or more of the decoded spectral values. The spectral value determinator 824 may be configured to perform the mapping in dependence on a mapping rule, which may be described by a mapping rule information 828a. The mapping rule information 828a may, for example, comprise a mapping rule index value, or may comprise a selected set of entries of a cumulative-frequencies-table.
The arithmetic decoder 1120 is configured to select a mapping rule (e.g., a cumulative-frequencies-table) describing a mapping of a code value (described by the arithmetically-encoded representation 821 of spectral values) onto a symbol code (describing one or more spectral values) in dependence on a context state, which context state may be described by the context state information 1126a. The context state information 1126a may take the form of a numeric current context value. The arithmetic decoder 1120 is configured to determine the current context state in dependence on a plurality of previously-decoded spectral values 822. For this purpose, a state tracker 1126 may be used, which receives an information describing the previously-decoded spectral values. The arithmetic decoder is configured to modify a number representation of numeric previous context value, describing a context state associated with one or more previously decoded spectral values, in dependence on a context sub-region value, to obtain a number representation of a numeric current context value describing a context state associated with one or more spectral values to be decoded. A modification of the number representation of the numeric previous context value may, for example, be performed by a number representation modifier 1127, which is part of the state tracker 1126. Accordingly, the current context state information 1126a is obtained, for example, in the form of a numeric current context value. The selection of the mapping rule may be performed by a mapping rule selector 1128, which derives a mapping rule information 828a from the current context state information 1126a, and which provides the mapping rule information 828a to the spectral value determinator 824. Advantageously, the mapping rule selector 1128 may be configured to use a hash table “ari_hash_m[742]”, as defined in the table representation of FIGS. 22(1) to 22(4), for the selection of the mapping rule. For example, the mapping rule selector may perform the functionality as described above with reference to
Regarding the functionality of the audio signal decoder 1100, it should be noted that the arithmetic decoder 1120 is configured to select a mapping rule (e.g., a cumulative-frequencies-table) which is, on average, well-adapted to the spectral value to be decoded, as the mapping rule is selected in dependence on the current context state, which, in turn, is determined in dependence on a plurality of previously-decoded spectral values. Accordingly, statistical dependencies between adjacent spectral values to be decoded can be exploited.
Moreover, by modifying a number representation of a numeric previous context value describing a context state associated with a decoding of one or more previously decoded spectral values, in dependence on a context sub-region value, to obtain a number representation of a numeric current context value describing a context state associated with a decoding of one or more spectral values to be decoded, it is possible to obtain a meaningful information about the current context state, which is well-suited for a mapping to a mapping rule index value, and which is particularly well suited for use in combination with the hash table ari_hash_m as defined in the table representation of FIGS. 22(1),22(2),22(3),22(4), with comparatively small computational effort. By maintaining at least a portion of a number representation of the numeric previous context value (possibly in a bit-shifted or a scaled version) while updating another portion of the number representation of the numeric previous context value in dependence on the context sub-region values which have not been considered in the numeric previous context value but which should be considered in the numeric current context value, a number of operations to derive the numeric current context value can be kept reasonably small. Also, it is possible to exploit the fact that contexts used for decoding adjacent spectral values are typically similar or correlated. For example, a context for a decoding of a first spectral value (or of a first plurality of spectral values) is dependent on a first set of previously-decoded spectral values. A context for decoding of a second spectral value (or a second set of spectral values), which is adjacent to the first spectral value (or the first set of spectral values) may comprise a second set of previously-decoded spectral values. As the first spectral value and the second spectral value are assumed to be adjacent (e.g., with respect to the associated frequencies), the first set of spectral values, which determine the context for the coding of the first spectral value, may comprise some overlap with the second set of spectral values, which determine the context for the decoding of the second spectral value. Accordingly, it can easily be understood that the context state for the decoding of the second spectral value comprises some correlation with the context state for the decoding of the first spectral value. A computational efficiency of the context derivation, i.e. of the derivation of the numeric current context value, can be achieved by exploiting such correlations. It has been found that the correlation between context states for a decoding of adjacent spectral values (e.g., between the context state described by the numeric previous context value and the context state described by the numeric current context value) can be exploited efficiently by modifying only those parts of the numeric previous context value which are dependent on context sub-region values not considered for the derivation of the numeric previous context state, and by deriving the numeric current context value from the numeric previous context value.
To conclude, the concepts described herein allow for a particularly good computational efficiency when deriving the numeric current context value.
Further details will be described below.
6. Audio Encoder According to
The audio encoder 1200 is configured to receive an input audio information 710 and to provide, on the basis thereof, an encoded audio information 712. The audio encoder 1200 comprises an energy-compacting time-domain-to-frequency-domain converter 720 which is configured to provide a frequency-domain audio representation 722 on the basis of a time-domain audio representation of the input audio information 710, such that the frequency-domain audio representation 722 comprises a set of spectral values. The audio encoder 1200 also comprises an arithmetic encoder 1230 configured to encode a spectral value (out of the set of spectral values forming the frequency-domain audio representation 722), or a plurality of spectral values, or a pre-processed version thereof, using a variable-length codeword to obtain the encoded audio information 712 (which may comprise, for example, a plurality of variable-length codewords.
The arithmetic encoder 1230 is configured to map a spectral value, or a plurality of spectral values, or a value of a most-significant bit-plane of a spectral value or of a plurality of spectral values, onto a code value (i.e. onto a variable-length codeword), in dependence on a context state. The arithmetic encoder 1230 is configured to select a mapping rule describing a mapping of a spectral value, or of a plurality of spectral values, or of a most-significant bit-plane of a spectral value or of a plurality of spectral values, onto a code value, in dependence on the context state. The arithmetic encoder is configured to determine the current context state in dependence on a plurality of previously-encoded (advantageously, but not necessarily, adjacent) spectral values. For this purpose, the arithmetic encoder is configured to obtain a plurality of context sub-region values on the basis of previously-encoded spectral values, to store said context sub-region values, and to derive a numeric current context value associated with one or more spectral values to be encoded in dependence on the stored context sub-region vales. Moreover, the arithmetic encoder is configured to compute the norm of a vector formed by a plurality of previously encoded spectral values, in order to obtain a common context sub-region value associated with the plurality of previously-encoded spectral values.
As can be seen, the mapping of a spectral value, or of a plurality of spectral values, or of a most-significant bit-plane of a spectral value or of a plurality of spectral values, onto a code value may be performed by a spectral value encoding 740 using a mapping rule described by a mapping rule information 742. A state tracker 1250 may be configured to track the context state and may comprise a context sub-region value computer 1252, to compute the norm of a vector formed by a plurality of previously encoded spectral values, in order to obtain a common context sub-region values associated with the plurality of previously-encoded spectral values. The state tracker 1250 is also advantageously configured to determine the current context state in dependence on a result of said computation of a context sub-region value performed by the context sub-region value computer 1252. Accordingly, the state tracker 1250 provides an information 1254, describing the current context state. A mapping rule selector 1260 may select a mapping rule, for example, a cumulative-frequencies-table, describing a mapping of a spectral value, or of a most-significant bit-plane of a spectral value, onto a code value. Accordingly, the mapping rule selector 1260 provides the mapping rule information 742 to the spectral encoding 740. Advantageously, the mapping rule selector 1260 may be configured to use a hash table “ari_hash_m[742]”, as defined in the table representation of FIGS. 22(1) to 22(4), for the selection of the mapping rule. For example, the mapping rule selector may perform the functionality as described above with reference to
To summarize the above, the audio encoder 1200 performs an arithmetic encoding of a frequency-domain audio representation provided by the time-domain-to-frequency-domain converter 720. The arithmetic encoding is context-dependent, such that a mapping rule (e.g., a cumulative-frequencies-table) is selected in dependence on previously-encoded spectral values. Accordingly, spectral values adjacent in time and/or frequency (or, at least, within a predetermined environment) to each other and/or to the currently-encoded spectral value (i.e. spectral values within a predetermined environment of the currently encoded spectral value) are considered in the arithmetic encoding to adjust the probability distribution evaluated by the arithmetic encoding.
In order to provide a numeric current context value, a context sub-region value associated with a plurality of previously-encoded spectral values is obtained on the basis of a computation of a norm of a vector formed by a plurality of previously-encoded spectral values. The result of the determination of the numeric current context value is applied in the selection of the current context state, i.e. in the selection of a mapping rule.
By computing the norm of a vector formed by a plurality of previously-encoded spectral values, a meaningful information describing a portion of the context of the one or more spectral values to be encoded can be obtained, wherein the norm of a vector of previously encoded spectral values can typically be represented with a comparatively small number of bits. Thus, the amount of context information, which needs to be stored for later use in the derivation of a numeric current context value, can be kept sufficiently small by applying the above discussed approach for the computation of the context sub-region values. It has been found that the norm of a vector of previously encoded spectral values typically comprises the most significant information regarding the state of the context. In contrast, it has been found that the sign of said previously encoded spectral values typically comprises a subordinate impact on the state of the context, such that it makes sense to neglect the sign of the previously decoded spectral values in order to reduce the quantity of information to be stored for later use. Also, it has been found that the computation of a norm of a vector of previously-encoded spectral values is a reasonable approach for the derivation of a context sub-region value, as the averaging effect, which is typically obtained by the computation of the norm, leaves the most important information about the context state substantially unaffected. To summarize, the context sub-region value computation performed by the context sub-region value computer 1252 allows for providing a compact context sub-region information for storage and later re-use, wherein the most relevant information about the context state is preserved in spite of the reduction of the quantity of information.
Moreover, it has been found that a numeric current context value obtained as discussed above is very well suited for a selection of a mapping rule using the hash table “ari_hash_m[742]”, as defined in the table representation of FIGS. 22(1) to 22(4). For example, the mapping rule selector may perform the functionality as described above with reference to
Accordingly, an efficient encoding of the input audio information 710 can be achieved, while keeping the computational effort and the amount of data to be stored by the arithmetic encoder 1230 sufficiently small.
7. Audio Decoder According to
The audio decoder 1300 is configured to receive an encoded audio information 810 and to provide, on the basis thereof, a decoded audio information 812. The audio decoder 1300 comprises an arithmetic decoder 1320 that is configured to provide a plurality of decoded spectral values 822 on the basis of an arithmetically-encoded representation 821 of the spectral values. The audio decoder 1300 also comprises a frequency-domain-to-time-domain converter 830 which is configured to receive the decoded spectral values 822 and to provide the time-domain audio representation 812, which may constitute the decoded audio information, using the decoded spectral values 822, in order to obtain a decoded audio information 812.
The arithmetic decoder 1320 comprises a spectral value determinator 824 which is configured to map a code value of the arithmetically-encoded representation 821 of spectral values onto a symbol code representing one or more of the decoded spectral values, or at least a portion (e.g. a most-significant bit-plane) of one or more of the decoded spectral values. The spectral value determinator 824 may be configured to perform a mapping in dependence on a mapping rule, which is described by a mapping rule information 828a. The mapping rule information 828a may, for example, comprise a mapping rule index value, or a selected set of entries of a cumulative-frequencies-table.
The arithmetic decoder 1320 is configured to select a mapping rule (e.g., a cumulative-frequencies-table) describing a mapping of a code value (described by the arithmetically-encoded representation 821 of spectral values) onto a symbol code (describing one or more spectral values) in dependence on a context state (which may be described by the context state information 1326a). Advantageously, the arithmetic decoder 1320 may be configured to use a hash table “ari_hash_m[742]”, as defined in the table representation of FIGS. 22(1) to 22(4), for the selection of the mapping rule. For example, the arithmetic decoder 1320 may perform the functionality as described above with reference to
The computation of the norm of a vector formed by a plurality of previously-encoded spectral values, in order to obtain a common context sub-region value associated with the plurality of previously decoded spectral values, may, for example, be performed by the context sub-region value computer 1327, which is part of the state tracker 1326. Accordingly, a current context state information 1326a is obtained on the basis of the context sub-region values, wherein the state tracker 1326 advantageously provides a numeric current context value associated with one or more spectral values to be decoded in dependence on the stored context sub-region values. The selection of the mapping rules may be performed by a mapping rule selector 1328, which derives a mapping rule information 828a from the current context state information 1326a, and which provides the mapping rule information 828a to the spectral value determinator 824.
Regarding the functionality of the audio signal decoder 1300, it should be noted that the arithmetic decoder 1320 is configured to select a mapping rule (e.g., a cumulative-frequencies-table) which is, on average, well-adapted to the spectral value to be decoded, as the mapping rule is selected in dependence on the current context state, which, in turn, is determined in dependence on a plurality of previously-decoded spectral values. Accordingly, statistical dependencies between adjacent spectral values to be decoded can be exploited.
However, it has been found that it is efficient, in terms of memory usage, to store context sub-region values, which are based on the computation of a norm of a vector formed on a plurality of previously decoded spectral values, for later use in the determination of the numeric context value. It has also been found that such context sub-region values still comprise the most relevant context information. Accordingly, the concept used by the state tracker 1326 constitutes a good compromise between coding efficiency, computational efficiency and storage efficiency.
Further details will be described below.
8. Audio Encoder According to
In the following, an audio encoder according to an embodiment of the present invention will be described.
The audio encoder 100 is configured to receive an input audio information 110 and to provide, on the basis thereof, a bitstream 112, which constitutes an encoded audio information. The audio encoder 100 optionally comprises a preprocessor 120, which is configured to receive the input audio information 110 and to provide, on the basis thereof, a pre-processed input audio information 110a. The audio encoder 100 also comprises an energy-compacting time-domain to frequency-domain signal transformer 130, which is also designated as signal converter. The signal converter 130 is configured to receive the input audio information 110, 110a and to provide, on the basis thereof, a frequency-domain audio information 132, which advantageously takes the form of a set of spectral values. For example, the signal transformer 130 may be configured to receive a frame of the input audio information 110, 110a (e.g. a block of time-domain samples) and to provide a set of spectral values representing the audio content of the respective audio frame. In addition, the signal transformer 130 may be configured to receive a plurality of subsequent, overlapping or non-overlapping, audio frames of the input audio information 110, 110a and to provide, on the basis thereof, a time-frequency-domain audio representation, which comprises a sequence of subsequent sets of spectral values, one set of spectral values associated with each frame.
The energy-compacting time-domain to frequency-domain signal transformer 130 may comprise an energy-compacting filterbank, which provides spectral values associated with different, overlapping or non-overlapping, frequency ranges. For example, the signal transformer 130 may comprise a windowing MDCT transformer 130a, which is configured to window the input audio information 110, 110a (or a frame thereof) using a transform window and to perform a modified-discrete-cosine-transform of the windowed input audio information 110, 110a (or of the windowed frame thereof). Accordingly, the frequency-domain audio representation 132 may comprise a set of, for example, 1024 spectral values in the form of MDCT coefficients associated with a frame of the input audio information.
The audio encoder 100 may further, optionally, comprise a spectral post-processor 140, which is configured to receive the frequency-domain audio representation 132 and to provide, on the basis thereof, a post-processed frequency-domain audio representation 142. The spectral post-processor 140 may, for example, be configured to perform a temporal noise shaping and/or a long term prediction and/or any other spectral post-processing known in the art. The audio encoder further comprises, optionally, a scaler/quantizer 150, which is configured to receive the frequency-domain audio representation 132 or the post-processed version 142 thereof and to provide a scaled and quantized frequency-domain audio representation 152.
The audio encoder 100 further comprises, optionally, a psycho-acoustic model processor 160, which is configured to receive the input audio information 110 (or the post-processed version 110a thereof) and to provide, on the basis thereof, an optional control information, which may be used for the control of the energy-compacting time-domain to frequency-domain signal transformer 130, for the control of the optional spectral post-processor 140 and/or for the control of the optional scaler/quantizer 150. For example, the psycho-acoustic model processor 160 may be configured to analyze the input audio information, to determine which components of the input audio information 110, 110a are particularly important for the human perception of the audio content and which components of the input audio information 110, 110a are less important for the perception of the audio content. Accordingly, the psycho-acoustic model processor 160 may provide control information, which is used by the audio encoder 100 in order to adjust the scaling of the frequency-domain audio representation 132, 142 by the scaler/quantizer 150 and/or the quantization resolution applied by the scaler/quantizer 150. Consequently, perceptually important scale factor bands (i.e. groups of adjacent spectral values which are particularly important for the human perception of the audio content) are scaled with a large scaling factor and quantized with comparatively high resolution, while perceptually less-important scale factor bands (i.e. groups of adjacent spectral values) are scaled with a comparatively smaller scaling factor and quantized with a comparatively lower quantization resolution. Accordingly, scaled spectral values of perceptually more important frequencies are typically significantly larger than spectral values of perceptually less important frequencies.
The audio encoder also comprises an arithmetic encoder 170, which is configured to receive the scaled and quantized version 152 of the frequency-domain audio representation 132 (or, alternatively, the post-processed version 142 of the frequency-domain audio representation 132, or even the frequency-domain audio representation 132 itself) and to provide arithmetic codeword information 172a on the basis thereof, such that the arithmetic codeword information represents the frequency-domain audio representation 152.
The audio encoder 100 also comprises a bitstream payload formatter 190, which is configured to receive the arithmetic codeword information 172a. The bitstream payload formatter 190 is also typically configured to receive additional information, like, for example, scale factor information describing which scale factors have been applied by the scaler/quantizer 150. In addition, the bitstream payload formatter 190 may be configured to receive other control information. The bitstream payload formatter 190 is configured to provide the bitstream 112 on the basis of the received information by assembling the bitstream in accordance with a desired bitstream syntax, which will be discussed below.
In the following, details regarding the arithmetic encoder 170 will be described. The arithmetic encoder 170 is configured to receive a plurality of post-processed and scaled and quantized spectral values of the frequency-domain audio representation 132. The arithmetic encoder comprises a most-significant-bit-plane-extractor 174, or even from two spectral values, which is configured to extract a most-significant bit-plane m from a spectral value. It should be noted here that the most-significant bit-plane may comprise one or even more bits (e.g. two or three bits), which are the most-significant bits of the spectral value. Thus, the most-significant bit-plane extractor 174 provides a most-significant bit-plane value 176 of a spectral value.
Alternatively, however, the most significant bit-plane extractor 174 may provide a combined most-significant bit-plane value m combining the most-significant bit-planes of a plurality of spectral values (e.g., of spectral values a and b). The most-significant bit-plane of the spectral value a is designated with m. Alternatively, the combined most-significant bit-plane value of a plurality of spectral values a,b is designated with m.
The arithmetic encoder 170 also comprises a first codeword determinator 180, which is configured to determine an arithmetic codeword acod_m [pki][m] representing the most-significant bit-plane value m. Optionally, the codeword determinator 180 may also provide one or more escape codewords (also designated herein with “ARITH_ESCAPE”) indicating, for example, how many less-significant bit-planes are available (and, consequently, indicating the numeric weight of the most-significant bit-plane). The first codeword determinator 180 may be configured to provide the codeword associated with a most-significant bit-plane value m using a selected cumulative-frequencies-table having (or being referenced by) a cumulative-frequencies-table index pki.
In order to determine as to which cumulative-frequencies-table should be selected, the arithmetic encoder advantageously comprises a state tracker 182, which is configured to track the state of the arithmetic encoder, for example, by observing which spectral values have been encoded previously. The state tracker 182 consequently provides a state information 184, for example, a state value designated with “s” or “t” or “c”. The arithmetic encoder 170 also comprises a cumulative-frequencies-table selector 186, which is configured to receive the state information 184 and to provide an information 188 describing the selected cumulative-frequencies-table to the codeword determinator 180. For example, the cumulative-frequencies-table selector 186 may provide a cumulative-frequencies-table index “pki” describing which cumulative-frequencies-table, out of a set of 64 cumulative-frequencies-tables, is selected for usage by the codeword determinator. Alternatively, the cumulative-frequencies-table selector 186 may provide the entire selected cumulative-frequencies-table or a sub-table to the codeword determinator. Thus, the codeword determinator 180 may use the selected cumulative-frequencies-table or sub-table for the provision of the codeword acod_m[pki][m] of the most-significant bit-plane value m, such that the actual codeword acod_m[pki][m] encoding the most-significant bit-plane value m is dependent on the value of m and the cumulative-frequencies-table index pki, and consequently on the current state information 184. Further details regarding the coding process and the obtained codeword format will be described below.
It should be noted, however, that in some embodiments, the state tracker 182 may be identical to, or take the functionality of, the state tracker 750, the state tracker 1050 or the state tracker 1250. It should also be noted that the cumulative-frequencies-table selector 186 may, in some embodiments, be identical to, or take the functionality of, the mapping rule selector 760, the mapping rule selector 1060, or the mapping rule selector 1260. Moreover, the first codeword determinator 180 may, in some embodiments, be identical to, or take the functionality of, the spectral value encoding 740.
The arithmetic encoder 170 further comprises a less-significant bit-plane extractor 189a, which is configured to extract one or more less-significant bit-planes from the scaled and quantized frequency-domain audio representation 152, if one or more of the spectral values to be encoded exceed the range of values encodeable using the most-significant bit-plane only. The less-significant bit-planes may comprise one or more bits, as desired. Accordingly, the less-significant bit-plane extractor 189a provides a less-significant bit-plane information 189b. The arithmetic encoder 170 also comprises a second codeword determinator 189c, which is configured to receive the less-significant bit-plane information 189d and to provide, on the basis thereof, 0, 1 or more codewords “acod_r” representing the content of 0, 1 or more less-significant bit-planes. The second codeword determinator 189c may be configured to apply an arithmetic encoding algorithm or any other encoding algorithm in order to derive the less-significant bit-plane codewords “acod_r” from the less-significant bit-plane information 189b.
It should be noted here that the number of less-significant bit-planes may vary in dependence on the value of the scaled and quantized spectral values 152, such that there may be no less-significant bit-plane at all, if the scaled and quantized spectral value to be encoded is comparatively small, such that there may be one less-significant bit-plane if the current scaled and quantized spectral value to be encoded is of a medium range and such that there may be more than one less-significant bit-plane if the scaled and quantized spectral value to be encoded takes a comparatively large value.
To summarize the above, the arithmetic encoder 170 is configured to encode scaled and quantized spectral values, which are described by the information 152, using a hierarchical encoding process. The most-significant bit-plane (comprising, for example, one, two or three bits per spectral value) of one or more spectral values, is encoded to obtain an arithmetic codeword “acod_m[pki][m]” of a most-significant bit-plane value m. One or more less-significant bit-planes (each of the less-significant bit-planes comprising, for example, one, two or three bits) of the one or more spectral values are encoded to obtain one or more codewords “acod_r”. When encoding the most-significant bit-plane, the value m of the most-significant bit-plane is mapped to a codeword acod_m[pki][m]. For this purpose, 64 different cumulative-frequencies-tables are available for the encoding of the value m in dependence on a state of the arithmetic encoder 170, i.e. in dependence on previously-encoded spectral values. Accordingly, the codeword “acod_m[pki][m]” is obtained. In addition, one or more codewords “acod_r” are provided and included into the bitstream if one or more less-significant bit-planes are present.
Reset Description
The audio encoder 100 may optionally be configured to decide whether an improvement in bitrate can be obtained by resetting the context, for example by setting the state index to a default value. Accordingly, the audio encoder 100 may be configured to provide a reset information (e.g. named “arith_reset_flag”) indicating whether the context for the arithmetic encoding is reset, and also indicating whether the context for the arithmetic decoding in a corresponding decoder should be reset.
Details regarding the bitstream format and the applied cumulative-frequency tables will be discussed below.
9. Audio Decoder According to
In the following, an audio decoder according to an embodiment of the invention will be described.
The audio decoder 200 is configured to receive a bitstream 210, which represents an encoded audio information and which may be identical to the bitstream 112 provided by the audio encoder 100. The audio decoder 200 provides a decoded audio information 212 on the basis of the bitstream 210.
The audio decoder 200 comprises an optional bitstream payload de-formatter 220, which is configured to receive the bitstream 210 and to extract from the bitstream 210 an encoded frequency-domain audio representation 222. For example, the bitstream payload de-formatter 220 may be configured to extract from the bitstream 210 arithmetically-coded spectral data like, for example, an arithmetic codeword “acod_m[pki][m]” representing the most-significant bit-plane value m of a spectral value a, or of a plurality of spectral values a, b, and a codeword “acod_r” representing a content of a less-significant bit-plane of the spectral value a, or of a plurality of spectral values a, b, of the frequency-domain audio representation. Thus, the encoded frequency-domain audio representation 222 constitutes (or comprises) an arithmetically-encoded representation of spectral values. The bitstream payload deformatter 220 is further configured to extract from the bitstream additional control information, which is not shown in
The audio decoder 200 comprises an arithmetic decoder 230, which is also designated as “spectral noiseless decoder”. The arithmetic decoder 230 is configured to receive the encoded frequency-domain audio representation 220 and, optionally, the state reset information 224. The arithmetic decoder 230 is also configured to provide a decoded frequency-domain audio representation 232, which may comprise a decoded representation of spectral values. For example, the decoded frequency-domain audio representation 232 may comprise a decoded representation of spectral values, which are described by the encoded frequency-domain audio representation 220.
The audio decoder 200 also comprises an optional inverse quantizer/rescaler 240, which is configured to receive the decoded frequency-domain audio representation 232 and to provide, on the basis thereof, an inversely-quantized and resealed frequency-domain audio representation 242.
The audio decoder 200 further comprises an optional spectral pre-processor 250, which is configured to receive the inversely-quantized and resealed frequency-domain audio representation 242 and to provide, on the basis thereof, a pre-processed version 252 of the inversely-quantized and resealed frequency-domain audio representation 242. The audio decoder 200 also comprises a frequency-domain to time-domain signal transformer 260, which is also designated as a “signal converter”. The signal transformer 260 is configured to receive the pre-processed version 252 of the inversely-quantized and resealed frequency-domain audio representation 242 (or, alternatively, the inversely-quantized and resealed frequency-domain audio representation 242 or the decoded frequency-domain audio representation 232) and to provide, on the basis thereof, a time-domain representation 262 of the audio information. The frequency-domain to time-domain signal transformer 260 may, for example, comprise a transformer for performing an inverse-modified-discrete-cosine transform (IMDCT) and an appropriate windowing (as well as other auxiliary functionalities, like, for example, an overlap-and-add).
The audio decoder 200 may further comprise an optional time-domain post-processor 270, which is configured to receive the time-domain representation 262 of the audio information and to obtain the decoded audio information 212 using a time-domain post-processing. However, if the post-processing is omitted, the time-domain representation 262 may be identical to the decoded audio information 212.
It should be noted here that the inverse quantizer/rescaler 240, the spectral pre-processor 250, the frequency-domain to time-domain signal transformer 260 and the time-domain post-processor 270 may be controlled in dependence on control information, which is extracted from the bitstream 210 by the bitstream payload deformatter 220.
To summarize the overall functionality of the audio decoder 200, a decoded frequency-domain audio representation 232, for example, a set of spectral values associated with an audio frame of the encoded audio information, may be obtained on the basis of the encoded frequency-domain representation 222 using the arithmetic decoder 230. Subsequently, the set of, for example, 1024 spectral values, which may be MDCT coefficients, are inversely quantized, resealed and pre-processed. Accordingly, an inversely-quantized, resealed and spectrally pre-processed set of spectral values (e.g., 1024 MDCT coefficients) is obtained. Afterwards, a time-domain representation of an audio frame is derived from the inversely-quantized, resealed and spectrally pre-processed set of frequency-domain values (e.g. MDCT coefficients). Accordingly, a time-domain representation of an audio frame is obtained. The time-domain representation of a given audio frame may be combined with time-domain representations of previous and/or subsequent audio frames. For example, an overlap-and-add between time-domain representations of subsequent audio frames may be performed in order to smoothen the transitions between the time-domain representations of the adjacent audio frames and in order to obtain an aliasing cancellation. For details regarding the reconstruction of the decoded audio information 212 on the basis of the decoded time-frequency domain audio representation 232, reference is made, for example, to the International Standard ISO/IEC 14496-3, part 3, sub-part 4 where a detailed discussion is given. However, other more elaborate overlapping and aliasing-cancellation schemes may be used.
In the following, some details regarding the arithmetic decoder 230 will be described. The arithmetic decoder 230 comprises a most-significant bit-plane determinator 284, which is configured to receive the arithmetic codeword acod_m[pki][m] describing the most-significant bit-plane value m. The most-significant bit-plane determinator 284 may be configured to use a cumulative-frequencies table out of a set comprising a plurality of 64 cumulative-frequencies-tables for deriving the most-significant bit-plane value m from the arithmetic codeword “acod_m[pki][m]”.
The most-significant bit-plane determinator 284 is configured to derive values 286 of a most-significant bit-plane of one of more spectral values on the basis of the codeword acod_m. The arithmetic decoder 230 further comprises a less-significant bit-plane determinator 288, which is configured to receive one or more codewords “acod_r” representing one or more less-significant bit-planes of a spectral value. Accordingly, the less-significant bit-plane determinator 288 is configured to provide decoded values 290 of one or more less-significant bit-planes. The audio decoder 200 also comprises a bit-plane combiner 292, which is configured to receive the decoded values 286 of the most-significant bit-plane of one or more spectral values and the decoded values 290 of one or more less-significant bit-planes of the spectral values if such less-significant bit-planes are available for the current spectral values. Accordingly, the bit-plane combiner 292 provides decoded spectral values, which are part of the decoded frequency-domain audio representation 232. Naturally, the arithmetic decoder 230 is typically configured to provide a plurality of spectral values in order to obtain a full set of decoded spectral values associated with a current frame of the audio content.
The arithmetic decoder 230 further comprises a cumulative-frequencies-table selector 296, which is configured to select one of the 64 cumulative-frequencies tables ari_cf_m[64][17] (each table ari_cf_m[pki][17], with 0≦pki≦63, having 17 entries) in dependence on a state index 298 describing a state of the arithmetic decoder. For selecting one of the cumulative-frequencies-tables, the cumulative-frequencies-table selector advantageously evaluates the hash table ari_hash_m[742] as defined by the table representation of FIGS. 22(1), 22(2), 22(3), 22(4). Details regarding this evaluation of the hash table ari_hash_m[742] will be described below. The arithmetic decoder 230 further comprises a state tracker 299, which is configured to track a state of the arithmetic decoder in dependence on the previously-decoded spectral values. The state information may optionally be reset to a default state information in response to the state reset information 224. Accordingly, the cumulative-frequencies-table selector 296 is configured to provide an index (e.g. pki) of a selected cumulative-frequencies-table, or a selected cumulative-frequencies-table or sub-table itself, for application in the decoding of the most-significant bit-plane value m in dependence on the codeword “acod_m”.
To summarize the functionality of the audio decoder 200, the audio decoder 200 is configured to receive a bitrate-efficiently-encoded frequency-domain audio representation 222 and to obtain a decoded frequency-domain audio representation on the basis thereof. In the arithmetic decoder 230, which is used for obtaining the decoded frequency-domain audio representation 232 on the basis of the encoded frequency-domain audio representation 222, a probability of different combinations of values of the most-significant bit-plane of adjacent spectral values is exploited by using an arithmetic decoder 280, which is configured to apply a cumulative-frequencies-table. In other words, statistic dependencies between spectral values are exploited by selecting different cumulative-frequencies-tables out of a set comprising 64 different cumulative-frequencies-tables in dependence on a state index 298, which is obtained by observing the previously-computed decoded spectral values.
It should be noted that the state tracker 299 may be identical to, or may take the functionality of, the state tracker 826, the state tracker 1126, or the state tracker 1326. The cumulative-frequencies-table selector 296 may be identical to, or may take the functionality of, the mapping rule selector 828, the mapping rule selector 1128, or the mapping rule selector 1328. The most significant bit-plane determinator 284 may be identical to, or may take the functionality of, the spectral value determinator 824.
10. Overview of the Tool of Spectral Noiseless Coding
In the following, details regarding the encoding and decoding algorithm, which is performed, for example, by the arithmetic encoder 170 and the arithmetic decoder 230, will be explained.
Focus is placed on the description of the decoding algorithm. It should be noted, however, that a corresponding encoding algorithm can be performed in accordance with the teachings of the decoding algorithm, wherein mappings between encoded and decoded spectral values are inversed, and wherein the computation of the mapping rule index value is substantially identical. In an encoder, the encoded spectral values take over the place of the decoded spectral values. Also, the spectral values to be encoded take over the place of the spectral values to be decoded.
It should be noted that the decoding, which will be discussed in the following, is used in order to allow for a so-called “spectral noiseless coding” of typically post-processed, scaled and quantized spectral values. The spectral noiseless coding is used in an audio encoding/decoding concept (or in any other encoding/decoding concept) to further reduce the redundancy of the quantized spectrum, which is obtained, for example, by an energy compacting time-domain-to-frequency-domain transformer. The spectral noiseless coding scheme, which is used in embodiments of the invention, is based on an arithmetic coding in conjunction with a dynamically adapted context.
In some embodiments according to the invention, the spectral noiseless coding scheme is based on 2-tuples, that is, two neighbored spectral coefficients are combined. Each 2-tuple is split into the sign, the most-significant 2-bits-wise-plane, and the remaining less-significant bit-planes. The noiseless coding for the most-significant 2-bits-wise-plane m uses context dependent cumulative-frequencies-tables derived from four previously decoded 2-tuples. The noiseless coding is fed, for example, by the quantized spectral values and uses context dependent cumulative-frequencies-tables derived from four previously decoded neighboring 2-tuples. Here, neighborhood in both time and frequency is advantageously taken into account, as illustrated in
For example, the arithmetic coder 170 produces a binary code for a given set of symbols and their respective probabilities (i.e. in dependence on the respective probabilities). The binary code is generated by mapping a probability interval, where the set of symbols lies, to a codeword.
The noiseless coding for the remaining less-significant bit-plane or bit planes r uses, for example, a single cumulative-frequencies-table. The cumulative frequencies correspond, for example, to a uniform distribution of the symbols occurring in the less-significant bit-planes, i.e. it is expected there is the same probability that a 0 or a 1 occurs in the less-significant bit-planes. However, other solutions for the coding of the remaining less-significant bit-plane or bit-planes may be used.
In the following, another short overview of the tool of spectral noiseless coding will be given. Spectral noiseless coding is used to further reduce the redundancy of the quantized spectrum. The spectral noiseless coding scheme is based on an arithmetic coding, in conjunction with a dynamically adapted context. The noiseless coding is fed by the quantized spectral values and uses context dependent cumulative-frequencies-tables derived from, for example, four previously decoded neighboring 2-tuples of spectral values. Here, neighborhood, in both time and frequency, is taken into account as illustrated in
The arithmetic coder produces a binary code for a given set of symbols and their respective probabilities. The binary code is generated by mapping a probability interval, where the set of symbols lies, to a codeword.
11. Decoding Process
11.1 Decoding Process Overview
In the following, an overview of the process of the coding of a spectral value will be given taking reference to
The process of decoding a plurality of spectral values comprises an initialization 310 of a context. Initialization 310 of the context comprises a derivation of the current context from a previous context, using the function “arith_map_context(N, arith_reset_flag)”. The derivation of the current context from a previous context may selectively comprise a reset of the context. Both the reset of the context and the derivation of the current context from a previous context will be discussed below. Advantageously, the function “arith_map_context(N, arith_reset_flag)” according to
The decoding of a plurality of spectral values also comprises an iteration of a spectral value decoding 312 and a context update 313, which context update 313 is performed by a function “arith_update_context(i, a,b)” which is described below. The spectral value decoding 312 and the context update 312 are repeated lg/2 times, wherein lg/2 indicates the number of 2-tuples of spectral values to be decoded (e.g., for an audio frame), unless a so-called “ARITH_STOP” symbol is detected. Moreover, the decoding of a set of lg spectral values also comprises a signs decoding 314 and a finishing step 315.
The decoding 312 of a tuple of spectral values comprises a context-value calculation 312a, a most-significant bit-plane decoding 312b, an arithmetic stop symbol detection 312c, a less-significant bit-plane addition 312d, and an array update 312e.
The state value computation 312a comprises a call of the function “arith_get_context(c,i,N)” as shown, for example, in
The most-significant bit-plane decoding 312b comprises an iterative execution of a decoding algorithm 312ba, and a derivation 312bb of values a,b from the result value m of the algorithm 312ba. In preparation of the algorithm 312ba, the variable lev is initialized to zero. The algorithm 312ba is repeated, until a “break” instruction (or condition) is reached. The algorithm 312ba comprises a computation of a state index “pki” (which also serves as a cumulative-frequencies-table index) in dependence on the numeric current context value c, and also in dependence on the level value “esc_nb” using a function “arith_get_pk( )”, which is discussed below (and embodiments of which are shown, for example, in
Subsequently, a most-significant bit-plane value m may be obtained by executing a function “arith_decode( )”, taking into consideration the selected cumulative-frequencies-table (described by the variable “cum_freq” and the variable “cfl”). When deriving the most-significant bit-plane value m, bits named “acod_m” of the bitstream 210 may be evaluated (see, for example,
The algorithm 312ba also comprises checking whether the most-significant bit-plane value m is equal to an escape symbol “ARITH_ESCAPE”, or not. If the most-significant bit-plane value m is not equal to the arithmetic escape symbol, the algorithm 312ba is aborted (“break” condition) and the remaining instructions of the algorithm 312ba are then skipped. Accordingly, execution of the process is continued with the setting of the value b and of the value a at step 312bb. In contrast, if the decoded most-significant bit-plane value m is identical to the arithmetic escape symbol, or “ARITH_ESCAPE”, the level value “lev” is increased by one. The level value “esc_nb” is set to be equal to the level value “lev”, unless the variable “lev” is larger than seven, in which case, the variable “esc_nb” is set to be equal to seven. As mentioned, the algorithm 312ba is then repeated until the decoded most-significant bit-plane value m is different from the arithmetic escape symbol, wherein a modified context is used (because the input parameter of the function “arith_get_pk( )” is adapted in dependence on the value of the variable “esc_nb”).
As soon as the most-significant bit-plane is decoded using the one time execution or iterative execution of the algorithm 312ba, i.e. a most-significant bit-plane value m different from the arithmetic escape symbol has been decoded, the spectral value variable “b” is set to be equal to a plurality of (e.g. 2) more significant bits of the most-significant bit-plane value m, and the spectral value variable “a” is set to the (e.g. 2) lowermost bits of the most-significant bit-plane value m. Details regarding this functionality can be seen, for example, at reference numeral 312bb.
Subsequently, it is checked in step 312c, whether an arithmetic stop symbol is present. This is the case if the most-significant bit-plane value m is equal to zero and the variable “lev” is larger than zero. Accordingly, an arithmetic stop condition is signaled by an “unusual” condition, in which the most-significant bit-plane value m is equal to zero, while the variable “lev” indicates that an increased numeric weight is associated to the most-significant bit-plane value m. In other words, an arithmetic stop condition is detected if the bitstream indicates that an increased numeric weight, higher than a minimum numeric weight, should be given to a most-significant bit-plane value which is equal to zero, which is a condition that does not occur in a normal encoding situation. In other words, an arithmetic stop condition is signaled if an encoded arithmetic escape symbol is followed by an encoded most significant bit-plane value of 0.
After the evaluation whether there is an arithmetic stop condition, which is performed in the step 212c, the less-significant bit planes are obtained, for example, as shown at reference numeral 212d in
In the decoding of the one or more least-significant bit planes (if any) an algorithm 212da is iteratively performed, wherein a number of executions of the algorithm 212da is determined by the variable “lev”. It should be noted here that the first iteration of the algorithm 212da is performed on the basis of the values of the variables a, b as set in the step 212bb. Further iterations of the algorithm 212da are be performed on the basis of updated variable values of the variable a, b.
At the beginning of an iteration, a cumulative-frequencies table is selected. Subsequently, an arithmetic decoding is performed to obtain a value of a variable r, wherein the value of the variable r describes a plurality of less-significant bits, for example one less-significant bit associated with the variable a and one less-significant bit associated with the variable b. The function “ARITH_DECODE” (for example, as defined in
Subsequently, the values of the variables a and b are updated. For this purpose, the variable a is shifted to the left by one bit, and the least-significant bit of the shifted variable a is set the value defined by the least-significant bit of the value r. The variable b is shifted to the left by one bit, and the least-significant bit of the shifted variable b is set the value defined by bit 1 of the variable r, wherein bit 1 of the variable r has a numeric weight of 2 in the binary representation of the variable r. The algorithm 412ba is then repeated until all least-significant bits are decoded.
After the decoding of the less-significant bit-planes, an array “x_ac_dec” is updated in that the values of the variables a,b are stored in entries of said array having array indices 2*i and 2*i+1.
Subsequently, the context state is updated by calling the function “arith_update_context(i,a,b)”, details of which will be explained below taking reference to
Subsequent to the update of the context state, which is performed in step 313, algorithms 312 and 313 are repeated, until running variable i reaches the value of lg/2 or an arithmetic stop condition is detected.
Subsequently, a finish algorithm “arith_finish( )” is performed, as can be seen at reference number 315. Details of the finishing algorithm “arith_finish( )” will be described below taking reference to
Subsequent to the finish algorithm 315, the signs of the spectral values are decoded using the algorithm 314. As can be seen, the signs of the spectral values which are different from zero are individually coded. In the algorithm 314, signs are read for all of the spectral values having indices i between i=0 and i=lg−1 which are non-zero. For each non-zero spectral value having a spectral value index i between i=0 and i=lg−1, a value (typically a single bit) s is read from the bitstream. If the value of s, which is read from the bit stream is equal to 1, the sign of said spectral value is inverted. For this purpose, access is made to the array “x_ac_dec”, both to determine whether the spectral value having the index i is equal to zero and for updating the sign of the decoded spectral values. However, it should be noted that the signs of the variables a, b are left unchanged in the sign decoding 314.
By performing the finish algorithm 315 before the signs decoding 314, it is possible to reset all useful bins after an ARITH_STOP symbol.
It should be noted here that the concept for obtaining the values of the less-significant bit-planes is not of particular relevance in some embodiments according to the present invention.
In some embodiments, the decoding of any less-significant bit-planes may even be omitted. Alternatively, different decoding algorithms may be used for this purpose.
11.2 Decoding Order According to
In the following, the decoding order of the spectral values will be described.
The quantized spectral coefficients “x_ac_dec[ ]” are noiselessly encoded and transmitted (e.g. in the bitstream) starting from the lowest-frequency coefficient and progressing to the highest-frequency coefficient.
Consequently, the quantized spectral coefficients “x_ac_dec[ ]” are noiselessly decoded starting from the lowest-frequency coefficient and progressing to the highest-frequency coefficient. The quantized spectral coefficients are decoded by groups of two successive (e.g. adjacent in frequency) coefficients a and b gathering in a so-called 2-tuple (a,b) (also designated with {a,b}). It should be noted here that the quantized spectral coefficients are sometimes also designated with “qdec”.
The decoded coefficients “x_ac_dec[ ]” for a frequency-domain mode (e.g., decoded coefficients for an advanced audio coding, for example, obtained using a modified-discrete-cosine transform, as discussed in ISO/IEC 14496, part 3, sub-part 4) are then stored in an array “x_ac_quant[g][win][sfb][bin]”. The order of transmission of the noiseless coding codewords is such that when they are decoded in the order received and stored in the array, “bin” is the most rapidly incrementing index, and “g” is the most slowly incrementing index. Within a codeword, the order of decoding is a,b (i.e., a, and then b).
The decoded coefficients “x_ac_dec[ ]” for the transform coded-excitation (TCX) are stored, for example, directly in an array “x_tcx_invquant[win][bin]”, and the order of the transmission of the noiseless coding codeword is such that when they are decoded in the order received and stored in the array, “bin” is the most rapidly incrementing index, and “win” is the most slowly incrementing index. Within a codeword, the order of the decoding is a, b (i.e., a, and then b). In other words, if the spectral values describe a transform-coded-excitation of the linear-prediction filter of a speech coder, the spectral values a, b are associated to adjacent and increasing frequencies of the transform-coded-excitation. Spectral coefficients associated to a lower frequency are typically encoded and decoded before a spectral coefficient associated with a higher frequency.
Notably, the audio decoder 200 may be configured to apply the decoded frequency-domain representation 232, which is provided by the arithmetic decoder 230, both for a “direct” generation of a time-domain audio signal representation using a frequency-domain-to-time-domain signal transform and for an “indirect” provision of a time-domain audio signal representation using both a frequency-domain-to-time-domain decoder and a linear-prediction-filter excited by the output of the frequency-domain-to-time-domain signal transformer.
In other words, the arithmetic decoder, the functionality of which is discussed here in detail, is well-suited for decoding spectral values of a time-frequency-domain representation of an audio content encoded in the frequency-domain, and for the provision of a time-frequency-domain representation of a stimulus signal for a linear-prediction-filter adapted to decode (or synthesize) a speech signal encoded in the linear-prediction-domain. Thus, the arithmetic decoder is well-suited for use in an audio decoder which is capable of handling both frequency-domain encoded audio content and linear-predictive-frequency-domain encoded audio content (transform-coded-excitation-linear-prediction-domain mode).
11.3 Context Initialization According to
In the following, the context initialization (also designated as a “context mapping”), which is performed in a step 310, will be described.
The context initialization comprises a mapping between a past context and a current context in accordance with the algorithm “arith_map_context( )”, a first example of which is shown in
As can be seen, the current context is stored in a global variable “q[2][n_context]” which takes the form of an array having a first dimension of 2 and a second dimension of “n_context”. A past context may optionally (but not necessarily) be stored in a variable “qs[n_context]” which takes the form of a table having a dimension of “n_context” (if it is used).
Taking reference to the example algorithm “arith_map_context” in
First, it should be noted that the flag “arith_reset_flag” determines if the context is reset.
Taking reference to the example of
A more complicated mapping is performed if the number of spectral values associated to the current audio frame is different from the number of spectral values associated to the previous audio frame. However, details regarding the mapping in this case are not particularly relevant for the key idea of the present invention, such that reference is made to the pseudo program code of
Moreover, an initialization value for the numeric current context value c is returned by the function “arith_map_context( )”. This initialization value is, for example, equal to the value of the entry “q[0][0]” shifted to the left by 12-bits. Accordingly, the numeric (current) context value c is properly initialized for an iterative update.
Moreover,
To summarize the above, the flag “arith_reset_flag” determines if the context is reset. If the flag is true, a reset sub-algorithm 500a of the algorithm “arith_map_context( )” is called. Alternatively, however, if the flag “arith_reset_flag” is inactive (which indicates that no reset of the context should be performed), the decoding process starts with an initialization phase where the context element vector (or array) q is updated by copying and mapping the context elements of the previous frame stored in q[1][ ] into q[0][ ]. The context elements within q are stored on 4-bits per 2-tuple. The copying and/or mapping of the context element are performed, for example, in a sub-algorithm 500b.
Moreover, it should be noted that if the context cannot be reliably determined, e.g., if the data of the previous frame is not available, and if the “arith_reset_flag” is not set, then the decoding of spectral data cannot be continued and the reading of the current “arith_data( )” element should be skipped.
In the example of
11.4 State Value Computation According to
In the following, the state value computation 312a will be described in more detail.
A first advantageous algorithm will be described taking reference to
It should be noted that the numeric current context value c (as shown in
Regarding the computation of the state value, reference is also made to
As can be seen in
However, it should be noted that some of these spectral values, which are not used for the “regular” or “normal” computation of the context for decoding the spectral values of the tuple 420 may, nevertheless, be evaluated for the detection of a plurality of previously-decoded adjacent spectral values which fulfill, individually or taken together, a predetermined condition regarding their magnitudes. Details regarding this issue will be discussed below.
Taking reference now to
It should be noted that the function “arith_get_context(c,i,N)” receives, as input variables, an “old state context”, which may be described by a numeric previous context value c. The function “arith_get_context(c,i,N)” also receives, as an input variable, an index i of a 2-tuple of spectral values to decode. The index i is typically a frequency index. An input variable N describes a window length of a window, for which the spectral values are decoded.
The function “arith_get_context(c,i,N)” provides, as an output value, an updated version of the input variable c, which describes an updated state context, and which may be considered as a numeric current context value. To summarize, the function “arith_get_context(c,i,N)” receives a numeric previous context value c as an input variable and provides an updated version thereof, which is considered as a numeric current context value. In addition, the function “arith_get_context” considers the variables i, N, and also accesses the “global” array q[ ][ ].
Regarding the details of the function “arith_get_context(c,i,N)”, it should be noted that the variable c, which initially represents the numeric previous context value in a binary form, is shifted to the right by 4-bits in a step 504a. Accordingly, the four least significant bits of the numeric previous context value (represented by the input variable c) are discarded. Also, the numeric weights of the other bits of the numeric previous context values are reduced, for example, a factor of 16.
Moreover, if the index i of the 2-tuple is smaller than N/4-1, i.e. does not take a maximum value, the numeric current context value is modified in that the value of the entry q[0][i+1] is added to bits 12 to 15 (i.e. to bits having a numeric weight of 212, 213, 214 and 215) of the shifted context value which is obtained in step 504a. For this purpose, the entry q[0][i+1] of the array q[ ][ ] (or, more precisely, a binary representation of the value represented by said entry) is shifted to the left by 12-bits. The shifted version of the value represented by the entry q[0][i+1] is then added to the context value c, which is derived in the step 504a, i.e. to a bit-shifted (shifted to the right by 4-bits) number representation of the numeric previous context value. It should be noted here that the entry q[0][i+1] of the array q[ ][ ] represents a sub-region value associated with a previous portion of the audio content (e.g., a portion of the audio content having time index t0-1, as defined with reference to
A selective addition of the entry q[0][i+1] of the array q[ ][ ] (shifted to the left by 12-bits) is shown at reference numeral 504b. As can be seen, the addition of the value represented by the entry q[0][i+1] is naturally only performed if the frequency index i does not designate a tuple of spectral values having the highest frequency index i=N/4-1.
Subsequently, in a step 504c, a Boolean AND-operation is performed, in which the value of the variable c is AND-combined with a hexadecimal value of 0xFFF0 to obtain an updated value of the variable c. By performing such an AND-operation, the four least-significant bits of the variable c are effectively set to zero.
In a step 504d, the value of the entry q[0][i−1] is added to the value of the variable c, which is obtained by step 504c, to thereby update the value of the variable c. However, said update of the variable c in step 504d is only performed if the frequency index i of the 2-tuple to decode is larger than zero. It should be noted that the entry q[0][i−1] is a context sub-region value based on a tuple of previously-decoded spectral values of the current portion of the audio content for frequencies smaller than the frequencies of the spectral values to be decoded using the numeric current context value. For example, the entry q[0][i−1] of the array q[ ][ ] may be associated with the tuple 430 having time index t0 and frequency index i−1, if it is assumed that the tuple 420 of spectral values is to be decoded using the numeric current context value returned by the present execution of the function “arith_get_context(c,i,N)”.
To summarize, bits 0, 1, 2, and 3 (i.e. a portion of four least-significant bits) of the numeric previous context value are discarded in step 504a by shifting them out of the binary number representation of the numeric previous context value. Moreover, bits 12, 13, 14, and 15 of the shifted variable c (i.e. of the shifted numeric previous context value) are set to take values defined by the context sub-region value q[0][i+1] in the step 504b. Bits 0, 1, 2, and 3 of the shifted numeric previous context value (i.e. bits 4, 5, 6, and 7 of the original numeric previous context value) are overwritten by the context sub-region value q[1][i−1] in steps 504c and 504d.
Consequently, it can be said that bits 0 to 3 of the numeric previous context value represent the context sub-region value associated with the tuple 432 of spectral values, bits 4 to 7 of the numeric previous context value represent the context sub-region value associated with a tuple 434 of previously decoded spectral values, bits 8 to 11 of the numeric previous context value represent the context sub-region value associated with the tuple 440 of previously-decoded spectral values and bits 12 to 15 of the numeric previous context value represent a context sub-region value associated with the tuple 450 of previously-decoded spectral values. The numeric previous context value, which is input into the function “arith_get_context(c,i,N)”, is associated with a decoding of the tuple 430 of spectral values.
The numeric current context value, which is obtained as an output variable of the function “arith_get_context(c,i,N)”, is associated with a decoding of the tuple 420 of spectral values. Accordingly, bits 0 to 3 of the numeric current context values describe the context sub-region value associated with the tuple 430 of the spectral values, bits 4 to 7 of the numeric current context value describe the context sub-region value associated with the tuple 440 of spectral values, bits 8 to 11 of the numeric current context value describe the numeric sub-region value associated with the tuple 450 of spectral value and bits 12 to 15 of the numeric current context value described the context sub-region value associated with the tuple 460 of spectral values. Thus, it can be seen that a portion of the numeric previous context value, namely bits 8 to 15 of the numeric previous context value, are also included in the numeric current context value, as bits 4 to 11 of the numeric current context value. In contrast, bits 0 to 7 of the current numeric previous context value are discarded when deriving the number representation of the numeric current context value from the number representation of the numeric previous context value.
In a step 504e, the variable c which represents the numeric current context value is selectively updated if the frequency index i of the 2-tuple to decode is larger than a predetermined number of, for example, 3. In this case, i.e. if i is larger than 3, it is determined whether the sum of the context sub-region values q[1][i−3], q[1][i−2], and q[1][i−1] is smaller than (or equal to) a predetermined value of, for example, 5. If it is found that the sum of said context sub-region values is smaller than said predetermined value, a hexadecimal value of, for example, 0x10000, is added to the variable c. Accordingly, the variable c is set such that the variable c indicates if there is a condition in which the context sub-region values q[1][i−3], q[1][i−2], and q[1][i−1] comprise a particularly small sum value. For example, bit 16 of the numeric current context value may act as a flag to indicate such a condition.
To conclude, the return value of the function “arith_get_context(c,i,N)” is determined by the steps 504a, 504b, 504c, 504d, and 504e, where the numeric current context value is derived from the numeric previous context value in steps 504a, 504b, 504c, and 504d, and wherein a flag indicating an environment of previously decoded spectral values having, on average, particularly small absolute values, is derived in step 504e and added to the variable c. Accordingly, the value of the variable c obtained steps 504a, 504b, 504c, 504d is returned, in a step 504f, as a return value of the function “arith_get_context(c,i,N)”, if the condition evaluated in step 504e is not fulfilled. In contrast, the value of the variable c, which is derived in steps 504a, 504b, 504c, and 504d, is incremented by the hexadecimal value of 0x10000 and the result of this increment operation is returned, in the step 504e, if the condition evaluated in step 540e is fulfilled.
To summarize the above, it should be noted that the noiseless decoder outputs 2-tuples of unsigned quantized spectral coefficients (as will be described in more detail below). At first the state c of the context is calculated based on the previously decoded spectral coefficients “surrounding” the 2-tuple to decode. In an advantageous embodiment, the state (which is, for example, represented by a numeric context value c) is incrementally updated using the context state of the last decoded 2-tuple (which is designated as a numeric previous context value), considering only two new 2-tuples (for example, 2-tuples 430 and 460). The state is coded on 17-bits (e.g., using a number representation of a numeric current context value) and is returned by the function “arith_get_context( )”. For details, reference is made to the program code representation of
Moreover, it should be noted that a pseudo program code of an alternative embodiment of a function “arith_get_context( )” is shown in
11.5 Mapping Rule Selection
In the following, the selection of a mapping rule, for example, a cumulative-frequencies-table which describes a mapping of a codeword value onto a symbol code, will be described. The selection of the mapping rule is made in dependence on a context state, which is described by the numeric current context value c.
11.5.1 Mapping Rule Selection Using the Algorithm According to
In the following, the selection of a mapping rule using the function “arith_get_pk(c)” will be described. It should be noted that the function “arith_get_pk( )” is called at the beginning of the sub-algorithm 312ba when decoding a code value “acod_m” for providing a tuple of spectral values. It should be noted that the function “arith_get_pk(c)” is called with different arguments in different iterations of the algorithm 312b. For example, in a first iteration of the algorithm 312b, the function “arith_get_pk(c)” is called with an argument which is equal to the numeric current context value c, provided by the previous execution of the function “arith_get_context(c,i,N)” at step 312a. In contrast, in further iterations of the sub-algorithm 312ba, the function “arith_get_pk(c)” is called with an argument which is the sum of the numeric current context value c provided by the function “arith_get_context(c,i,N)” in step 312a, and a bit-shifted version of the value of the variable “esc_nb”, wherein the value of the variable “esc_nb” is shifted to the left by 17-bits. Thus, the numeric current context value c provided by the function “arith_get_context(c,i,N)” is used as an input value of the function “arith_get_pk( )” in the first iteration of the algorithm 312ba, i.e. in the decoding of comparatively small spectral values. In contrast, when decoding comparatively larger spectral values, the input variable of the function “arith_get_pk( )” is modified in that the value of the variable “esc_nb”, is taken into consideration, as is shown in
Taking reference now to
Taking reference to
Subsequently, a search 506b is performed to identify an index value which designates an entry of the table “ari_hash_m”, which is chosen as defined in the table representation of FIGS. 22(1),22(2), 22(3), 22(4), such that the value of the input variable c of the function “arith_get_pk( )” lies within an interval defined by said entry and an adjacent entry.
In the search 506b, a sub-algorithm 506ba is repeated, while a difference between the variables “i_max” and “i_min” is larger than 1. In the sub-algorithm 506ba, the variable i is set to be equal to an arithmetic mean of the values of the variables “i_min” and “i_max”. Consequently, the variable i designates an entry of the table “ari_hash_m[ ]” (as defined in the table representations of FIGS. 22(1), 22(2), 22(3) and 22(4)) in a middle of a table interval defined by the values of the variables “i_min” and “i_max”. Subsequently, the variable j is set to be equal to the value of the entry “ari_hash_m[i]” of the table “ari_hash_m[ ]”. Thus, the variable j takes a value defined by an entry of the table “ari_hash_m[ ]”, which entry lies in the middle of a table interval defined by the variables “i_min” and “i_max”. Subsequently, the interval defined by the variables “i_min” and “i_max” is updated if the value of the input variable c of the function “arith_get_pk( )” is different from a state value defined by the uppermost bits of the table entry “j=ari_hash_m[i]” of the table “ari_hash_m[ ]”. For example, the “upper bits” (bits 8 and upward) of the entries of the table “ari_hash_m[ ]” describe significant state values. Accordingly, the value “j>>8” describes a significant state value represented by the entry “j=ari_hash_m[i]” of the table “ari_hash_m[ ]” designated by the hash-table-index value i. Accordingly, if the value of the variable c is smaller than the value “j>>8”, this means that the state value described by the variable c is smaller than a significant state value described by the entry “ari_hash_m[i]” of the table “ari_hash_m[ ]”. In this case, the value of the variable “i_max” is set to be equal to the value of the variable i, which in turn has the effect that a size of the interval defined by “i_min” and “i_max” is reduced, wherein the new interval is approximately equal to the lower half of the previous interval. If it found that the input variable c of the function “arith_get_pk( )” is larger than the value “j>>8”, which means that the context value described by the variable c is larger than a significant state value described by the entry “ari_hash_m[i]” of the array “ari_hash_m[ ]”, the value of the variable “i_min” is set to be equal to the value of the variable i. Accordingly, the size of the interval defined by the values of the variables “i_min” and “i_max” is reduced to approximately a half of the size of the previous interval, defined by the previous values of the variables “i_min” and “i_max”. To be more precise, the interval defined by the updated value of the variable “i_min” and by the previous (unchanged) value of the variable “i_max” is approximately equal to the upper half of the previous interval in the case that the value of the variable c is larger than the significant state value defined by the entry “ari_hash_m[i]”.
If, however, it is found that the context value described by the input variable c of the algorithm “arith_get_pk( )” is equal to the significant state value defined by the entry “ari_hash_m[i]” (i.e. c==(j>>8)), a mapping rule index value defined by the lower most 8-bits of the entry “ari_hash_m[i]” is returned as the return value of the function “arith_get_pk( )” (instruction “return (j&0xFF)”).
To summarize the above, an entry “ari_hash_m[i]”, the uppermost bits (bits 8 and upward) of which describe a significant state value, is evaluated in each iteration 506ba, and the context value (or numeric current context value) described by the input variable c of the function “arith_get_pk( )” is compared with the significant state value described by said table entry “ari_hash_m[i]”. If the context value represented by the input variable c is smaller than the significant state value represented by the table entry “ari_hash_m[i]”, the upper boundary (described by the value “i_max”) of the table interval is reduced, and if the context value described by the input variable c is larger than the significant state value described by the table entry “ari_hash_m[i]”, the lower boundary (which is described by the value of the variable “i_min”) of the table interval is increased. In both of said cases, the sub-algorithm 506ba is repeated, unless the size of the interval (defined by the difference between “i_max” and “i_min”) is smaller than, or equal to, 1. If, in contrast, the context value described by the variable c is equal to the significant state value described by the table entry “ari_hash_m[i]”, the function “arith_get_pk( )” is aborted, wherein the return value is defined by the lower most 8-bits of the table entry “ari_hash_m[i]”.
If, however, the search 506b is terminated because the interval size reaches its minimum value (“i_max−“i_min” is smaller than, or equal to, 1), the return value of the function “arith_get_pk( )” is determined by an entry “ari_lookup_m[i_max]” of a table “ari_lookup_m[ ]”, which can be seen at reference numeral 506c. The table ari_lookup_m[ ] is advantageously chosen as defined in the table representation of
If, however, the iterative repetition of the sub-algorithm 506ba is terminated because the size of the interval (defined by “i_max−i_min”) reaches or exceeds its minimum value, it is assumed that the context value described by the input variable c is not a significant state value. In this case, the index “i_max”, which designates an upper boundary of the interval, is nevertheless used. The upper value “i_max” of the interval, which is reached in the last iteration of the sub-algorithm 506ba, is re-used as a table index value for an access to the table “ari_lookup_m” (which may be equal to the table ari_lookup_m[742] of
To summarize the above, the context state c determines the cumulative-frequencies-table used for decoding the most-significant 2-bits-wise plane m. The mapping from c to the corresponding cumulative-frequencies-table index “pki” as performed by the function “arith_get_pk( )”. A pseudo program code representation of said function “arith_get_pk( )” has been explained taking reference to
To further summarize the above, the value m is decoded using the function “arith_decode( )” (which is described in more detail below) called with the cumulative-frequencies-table “arith_cf_m[pki][ ]”, where “pki” corresponds to the index (also designated as mapping rule index value) returned by the function “arith_get_pk( )”, which is described with reference to fig Se in the form of a pseudo-C code.
11.5.2 Mapping Rule Selection Using the Algorithm According to
In the following, another embodiment of a mapping rule selection algorithm “arith_get_pk( )” will be described with reference to
The algorithm “arith_get_pk( )” according to
The algorithm “arith_get_pk( )” provides, as an output variable, a variable “pki”, which describes and index of a probability distribution (or probability model) associated to a state of the context described by the input variable c. The variable “pki” may, for example, be a mapping rule index value.
The algorithm according to
However, different step sizes, e.g. different contents of the array “i_diff[ ]” may actually be chosen, wherein the contents of the array “i_diff[ ]” may naturally be adapted to a size of the hash-table “ari_hash_m[i]”.
It should be noted that the variable “i_min” is initialized to take a value of 0 right at the beginning of the algorithm “arith_get_pk( )”.
In an initialization step 508a, a variable s is initialized in dependence on the input variable c, wherein a number representation of the variable c is shifted to the left by 8 bits in order to obtain the number representation of the variable s.
Subsequently, a table search 508b is performed, in order to identify a hash-table-index-value “i_min” of an entry of the hash-table “ari_hash_m[ ]”, such that the context value described by the context value c lies within an interval which is bounded by the context value described by the hash-table entry “ari_hash_m[i_min]” and a context value described by another hash-table entry “ari_hash_m” which other entry “ari_hash_m” is adjacent (in terms of its hash-table index value) to the hash-table entry “ari_hash_m[i_min]” Thus, the algorithm 508b allows for the determining of a hash-table-index-value “i_min” designating an entry “j=ari_hash_m[i_min]” of the hash-table “ari_hash_m[ ]”, such that the hash-table entry “ari_hash_m[i_min]” at least approximates the context value described by the input variable c.
The table search 508b comprises an iterative execution of a sub-algorithm 508ba, wherein the sub-algorithm 508ba is executed for a predetermined number of, for example, nine iterations. In the first step of the sub-algorithm 508ba, the variable i is set to a value which is equal to a sum of a value of a variable “i_min” and a value of a table entry “i_diff[k]”. It should be noted here that k is a running variable, which is incremented, starting from an initial value of k=0, with each iteration of the sub-algorithm 508ba. The array “i_diff[ ]” defines predetermine increment values, wherein the increment values decrease with increasing table index k, i.e. with increasing numbers of iterations.
In a second step of the sub-algorithm 508ba, a value of a table entry “ari_hash_m[ ]” is copied into a variable j. Advantageously, the uppermost bits of the table-entries of the table “ari_hash_m[ ]” describe a significant state values of a numeric context value, and the lowermost bits (bits 0 to 7) of the entries of the table “ari_hash_m[ ]” describe mapping rule index values associated with the respective significant state values.
In a third step of the sub-algorithm 508ba, the value of the variable S is compared with the value of the variable j, and the variable “i_min” is selectively set to the value “i+1” if the value of the variable s is larger than the value of the variable j. Subsequently, the first step, the second step, and the third step of the sub-algorithm 508ba are repeated for a predetermined number of times, for example, nine times. Thus, in each execution of the sub-algorithm 508ba, the value of the variable “i_min” is incremented by i_diff[ ]+1, if, and only if, the context value described by the currently valid hash-table-index i_min+i_diff[ ] is smaller than the context value described by the input variable c. Accordingly, the hash-table-index-value “i_min” is (iteratively) increased in each execution of the sub-algorithm 508ba if (and only if) the context value described by the input variable c and, consequently, by the variable s, is larger than the context value described by the entry “ari_hash_m[i=i_min+diff[k]]”.
Moreover, it should be noted that only a single comparison, namely the comparison as to whether the value of the variable s is larger than the value of the variable j, is performed in each execution of the sub-algorithm 508ba. Accordingly, the algorithm 508ba is computationally particularly efficient. Moreover, it should be noted that there are different possible outcomes with respect to the final value of the variable “i_min” For example, it is possible that the value of the variable “i_min” after the last execution of the sub-algorithm 512ba is such that the context value described by the table entry “ari_hash_m[i_min]” is smaller than the context value described by the input variable c, and that the context value described by the table entry “ari_hash_m[i_min+1]” is larger than the context value described by the input variable c. Alternatively, it may happen that after the last execution of the sub-algorithm 508ba, the context value described by the hash-table-entry “ari_hash_m[i_min−1]” is smaller than the context value described by the input variable c, and that the context value described by the entry “ari_hash_m[i_min]” is larger than the context value described by the input variable c. Alternatively, however, it may happen that the context value described by the hash-table-entry “ari_hash_m[i_min]” is identical to the context value described by the input variable c.
For this reason, a decision-based return value provision 508c is performed. The variable j is set to take the value of the hash-table-entry “ari_hash_m[i_min]” Subsequently, it is determined whether the context value described by the input variable c (and also by the variable s) is larger than the context value described by the entry “ari_hash_m[i_min]” (first case defined by the condition “s>j”), or whether the context value described by the input variable c is smaller than the context value described by the hash-table-entry “ari_hash_m[i_min]” (second case defined by the condition “c<j>>8”), or whether the context value described by the input variable c is equal to the context value described by the entry “ari_hash_m[i_min]” (third case).
In the first case, (s>j), an entry “ari_lookup_m[i_min+1]” of the table “ari_lookup_m[ ]” designated by the table index value “i_min+1” is returned as the output value of the function “arith_get_pk( )”. In the second case (c<(j>>8)), an entry “ari_lookup_m[i_min]” of the table “ari_lookup_m[ ]” designated by the table index value “i_min” is returned as the return value of the function “arith_get_pk( )”. In the third case (i.e. if the context value described by the input variable c is equal to the significant state value described by the table entry “ari_hash_m[i_min]”), a mapping rule index value described by the lowermost 8-bits of the hash-table entry “ari_hash_m[i_min]” is returned as the return value of the function “arith_get_pk( )”.
To summarize the above, a particularly simple table search is performed in step 508b, wherein the table search provides a variable value of a variable “i_min” without distinguishing whether the context value described by the input variable c is equal to a significant state value defined by one of the state entries of the table “ari_hash_m[ ]” or not. In the step 508c, which is performed subsequent to the table search 508b, a magnitude relationship between the context value described by the input variable c and a significant state value described by the hash-table-entry “ari_hash_m[i_min]” is evaluated, and the return value of the function “arith_get_pk( )” is selected in dependence on a result of said evaluation, wherein the value of the variable “i_min”, which is determined in the table evaluation 508b, is considered to select a mapping rule index value even if the context value described by the input variable c is different from the significant state value described by the hash-table-entry “ari_hash_m[i_min]”.
It should further be noted that the comparison in the algorithm should advantageously (or alternatively) be done between the context index (numeric context value) c and j=ari_hash_m[i]>>8. Indeed, each entry of the table “ari_hash_m[ ]” represents a context index, coded beyond the 8th bits, and its corresponding probability model coded on the 8 first bits (least significant bits). In the current implementation, we are mainly interested in knowing whether the present context c is greater than ari_hash_m[i]>>8, which is equivalent to detecting if s=c<<8 is also greater than ari_hash_m[i].
To summarize the above, once the context state is calculated (which may, for example, be achieved using the algorithm “arith_get_context(c,i,N)” according to
11.6 Arithmetic Decoding
11.6.1 Arithmetic Decoding Using the Algorithm According to
In the following, the functionality an advantageous implementation of the function “arith_decode( )” will be discussed in detail with reference to
It should be noted that the function “arith_decode( )” uses the helper function “arith_first_symbol (void)”, which returns TRUE, if it is the first symbol of the sequence and FALSE otherwise. The function “arith_decode( )” also uses the helper function “arith_get_next_bit(void)”, which gets and provides the next bit of the bitstream.
In addition, the function “arith_decode( )” uses the global variables “low”, “high” and “value”. Further, the function “arith_decode( )” receives, as an input variable, the variable “cum_freq[ ]”, which points towards a first entry or element (having element index or entry index 0) of the selected cumulative-frequencies-table or cumulative-frequencies sub-table (advantageously, one of the sub-tables ari_cf_m[pki=0][17] to ari_cf_m[pki=63][17] of the table ari_cf_m[64][17], as defined by the table representation of FIGS. 23(1), 23(2), 23(3)). Also, the function “arith_decode( )” uses the input variable “cfl”, which indicates the length of the selected cumulative-frequencies-table or cumulative-frequencies sub-table designated by the variable “cum_freq[ ]”.
The function “arith_decode( )” comprises, as a first step, a variable initialization 570a, which is performed if the helper function “arith_first_symbol( )” indicates that the first symbol of a sequence of symbols is being decoded. The value initialization 550a initializes the variable “value” in dependence on a plurality of, for example, 16 bits, which are obtained from the bitstream using the helper function “arith_get_next_bit”, such that the variable “value” takes the value represented by said bits. Also, the variable “low” is initialized to take the value of 0, and the variable “high” is initialized to take the value of 65535.
In a second step 570b, the variable “range” is set to a value, which is larger, by 1, than the difference between the values of the variables “high” and “low”. The variable “cum” is set to a value which represents a relative position of the value of the variable “value” between the value of the variable “low” and the value of the variable “high”. Accordingly, the variable “cum” takes, for example, a value between 0 and 216 in dependence on the value of the variable “value”.
The pointer p is initialized to a value which is smaller, by 1, than the starting address of the selected cumulative-frequencies-table or sub-table.
The algorithm “arith_decode( )” also comprises an iterative cumulative-frequencies-table-search 570c. The iterative cumulative-frequencies-table-search is repeated until the variable cfl is smaller than or equal to 1. In the iterative cumulative-frequencies-table-search 570c, the pointer variable q is set to a value, which is equal to the sum of the current value of the pointer variable p and half the value of the variable “cfl”. If the value of the entry *q of the selected cumulative-frequencies-table, which entry is addressed by the pointer variable q, is larger than the value of the variable “cum”, the pointer variable p is set to the value of the pointer variable q, and the variable “cfl” is incremented. Finally, the variable “cfl” is shifted to the right by one bit, thereby effectively dividing the value of the variable “cfl” by 2 and neglecting the modulo portion.
Accordingly, the iterative cumulative-frequencies-table-search 570c effectively compares the value of the variable “cum” with a plurality of entries of the selected cumulative-frequencies-table, in order to identify an interval within the selected cumulative-frequencies-table, which is bounded by entries of the cumulative-frequencies-table, such that the value cum lies within the identified interval. Accordingly, the entries of the selected cumulative-frequencies-table define intervals, wherein a respective symbol value is associated to each of the intervals of the selected cumulative-frequencies-table. Also, the widths of the intervals between two adjacent values of the cumulative-frequencies-table define probabilities of the symbols associated with said intervals, such that the selected cumulative-frequencies-table in its entirety defines a probability distribution of the different symbols (or symbol values). Details regarding the available cumulative-frequencies-tables or cumulative-frequencies-sub-tables will be discussed below taking reference to
Taking reference again to
The algorithm “arith_decode” also comprises an adaptation 570e of the variables “high” and “low”. If the symbol value represented by the variable “symbol” is different from 0, the variable “high” is updated, as shown at reference numeral 570e. Also, the value of the variable “low” is updated, as shown at reference numeral 570e. The variable “high” is set to a value which is determined by the value of the variable “low”, the variable “range” and the entry having the index “symbol −1” of the selected cumulative-frequencies-table or cumulative-frequencies sub-table. The variable “low” is increased, wherein the magnitude of the increase is determined by the variable “range” and the entry of the selected cumulative-frequencies-table having the index “symbol”. Accordingly, the difference between the values of the variables “low” and “high” is adjusted in dependence on the numeric difference between two adjacent entries of the selected cumulative-frequencies-table.
Accordingly, if a symbol value having a low probability is detected, the interval between the values of the variables “low” and “high” is reduced to a narrow width. In contrast, if the detected symbol value comprises a relatively large probability, the width of the interval between the values of the variables “low” and “high” is set to a comparatively large value. Again, the width of the interval between the values of the variable “low” and “high” is dependent on the detected symbol and the corresponding entries of the cumulative-frequencies-table.
The algorithm “arith_decode( )” also comprises an interval renormalization 570f, in which the interval determined in the step 570e is iteratively shifted and scaled until the “break”-condition is reached. In the interval renormalization 570f, a selective shift-downward operation 570fa is performed. If the variable “high” is smaller than 32768, nothing is done, and the interval renormalization continues with an interval-size-increase operation 570fb. If, however, the variable “high” is not smaller than 32768 and the variable “low” is greater than or equal to 32768, the variables “values”, “low” and “high” are all reduced by 32768, such that an interval defined by the variables “low” and “high” is shifted downwards, and such that the value of the variable “value” is also shifted downwards. If, however, it is found that the value of the variable “high” is not smaller than 32768, and that the variable “low” is not greater than or equal to 32768, and that the variable “low” is greater than or equal to 16384 and that the variable “high” is smaller than 49152, the variables “value”, “low” and “high” are all reduced by 16384, thereby shifting down the interval between the values of the variables “high” and “low” and also the value of the variable “value”. If, however, neither of the above conditions is fulfilled, the interval renormalization is aborted.
If, however, any of the above-mentioned conditions, which are evaluated in the step 570fa, is fulfilled, the interval-increase-operation 570fb is executed. In the interval-increase-operation 570fb, the value of the variable “low” is doubled. Also, the value of the variable “high” is doubled, and the result of the doubling is increased by 1. Also, the value of the variable “value” is doubled (shifted to the left by one bit), and a bit of the bitstream, which is obtained by the helper function “arith_get_next_bit” is used as the least-significant bit. Accordingly, the size of the interval between the values of the variables “low” and “high” is approximately doubled, and the precision of the variable “value” is increased by using a new bit of the bitstream. As mentioned above, the steps 570fa and 570fb are repeated until the “break” condition is reached, i.e. until the interval between the values of the variables “low” and “high” is large enough.
Regarding the functionality of the algorithm “arith_decode( )”, it should be noted that the interval between the values of the variables “low” and “high” is reduced in the step 570e in dependence on two adjacent entries of the cumulative-frequencies-table referenced by the variable “cum_freq”. If an interval between two adjacent values of the selected cumulative-frequencies-table is small, i.e. if the adjacent values are comparatively close together, the interval between the values of the variables “low” and “high”, which is obtained in the step 570e, will be comparatively small. In contrast, if two adjacent entries of the cumulative-frequencies-table are spaced further, the interval between the values of the variables “low” and “high”, which is obtained in the step 570e, will be comparatively large.
Consequently, if the interval between the values of the variables “low” and “high”, which is obtained in the step 570e, is comparatively small, a large number of interval renormalization steps will be executed to re-scale the interval to a “sufficient” size (such that neither of the conditions of the condition evaluation 570fa is fulfilled). Accordingly, a comparatively large number of bits from the bitstream will be used in order to increase the precision of the variable “value”. If, in contrast, the interval size obtained in the step 570e is comparatively large, only a smaller number of repetitions of the interval normalization steps 570fa and 570fb may be used in order to renormalize the interval between the values of the variables “low” and “high” to a “sufficient” size. Accordingly, only a comparatively small number of bits from the bitstream will be used to increase the precision of the variable “value” and to prepare a decoding of a next symbol.
To summarize the above, if a symbol is decoded, which comprises a comparatively high probability, and to which a large interval is associated by the entries of the selected cumulative-frequencies-table, only a comparatively small number of bits will be read from the bitstream in order to allow for the decoding of a subsequent symbol. In contrast, if a symbol is decoded, which comprises a comparatively small probability and to which a small interval is associated by the entries of the selected cumulative-frequencies-table, a comparatively large number of bits will be taken from the bitstream in order to prepare a decoding of the next symbol.
Accordingly, the entries of the cumulative-frequencies-tables reflect the probabilities of the different symbols and also reflect a number of bits that may be used for decoding a sequence of symbols. By varying the cumulative-frequencies-table in dependence on a context, i.e. in dependence on previously-decoded symbols (or spectral values), for example, by selecting different cumulative-frequencies-tables in dependence on the context, stochastic dependencies between the different symbols can be exploited, which allows for a particular bitrate-efficient encoding of the subsequent (or adjacent) symbols.
To summarize the above, the function “arith_decode( )”, which has been described with reference to
To summarize the above, the arithmetic decoder is an integer implementation using the method of tag generation with scaling. For details, reference is made to the book “Introduction to Data Compression” of K. Sayood, Third Edition, 2006, Elsevier Inc.
The computer program code according to
11.6.2 Arithmetic Decoding Using the Algorithm According to
h and 5i show a pseudo program code representation of another embodiment of the algorithm “arith_decode( )”, which can be used as an alternative to the algorithm “arith_decode” described with reference to
It should be noted that both the algorithms according to
To summarize, the value m is decoded using the function “arith_decode( )” called with the cumulative-frequencies-table “arith_cf_m[pki][ ]” (which is, advantageously, a sub-table of the table ari_cf_m[67][17] defined in the table representations of FIGS. 23(1), 23(2), 23(3)) wherein “pki” corresponds to the index returned by the function “arith_get_pk( )”. The arithmetic coder (or decoder) is an integer implementation using the method of tag generation with scaling. For details, reference is made to the Book “Introduction to Data Compression” of K. Sayood, Third Edition, 2006, Elsevier Inc. The computer program code according to
11.7 Escape Mechanism
In the following, the escape mechanism, which is used in the decoding algorithm “values_decode( )” according to
When the decoded value m (which is provided as a return value of the function “arith_decode( )”) is the escape symbol “ARITH_ESCAPE”, the variables “lev” and “esc_nb” are incremented by 1, and another value m is decoded. In this case, the function “arith_get_pk( )” (or “get_pk( )”) is called once again with the value “c+esc_nb<<17 as input argument, where the variable “esc_nb” describes the number of escape symbols previously decoded for the same 2-tuple and bounded to 7.
To summarize, if an escape symbol is identified, it is assumed that the most-significant bit-plane value m comprises an increased numeric weight. Moreover, current numeric decoding is repeated, wherein a modified numeric current context value “c+esc_nb<<17” is used as an input variable to the function “arith_get_pk( )”. Accordingly, a different mapping rule index value “pki” is typically obtained in different iterations of the sub-algorithm 312ba.
11.8 Arithmetic Stop Mechanism
In the following, the arithmetic stop mechanism will be described. The arithmetic stop mechanism allows for the reduction of the number of bits that may be used in the case that the upper frequency portion is entirely quantized to 0 in an audio encoder.
In an embodiment, an arithmetic stop mechanism may be implemented as follows: Once the value m is not the escape symbol, “ARITH_ESCAPE”, the decoder checks if the successive m forms an “ARITH_STOP” symbol. If the condition “(esc_nb>0&&m==0)” is true, the “ARITH_STOP” symbol is detected and the decoding process is ended. In this case, the decoder jumps directly to the sign decoding described below or to the “arith_finish( )” function which will be described below. The condition means that the rest of the frame is composed of zero values.
11.9 Less-Significant Bit-Plane Decoding
In the following, the decoding of the one or more less-significant bit-planes will be described. The decoding of the less-significant bit-plane, is performed, for example, in the step 312d shown in
11.9.1 Less-Significant Bit-Plane Decoding According to
Taking reference now to
Subsequently, an arithmetic decoding of the least-significant bit-plane values r is repeated, wherein the number of repetitions is determined by the value of the variable “lev”. A least-significant bit-plane value r is obtained using the function “arith_decode”, wherein a cumulative-frequencies-table adapted to the least-significant bit-plane decoding is used (cumulative-frequencies-table “arith_cf_r”). A least-significant bit (having a numeric weight of 1) of the variable r describes a less-significant bit-plane of the spectral value represented by the variable a, and a bit having a numeric weight of 2 of the variable r describes a less-significant bit of the spectral value represented by the variable b. Accordingly, the variable a is updated by shifting the variable a to the left by 1 bit and adding the bit having the numeric weight of 1 of the variable r as the least significant bit. Similarly, the variable b is updated by shifting the variable b to the left by one bit and adding the bit having the numeric weight of 2 of the variable r.
Accordingly, the two most-significant information carrying bits of the variables a,b are determined by the most-significant bit-plane value m, and the one or more least-significant bits (if any) of the values a and b are determined by one or more less-significant bit-plane values r.
To summarize the above, if the “ARITH_STOP” symbol is not met, the remaining bit planes are then decoded, if any exist, for the present 2-tuple. The remaining bit-planes are decoded from the most-significant to the least-significant level by calling the function “arith_decode( )” lev number of times with the cumulative frequencies table “arith_cf_r[ ]”. The decoded bit-planes r permit to refine the previously-decoded value m in accordance with the algorithm, a pseudo program code of which is shown in
11.9.2 Less-Significant Bit Band Decoding According to
Alternatively, however, the algorithm a pseudo program code representation of which is shown in
11.10 Context Update
11.10.1 Context Update According to
In the following, operations used to complete the decoding of the tuple of spectral values will be described, taking reference to
It should be noted that the algorithms according to
Taking reference now to
Subsequently, the context “q” is also updated for the next 2-tuple. It should be noted that this context update also has to be performed for the last 2-tuple. This context update is performed by the function “arith_update_context( )”, a pseudo program code representation of which is shown in
Taking reference now to
It should be noted here that the entry “q[1][i]” of the array “q[ ][ ]” may be considered as a context sub-region value, because it describes a sub-region of the context which is used for a subsequent decoding of additional spectral values (or tuples of spectral values).
It should be noted here that the summation of the absolute values a and b of the two currently decoded spectral values (signed versions of which are stored in the entries “x_ac_dec[2*i]” and “x_ac_dec[2*i+1]” of the array “x_ac_dec[ ]”), may be considered as the computation of a norm (e.g. a L1 norm) of the decoded spectral values.
It has been found that context sub-region values (i.e. entries of the array “q[ ][ ]”), which describe a norm of a vector formed by a plurality of previously decoded spectral values are particularly meaningful and memory efficient. It has been found that such a norm, which is computed on the basis of a plurality of previously decoded spectral values, comprises meaningful context information in a compact form. It has been found that the sign of the spectral values is typically not particularly relevant for the choice of the context. It has also been found that the formation of a norm across a plurality of previously decoded spectral values typically maintains the most important information, even though some details are discarded. Moreover, it has been found that a limitation of the numeric current context value to a maximum value typically does not result in a severe loss of information. Rather, it has been found that it is more efficient to use the same context state for significant spectral values which are larger than a predetermined threshold value. Thus, the limitation of the context sub-region values brings along a further improvement of the memory efficiency. Furthermore, it has been found that the limitation of the context sub-region values to a certain maximum value allows for a particularly simple and computationally efficient update of the numeric current context value, which has been described, for example, with reference to
Moreover, it has been found that a limitation of the context sub-region values to values between 1 and 15, brings along a particularly good compromise between accuracy and memory efficiency, because 4 bits are sufficient in order to store such a context sub-region value.
However, it should be noted that in some other embodiments, a context sub-region value may be based on a single decoded spectral value only. In this case, the formation of a norm may optionally be omitted.
The next 2-tuple of the frame is decoded after the completion of the function “arith_update_context” by incrementing i by 1 and by redoing the same process as described above, starting from the function “arith_get_context( )”.
When lg/2 2-tuples are decoded within the frame, or with the stop symbol “ARITH_STOP” occurs, the decoding process of the spectral amplitude terminates and the decoding of the signs begins.
Details regarding the decoding of the signs have been discussed with reference to
Once all unsigned quantized spectral coefficients are decoded, the according sign is added. For each non-null quantized value of “x_ac_dec” a bit is read. If the read bit value is equal to 1, the quantized value is positive, nothing is done and the signed value is equal to the previously-decoded unsigned value. Otherwise (i.e. if the read bit value is equal to 0), the decoded coefficient (or spectral value) is negative and the two's complement is taken from the unsigned value. The sign bits are read from the low to the higher frequencies. For details, reference is made to
The decoding is finished by calling the function “arith_finish( )”. The remaining spectral coefficients are set to 0. The respective context states are updated correspondingly.
For details, reference is made to
The function “arith_finish” also receives, as an input value, a vector “x_ac_dec” of decoded spectral values, or at least a reference to such a vector of decoded spectral coefficients.
The function “arith_finish” is configured to set the entries of the array (or vector) “x_ac_dec”, for which no spectral values have been decoded due to the presence of an arithmetic stop condition, to 0. Moreover, the function “arith_finish” sets context sub-region values “q[1][i]”, which are associated with spectral values for which no value has been decoded due to the presence of an arithmetic stop condition, to a predetermined value of 1. The predetermined value of 1 corresponds to a tuple of the spectral values wherein both spectral values are equal to 0.
Accordingly, the function “arith_finish( )” allows to update the entire array (or vector) “x_ac_dec[ ]” of spectral values and also the entire array of context sub-region values “q[1][i]”, even in the presence of an arithmetic stop condition.
11.10.2 Context Update According to
In the following, another embodiment of the context update will be described taking reference to
Once all unsigned quantized spectral coefficients are decoded, the sign is then added. For each non-quantized value of “qdec”, a bit is read. If the read bit value is equal to 0, the quantized value is positive, nothing is done and the signed value is equal to the previously-decoded unsigned value. Otherwise, the decoded coefficient is negative and the two's complement is taken from the unsigned vale. The signed bits are read from the low to the high frequencies.
11.11 Summary of Decoding Process
In the following, the decoding process will briefly be summarized. For details, reference is made to the above discussion and also to
The decoded coefficients “x_ac_dec[ ]” for the frequency-domain (i.e. for a frequency-domain mode) are then stored in the array “x_ac_quant[g][win][sfb][bin]”. The order of transmission of the noiseless coding codewords is such that when they are decoded in the order received and stored in the array, “bin” is the most rapidly incrementing index and “g” is the most slowly incrementing index. Within a codeword, the order of decoding is a, then b. The decoded coefficients “x_ac_dec[ ]” for the “TCX” (i.e. for an audio decoding using a transform-coded excitation) are stored (for example, directly) in the array “x_tcx_invquant[win][bin]” and the order of the transmission of the noiseless coding codewords is such that when they are decoded in the order received and stored in the array, “bin” is the most rapidly incrementing index and “win” is the most slowly incrementing index. Within a codeword, the order of decoding is a, then b.
First, the flag “arith_reset_flag” determines if the context is reset. If the flag is true, this is considered in the function “arith_map_context”.
The decoding process starts with an initialization phase where the context element vector “q” is updated by copying and mapping the context elements of the previous frame stored in “q[1][ ]” into “q[0][ ]”. The context elements within “q” are stored on a 4-bits per 2-tuple. For details, reference is made to the pseudo program code of
The noiseless decoder outputs 2-tuples of unsigned quantized spectral coefficients. At first, the state c of the context is calculated based on the previously-decoded spectral coefficients surrounding the 2-tuple to decode. Therefore, the state is incrementally updated using the context state of the last decoded 2-tuple considering only two new 2-tuples. The state is decoded on 17-bits and is returned by the function “arith_get_context”. A pseudo program code representation of the set function “arith_get_context” is shown in
The context state c determines the cumulative-frequencies-table used for decoding the most significant 2-bit-wise-plane m. The mapping from c to the corresponding cumulative-frequencies-table index “pki” is performed by the function “arith_get_pk( )”. A pseudo program code representation of the function “arith_get_pk( )” is shown in
The value m is decoded using the function “arith_decode( )” called with the cumulative-frequencies-table, “arith_cf_m[pki][ ]”, where “pki” corresponds to the index returned by “arith_get_pk( )”. The arithmetic coder (and decoder) is an integer implementation using a method of tag generation with scaling. The pseudo program code according to
When the decoded value m is the escape symbol “ARITH_ESCAPE”, the variables “led” and “esc_nb” are incremented by 1 and another value m is decoded. In this case, the function “get_pk( )” is called once again with the value “c+esc_nb<<17” as input argument, where “esc_nb” is the number of escape symbols previously decoded for the same 2-tuple and bounded to 7.
Once the value m is not the escape symbol “ARITH_ESCAPE”, the decoder checks if the successive m forms an “ARITH_STOP” symbol. If the condition “(esc_nb>0&&m==0)” is true, the “ARITH_STOP” symbol is detected and the decoding process is ended. The decoder jumps directly to the sign decoding described afterwards. The condition means that the rest of the frame is composed of 0 values.
If the “ARITH_STOP” symbol is not met, the remaining bit-planes are then decoded, if any exist, for the present 2-tuple. The remaining bit-planes are decoded from the most-significant to the least-significant level, by calling “arith_decode( )” lev number of times with the cumulative-frequencies-table “arith_cf_r[ ]”. The decoded bit-planes r permit the refining of the previously-decoded value m, in accordance with the algorithm a pseudo program code of which is shown in
The context “q” is also updated for the next 2-tuple. It should be noted that this context update has to also be performed for the last 2-tuple. This context update is performed by the function “arith_update_context( )”, a pseudo program code representation of which is shown in
The next 2-tuple of the frame is then decoded by incrementing i by 1 and by redoing the same process as described as above, starting from the function “arith_get_context( )”. When lg/2 2-tuples are decoded within the frame, or when the stop symbol “ARITH_STOP” occurs, the decoding process of the spectral amplitude terminates and the decoding of the signs begins.
The decoding is finished by calling the function “arith_finish( )”. The remaining spectral coefficients are set to 0. The respective context states are updated correspondingly. A pseudo program code representation of the function “arith_finish” is shown in
Once all unsigned quantized spectral coefficients are decoded, the according sign is added. For each non-null quantized value of “x_ac_dec”, a bit is read. If the read bit value is equal to 1, the quantized value is positive, and nothing is done, and the signed value is equal to the previously decoded unsigned value. Otherwise, the decoded coefficient is negative and the two's complement is taken from the unsigned value. The signed bits are read from the low to the high frequencies.
11.12 Legends
q shows a legend of the definitions which is related to the algorithms according to
r shows a legend of the definitions which is related to the algorithms according to
12. Mapping Tables
In an embodiment according to the invention, particularly advantageous tables “ari_lookup_m”, “ari_hash_m”, and “ari_cf_m” are used for the execution of the function “arith_get_pk( )” according to
12.1 Table “ari_hash_m[742]” According to FIGS. 22(1), 22(2), 22(3) and 22(4)
A content of a particularly advantageous implementation of the table “ari_hash_m”, which is used by the function “arith_get_pk”, a first advantageous embodiment of which was described with reference to
Furthermore, it should be noted that the table entries of the table “ari_hash_m[ ]” according to FIGS. 22(1) to 22(4) are arranged in a numeric order, in order to allow for the execution of the table search 506b, 508b, 510b of the function “arith_get_pk( )”.
It should further be noted that the most-significant 24-bits of the table entries of the table “ari_hash_m” represent certain significant state values (and may be considered as a first sub-entry), while the least-significant 8-bits represent mapping rule index values “pki” (and may be considered as a second sub-entry). Thus, the entries of the table “ari_hash_m[ ]” describe a “direct hit” mapping of a context value onto a mapping rule index value “pki”.
However, the uppermost 24-bits of the entries of the table “ari_hash_m[ ]” represent, at the same time, interval boundaries of intervals of numeric context values, to which the same mapping rule index value is associated. Details regarding this concept have already been discussed above.
12.2 Table “ari_lookup_m” According to
A content of a particularly advantageous embodiment of the table “ari_lookup_m” is shown in the table of
It should be noted that the entries of the table “ari_lookup_m[742]” are listed in an ascending order of the table index “i” (e.g. “i_min” or “i_max” or “i”) between 0 and 741. The term “0x” indicates that the table entries are described in a hexadecimal format. Accordingly, the first table entry “0x01” corresponds to the table entry “ari_lookup_m[0]” having table index 0 and the last table entry “0x27” corresponds to the table entry “ari_lookup_m[741]” having table index 741.
It should also be noted that the entries of the table “ari_lookup_m[ ]” are associated with intervals defined by adjacent entries of the table “arith_hash_m[ ]”. Thus, the entries of the table “ari_lookup_m” describe mapping rule index values associated with intervals of numeric context values, wherein the intervals are defined by the entries of the table “arith_hash_m”.
12.3. Table “ari_cf_m[64][17]” According to FIGS. 23(1), 23(2) and 23(3)
As can be seen from FIGS. 23(1) to 23(3), each sub-block or line represents a cumulative-frequencies-table having 17 entries. For example, a first sub-block or line 2310 represents the 17 entries of a cumulative-frequencies-table for “pki=0”. A second sub-block or line 2312 represents the 17 entries of a cumulative-frequencies-table for “pki=1”. Finally, a 64th sub-block or line 2364 represents the 17 entries of a cumulative-frequencies-table for “pki=63”. Thus, FIGS. 23(1) to 23(3) effectively represent 64 different cumulative-frequencies-tables (or sub-tables) for “pki=0” to “pki=95”, wherein each of the 64 cumulative-frequencies-tables is represented by a sub-block (enclosed by curled brackets) or line, and wherein each of said cumulative-frequencies-tables comprises 17 entries.
Within a sub-block or line (e.g. a sub-block or line 2310 or 2312, or a sub-block or line 2396), a first value (for example, a first value 708 of the first sub-block 2310) describes a first entry of the cumulative-frequencies-table (having an array index or table index of 0) represented by the sub-block or line, and a last value (for example, a last value 0 of the first sub-block or line 2310) describes a last entry of the cumulative-frequencies-table (having an array index or table index of 16) represented by the sub-block or line.
Accordingly, each sub-block or line 2310, 2312, 2364 of the table representation of
12.4 Table “ari_cf_r[ ]” According to
The four entries of said table are shown in
13. Overview, Performance Evaluation and Advantages
The embodiments according to the invention use updated functions (or algorithms) and an updated set of tables, as discussed above, in order to obtain an improved tradeoff between computational complexity, memory requirement, and coding efficiency.
Generally speaking, the embodiments according to the invention create an improved spectral noiseless coding. Embodiments according to the present invention describe an enhancement of the spectral noiseless coding in USAC (unified speech and audio encoding).
Embodiments according to the invention create an updated proposal for the CE on improved spectral noiseless coding of spectral coefficients, based on the schemes as presented in the MPEG input papers m16912 and m17002. Both proposals were evaluated, potential short-comings eliminated and the strengths combined. In addition embodiments of the invention comprise an update of noiseless spectral coding tables for application in a current USAC specification.
13.1. Overview
In the following, a short overview will be given. In the course of the ongoing standardization of USAC (Unified Speech and Audio Coding), an enhanced spectral noiseless coding scheme (aka entropy coding scheme) in USAC was proposed. This enhanced spectral noiseless coding scheme helps to more efficiently code quantized spectral coefficients in a lossless manner. Therefore, spectral coefficients are mapped to corresponding code-words of variable length. This entropy coding scheme is based on a context based arithmetic coding scheme: The context (i.e. neighboring spectral coefficients) of a spectral coefficient determines a probability distribution (cumulative frequency table), which is used for arithmetic coding of the spectral coefficient.
Embodiments according to the present invention use an updated set of tables for the spectral coding scheme, as previously proposed in the context of USAC. To give the background, it should be noted that the conventional spectral noiseless coding technology consists firstly of an algorithm and secondly of a set of trained tables (or, at least, comprises an algorithm and a set of trained tables). This conventional set of trained tables is based upon USAC WD4 bitstreams. Since USAC has now progressed to WD7, and significant changes have been applied to the USAC specification in the meantime, a new set of re-trained tables is used in embodiments according to the invention, which is based on the most recent USAC version WD7. The algorithm itself remains unchanged. As a side effect, the retrained tables provide compression performance better than any of the previously presented schemes.
According to the present invention, it is proposed to replace the conventional trained tables by the re-trained tables as presented here, which results in an increased coding performance.
13.2. Introduction
In the following, an introduction will be provided.
For the USAC work item, several proposals on updating the noiseless coding scheme were brought forward during the last meetings in a collaborative fashion. However, this work was basically initiated at the 89th meeting. Since then it has been common practice for all proposals on spectral coefficient coding to show performance results based on USAC WD 4 reference quality bitstreams and training upon a WD 4 training database.
In the meantime, great improvements to other fields of USAC, in particular to stereo processing and windowing, have been incorporated into the USAC specification as of today. It was found that these improvements also slightly affect the statistics for the spectral noiseless coding. The results shown for the noiseless coding CEs can therefore be regarded as suboptimal, since they do not correspond to the latest WD revision.
Accordingly, spectral noiseless coding tables are suggested which are better adapted to the updated algorithms and to the statistics of the spectral values to be encoded and decoded.
13.3. Short Description of Algorithm
In the following, a short description of the algorithm will be provided.
To overcome the issue of memory footprint and the computational complexity, an improved noiseless coding scheme was proposed to replace the scheme as in working draft 6/7 (WD6/7). The main focus in the development was put on reducing memory demand while maintaining the compression efficiency and not increasing the computational complexity. More specifically the target was to reach the best tradeoff in the multi-dimension complexity space of compression performance, complexity and memory requirements.
The proposed coding scheme proposal borrows the main feature of the WD6/7 noiseless coder, namely the context adaptation. The context is derived using previously decoded spectral coefficients, which come as in WD6/7 from both the past and the present frame. However, the spectral coefficients are now coded by combining 2 coefficients together for forming a 2-tuple. Another difference lays in the fact that the spectral coefficients are now split in three parts, the sign, the MSBs and the LSBs. The sign is coded independently from the magnitude which is further divided in two parts, the two most significant bits and the rest of bits if they exist. The 2-tuples for which the magnitude of the two elements is lower or equal to 3 are coded directly by the MSBs coding. Otherwise, an escape codeword is transmitted first for signaling any additional bit plane. In the base version, the missing information, the LSBs and the sign are both coded using uniform probability distribution.
The table size reduction is still possible since:
In the following, a MSBs coding will be described.
As already mentioned, the main difference between WD6/7, previous proposals and the current proposal, is the dimension of the symbols. In WD6/7 4-tuples were considered for the context generation and the noiseless coding. In previous submissions, 1-tuples were used instead for reducing the ROM requirements. In the course of our development, the 2-tuples were found to be the best compromise for reducing the ROM requirements without increasing the computational complexity. Instead of considering four 4-tuples for the context derivation, now four 2-tuples are considered. As shown in
The table size reduction is due to three main factors. First, only probabilities for 17 symbols need to be stored (i.e. {[0;+3], [0;+3]}+ESC symbol). Grouping tables (i.e. egroups, dgroups, dgvectors) are not needed anymore. Moreover, the size of the hash-table was reduced by performing an appropriate training.
Although the dimension was reduced from 4 to 2, the complexity was maintained to the range as in the WD6/7. It was achieved by simplifying both the context generation and the hash table access.
The different simplifications and optimizations were done in a way that the coding performance was not affected and even slightly improved.
13.3.2 LSBs Coding
The LSBs are coded with a uniform probability distribution. Compared to WD6/7, the LSBs are now considered within 2-tuples instead of 4 t-tuples. However, different coding of the least significant bits is possible.
13.3.3 Sign Coding
The sign is coded without using the arithmetic core-coder for the sake of complexity reduction. The sign is transmitted on 1 bit only when the corresponding magnitude is non-null. 0 means a positive value and 1a negative value.
13.4. Proposed Update of Tables
This contribution provides an updated set of tables for the USAC spectral noiseless coding scheme. The tables were re-trained based on the current USAC WD6/7 bitstreams. Apart from the actual tables, which result from a training process, the algorithm remains unchanged.
To investigate the effect of the re-training, coding efficiency and memory requirement of the new tables is compared against the previous proposal (M17558) and the WD6. WD6 is selected as a reference point since a) results at the 92nd meeting were given with respect to this reference and b) the differences between WD6 and WD7 are only very minor (bugfixes only, with no effect on entropy coding or distribution of spectral coefficients).
13.4.1 Coding Efficiency
Firstly, the coding efficiency of the proposed new set of tables is compared against USAC WD6 and the CE as proposed in M17558. As can be seen in the table representation of
It should be noted that a lossless transcoding of all WD6 reference quality bitstreams was proven to be possible without violating the bit reservoir constraints. More detailed results will be given in section 13.6.
13.4.2 Memory Demand and Complexity
Secondly, memory demand and complexity are compared against USAC WD6 and the CE as proposed in M17558. The table of
In term of complexity, the newly proposed schemes' computational complexity was compared against an optimized version of the current noiseless in USAC. It was found by a “pen and paper” method and by instructing the code that the new coding scheme has the same order of complexity as the current scheme. As reported in the table of
13.5. Conclusion
In the following, some conclusions will be provided.
A new set of tables for the USAC spectral noiseless coding scheme was presented. In contrast to the previous proposal, which is the result of a training based upon older bitstreams, the proposed new tables are now trained on current USAC WD bitstreams, wherein an advanced training concept has been used. By this re-training, the coding efficiency on current USAC bitstreams could be improved, without sacrificing the low memory demand or increasing the complexity compared to previous proposals. Compared to the USAC WD6, the memory demand could be significantly reduced.
13.6. Detailed Information on the Transcoding of WD6 Bitstreams
Detailed information on the transcoding of Working draft 6 (WD6) bitstreams can be seen in the table representations of
14. Changes when Compared to the Working Draft 6 or Working Draft 7
In the following, changes of the noiseless coding when compared to a conventional noiseless coding will be described. Accordingly, an embodiment is defined in terms of modifications when compared to the working draft 6 or working draft 7 of the USAC draft standard.
In particular, Changes to WD text will be described. In other words, this section lists the complete set of changes against the USAC specification WD7.
14.1. Changes to the Technical Description
The proposed new noiseless coding engenders the modifications in the MPEG USAC WD which will be described in the following. The main differences are marked.
14.1.1. Changes of the Syntax and the Payload
In the following, changes with respect to the Payloads of the spectral noiseless coder will be described.
Spectral coefficients from both the “linear prediction-domain” coded signal and the “frequency-domain” coded signal are scalar quantized and then noiselessly coded by an adaptively context dependent arithmetic coding. The quantized coefficients are gathered together in 2-tuples before being transmitted from the lowest-frequency to the highest-frequency. It should be noted that the usage of 2-tuples constitutes a change when compared to previous versions of the spectral noiseless coding.
However, it is a further change that each 2-tuple is split into the sign s, the most significant 2 bits-wise plane, m, and the remaining less significant bit-planes, r. Also, it is a change that the value m is coded according to the coefficient's neighborhood, and that the remaining less significant bit-planes, r, are entropy coded without considering the context. Also, it is a change with respect to some of the previous versions that the values m and r form the symbols of the arithmetic coder. Finally, it is a change with respect to some of the previous versions that the signs s are coded outside the arithmetic coder using 1 bit per non-null quantized coefficient.
A detailed arithmetic decoding procedure is described below in section 14.2.3.
14.1.2 Changes of the Definitions and Help Elements
Changes to the definitions and help elements are shown in the representation of definitions and help elements in
14.2 Spectral Noiseless Coding
In the following, the spectral noiseless coding according to an embodiment will be summarized.
14.2.1 Tool Description
Spectral noiseless coding is used to further reduce the redundancy of the quantized spectrum.
The spectral noiseless coding scheme is based on an arithmetic coding in conjunction with a dynamically adapted context. The noiseless coding is fed by the quantized spectral values and uses context dependent cumulative frequencies tables derived from four previously decoded neighboring. Here, neighborhood in both, time and frequency is taken into account, as illustrated in
The arithmetic coder produces a binary code for a given set of symbols and their respective probabilities. The binary code is generated by mapping a probability interval, where the set of symbols lies, to a codeword.
14.2.2 Definitions
Definitions and help elements are described in
14.2.3 Decoding Process
The quantized spectral coefficients qdec are noiselessly decoded starting from the lowest-frequency coefficient and progressing to the highest-frequency coefficient. They are decoded by groups of two successive coefficients a and b gathering in a so-called 2-tuple {a,b}.
The decoded coefficients for AAC are then stored in the array x_ac_quant[g][win][sfb][bin]. The order of transmission of the noiseless coding codewords is such that when they are decoded in the order received and stored in the array, bin is the most rapidly incrementing index and g is the most slowly incrementing index. Within a codeword the order of decoding is a and then b.
The decoded coefficients for the TCX are stored in the array x_tcx_invquant[win][bin], and the order of the transmission of the noiseless coding codewords is such that when they are decoded in the order received and stored in the array, bin is the most rapidly incrementing index and win is the most slowly incrementing index. Within a codeword the order of decoding is a and then b.
The decoding process starts with an initialization phase where a mapping is done between the saved past context stored in qs and the context of the current frame q. The past context qs is stored on 2 bits per frequency line.
For details, reference is mad to the pseudo program code representation of the algorithm “arith_map_context” in
The noiseless decoder outputs 2-tuples of unsigned quantized spectral coefficients. At first, the state c of the context is calculated based on the previously decoded spectral coefficients surrounding the 2-tuple to decode. The state is incrementally updated using the context state of the last decoded 2-tuple considering only two new 2-tuples. The state is coded on 17 bits and is returned by the function arithget_context( )
A pseudo program code representation of the function “arith_get_contextO” is shown in
Once the context state c is calculated, the most significant 2-bits wise plane m is decoded using the arith_decode( ) fed with the appropriated cumulative frequencies table corresponding to the probability model corresponding to the context state. The correspondence is made by the function arith_getpk( )
A pseudo program code representation of the function arith_get_pk( ) is shown in
The value m is decoded using the function arith_decode( ) called with the cumulative frequencies table, arith_cf_m[pki][ ], where pki corresponds to the index returned by arith_get_pk( ) The arithmetic coder is an integer implementation using the method of tag generation with scaling. The pseudo C-code shown in
When the decoded value m is the escape symbol, ARITH_ESCAPE, the variable lev and esc_nb are incremented by one and another value m is decoded. In this case, the function get_pk( ) is called once again with the value c&esc_nb<<17 as input argument, where esc_nb is the number of escape symbols previously decoded for the same 2-tuple and bounded to 7.
Once the value m is not the escape symbol, ARITH_ESCAPE, the decoder checks if the successive m form a ARITH_STOP symbol. If the condition (esc_nb>0 && m==0) is true, the ARITH_STOP symbol is detected and the decoding process is ended. The decoder jumps directly to the arith_save_context( ) function. The condition means that the rest of the frame is composed of zero values.
If the ARITH_STOP symbol is not met, the remaining bit planes are then decoded if any exists for the present 2-tuple. The remaining bit planes are decoded from the most significant to the lowest significant level by calling lev times arith_decode( ) with the cumulative frequencies table arith_cf_r[ ]. The decoded bit planes r permit to refine the previously decoded value m by the function or algorithm a pseudo program code representation of which is shown in
At this point, the unsigned value of the 2-tuple [a, b] is completely decoded. The context q is then updated for the next 2-tuple. If it is the last 2-tuple, as well. The both updates are made by the function arith_update_context( ), a pseudo program code representation of which is shown in
The next 2-tuple of the frame is then decoded by incrementing i by one and calling the function. If the lg/2 2-tuple were already decoded with the frame or if the stop symbol ARITH_STOP occurred, the function arith_save_context( ) is called. The context is saved and stored in qs for the next frame. A pseudo program code representation of the function or algorithm arith_save_context( ) is shown in
Once all unsigned quantized spectral coefficients are decoded, the sign is then added. For each non-null quantized value of qdec a bit is read. If the read bit value is equal to zero, the quantized value is positive, nothing is done and the signed value is equal to the previously decoded unsigned value. Otherwise, the decoded coefficient is negative and the two's complement is taken from the unsigned value. The sign bits are read from the low to the high frequencies.
14.2.4 Updated Tables
A set of re-trained tables for use with the algorithms described above is shown in FIGS. 41(1), 41(2), 42(1), 42(2), 42(3), 42(4), 43(1), 43(2), 43(3), 43(4), 43(5), 43(6) and 44.
FIGS. 41(1) and 41(2) show a table representation of a content of a table “ari_lookup_m[742]”, according to an embodiment of the invention;
To summarize the above, it can be seen that embodiments according to the present invention provide a particularly good trade-off between computational complexity, memory requirements and coding efficiency.
15. Bitstream Syntax
15.1 Payloads of the Spectral Noiseless Coder
In the following, some details regarding the payloads of the spectral noiseless coder will be described. In some embodiments, there is a plurality of different coding modes, such as, for example, a so-called “linear-prediction-domain” coding mode and a “frequency-domain” coding mode. In the linear-prediction-domain coding mode, a noise shaping is performed on the basis of a linear-prediction analysis of the audio signal, and a noise-shaped signal is encoded in the frequency-domain. In the frequency-domain coding mode a noise shaping is performed on the basis of a psychoacoustic analysis and a noise shaped version of the audio content is encoded in the frequency-domain.
Spectral coefficients from both the “linear-prediction-domain” coded signal and the “frequency-domain” coded signal are scalar quantized and then noiselessly coded by an adaptively context dependent arithmetic coding. The quantized coefficients are gathered together into 2-tuples before being transmitted from the lowest frequency to the highest frequency. Each 2-tuple is split into a sign s, the most significant 2-bits-wise-plane m, and the remaining one or more less-significant bit-planes r (if any). The value m is coded according to a context defined by the neighboring spectral coefficients. In other words, m is coded according to the coefficients neighborhood. The remaining less-significant bit-planes r are entropy coded without considering the context. By means of m and r, the amplitude of these spectral coefficients can be reconstructed on the decoder side. For all non-null symbols, the signs s is coded outside the arithmetic coder using 1-bit. In other words, the values m and r form the symbols of the arithmetic coder. Finally, the signs s, are coded outside of the arithmetic coder using 1-bit per non-null quantized coefficient.
A detailed arithmetic coding procedure is described herein.
15.2 Syntax Elements According to
In the following, the bitstream syntax of a bitstream carrying the arithmetically-encoded spectral information will be described taking reference to
a shows a syntax representation of so-called USAC raw data block (“usac_raw_data_block( )”).
The USAC raw data block comprises one or more single channel elements (“single_channel_element( )”) and/or one or more channel pair elements (“channel_pair_element( )”).
Taking reference now to
c shows a syntax representation of a channel pair element. A channel pair element comprises core mode information (“core_mode0”, “core_mode1”). In addition, the channel pair element may comprise a configuration information “ics_info( )”. Additionally, depending on the core mode information, the channel pair element comprises a linear-prediction-domain channel stream or a frequency-domain channel stream associated with a first of the channels, and the channel pair element also comprises a linear-prediction-domain channel stream or a frequency-domain channel stream associated with a second of the channels.
The configuration information “ics_info( )”, a syntax representation of which is shown in
A frequency-domain channel stream (“fd_channel_stream( )”), a syntax representation of which is shown in
The arithmetically-coded spectral data (“ac_spectral_data( )”), a syntax representation of which is shown in
In the following, the structure of the arithmetically encoded data-block will be described taking reference to
The context for the encoding of the current set (e.g., 2-tuple) of spectral values is determined in accordance with the context determination algorithm shown at reference numeral 660. Details with respect to the context determination algorithm have been explained above, taking reference to
If, however, one or more less-significant bit-planes may be used (in addition to the most-significant bit-plane) for a proper representation of the spectral values, this is signaled by using one or more arithmetic escape codewords (“ARITH_ESCAPE”). Thus, it can be generally said that for a spectral value, it is determined how many bit-planes (the most-significant bit-plane and, possibly, one or more additional less-significant bit-planes) may be used. If one or more less-significant bit-planes may be used, this is signaled by one or more arithmetic escape codewords “acod_m[pki][ARITH_ESCAPE]”, which are encoded in accordance with a currently selected cumulative-frequencies-table, a cumulative-frequencies-table-index of which is given by the variable “pki”. In addition, the context is adapted, as can be seen at reference numerals 664, 662, if one or more arithmetic escape codewords are included in the bitstream. Following the one or more arithmetic escape codewords, an arithmetic codeword “acod_m[pki][m]” is included in the bitstream, as shown at reference numeral 663, wherein “pki” designates the currently valid probability model index (taking the context adaptation caused by the inclusion of the arithmetic escape codewords into consideration) and wherein m designates the most-significant bit-plane value of the spectral value to be encoded or decoded (wherein m is different from the “ARITH_ESCAPE” codeword).
As discussed above, the presence of any less-significant bit-plane results in the presence of one or more codewords “acod_r[r]”, each of which represents 1 bit of a least-significant bit-plane of a first spectral value and each of which also represents 1 bit of a least-significant bit-plane of a second spectral value. The one or more codewords “acod_r[r]” are encoded in accordance with a corresponding cumulative-frequencies-table, which may, for example, be constant and context-independent. However, different mechanisms for the selection of the cumulative-frequencies-table for the decoding of the one or more codewords “acod_r_r[r]” are possible.
In addition, it should be noted that the context is updated after the encoding of each tuple of spectral values, as shown at reference numeral 668, such that the context is typically different for encoding and decoding two subsequent tuples of spectral values.
i shows a legend of definitions and help elements defining the syntax of the arithmetically encoded data-block.
Moreover, an alternative syntax of the arithmetic data “arith_data( )” is shown in
To summarize the above, a bitstream format has been described, which may be provided by the audio encoder 100 and which may be evaluated by the audio decoder 200. The bitstream of the arithmetically encoded spectral values is encoded such that it fits the decoding algorithm discussed above.
In addition, it should be generally noted that the encoding is the inverse operation of the decoding, such that it can generally be assumed that the encoder performs a table lookup using the above-discussed tables, which is approximately inverse to the table lookup performed by the decoder. Generally, it can be said that a man skilled in the art who knows the decoding algorithm and/or the desired bitstream syntax will easily be able to design an arithmetic encoder, which provides the data that is defined in the bitstream syntax and may be used by an arithmetic decoder.
Moreover, it should be noted that the mechanisms for determining the numeric current context value and for deriving a mapping rule index value may be identical in an audio encoder and an audio decoder, because it is typically desired that the audio decoder uses the same context as the audio encoder, such that the decoding is adapted to the encoding.
15.3. Syntax Elements according to
In the following, an extract from an alternative bitstream syntax will be described taking reference to
k shows a syntax representation of a bitstream element “UsacSingleChannelElement(indepFlag)”. Said syntax element “UsacSingleChannelElement(indepFlag)” comprises a syntax element “UsacCoreCoderData” describing one core coder channel.
l shows a syntax representation of a bitstream element “UsacChannelPairElement(indepFlag)”. Said syntax element “UsacChannelPairElement(indepFlag)” comprises a syntax element “UsacCoreCoderData” describing one or two core coder channels, depending on a stereo configuration.
m shows a syntax representation of a bitstream element “ics_info( )”, which comprises definitions of a number of parameters, as can be seen in
n shows a syntax representation of a bitstream element “UsacCoreCoderData( )”. The bitstream element “UsacCoreCoderData( )” comprises one or more linear-prediction-domain channel streams “lpd_channel_stream( )” and/or one or more frequency domain channel streams “fd_channel_stream( )”. Some other control information may optionally also be included in the bitstream element “UsacCoreCoderData( )”, as can be seen in
o shows a syntax representation of a bitstream element “fd_channel_stream( )”. The bitstream element “fd_channel_stream( )” comprises, among other optional bitstream elements, a bitstream element “scale_factor_data( )” and a bitstream element “ac_spectral_data( )”.
p shows a syntax representation of a bitstream element “ac_spectral_data( )”. The bitstream element “ac_spectral_data( )” optionally comprises a bitstream element “arith_reset_flag”. Moreover, the bitstream element also comprises a number of arithmetically encoded data “arith_data( )”. The arithmetically encoded data may, for example, follow the bitstream syntax described with reference to
16. Implementation Alternatives
Although some aspects have been described in the context of an apparatus, it is clear that these aspects also represent a description of the corresponding method, where a block or device corresponds to a method step or a feature of a method step. Analogously, aspects described in the context of a method step also represent a description of a corresponding block or item or feature of a corresponding apparatus. Some or all of the method steps may be executed by (or using) a hardware apparatus, like for example, a microprocessor, a programmable computer or an electronic circuit. In some embodiments, some one or more of the most important method steps may be executed by such an apparatus.
The inventive encoded audio signal can be stored on a digital storage medium or can be transmitted on a transmission medium such as a wireless transmission medium or a wired transmission medium such as the Internet.
Depending on certain implementation requirements, embodiments of the invention can be implemented in hardware or in software. The implementation can be performed using a digital storage medium, for example a floppy disk, a DVD, a Blue-Ray, a CD, a ROM, a PROM, an EPROM, an EEPROM or a FLASH memory, having electronically readable control signals stored thereon, which cooperate (or are capable of cooperating) with a programmable computer system such that the respective method is performed. Therefore, the digital storage medium may be computer readable.
Some embodiments according to the invention comprise a data carrier having electronically readable control signals, which are capable of cooperating with a programmable computer system, such that one of the methods described herein is performed.
Generally, embodiments of the present invention can be implemented as a computer program product with a program code, the program code being operative for performing one of the methods when the computer program product runs on a computer. The program code may for example be stored on a machine readable carrier.
Other embodiments comprise the computer program for performing one of the methods described herein, stored on a machine readable carrier.
In other words, an embodiment of the inventive method is, therefore, a computer program having a program code for performing one of the methods described herein, when the computer program runs on a computer.
A further embodiment of the inventive methods is, therefore, a data carrier (or a digital storage medium, or a computer-readable medium) comprising, recorded thereon, the computer program for performing one of the methods described herein. The data carrier, the digital storage medium or the recorded medium are typically tangible and/or non-transitionary.
A further embodiment of the inventive method is, therefore, a data stream or a sequence of signals representing the computer program for performing one of the methods described herein. The data stream or the sequence of signals may for example be configured to be transferred via a data communication connection, for example via the Internet.
A further embodiment comprises a processing means, for example a computer, or a programmable logic device, configured to or adapted to perform one of the methods described herein.
A further embodiment comprises a computer having installed thereon the computer program for performing one of the methods described herein.
A further embodiment according to the invention comprises an apparatus or a system configured to transfer (for example, electronically or optically) a computer program for performing one of the methods described herein to a receiver. The receiver may, for example, be a computer, a mobile device, a memory device or the like. The apparatus or system may, for example, comprise a file server for transferring the computer program to the receiver.
In some embodiments, a programmable logic device (for example a field programmable gate array) may be used to perform some or all of the functionalities of the methods described herein. In some embodiments, a field programmable gate array may cooperate with a microprocessor in order to perform one of the methods described herein. Generally, the methods are advantageously performed by any hardware apparatus.
The above described embodiments are merely illustrative for the principles of the present invention. It is understood that modifications and variations of the arrangements and the details described herein will be apparent to others skilled in the art. It is the intent, therefore, to be limited only by the scope of the impending patent claims and not by the specific details presented by way of description and explanation of the embodiments herein.
17. Conclusions
To conclude, embodiments according to the invention comprise one or more of the following aspects, wherein the aspects may be used individually or in combination.
Some other technologies, which are applied in embodiments according to the invention, are described in patent applications PCT EP2010/065725, PCT EP2010/065726, and PCT EP 2010/065727. Moreover, in some embodiments according to the invention, a stop symbol is used. Moreover, in some embodiments, only the unsigned values are considered for the context.
However, the above-mentioned International patent applications disclose aspects which are still in use in some embodiments according to the invention.
For example, an identification of a zero-region is used in some embodiments of the invention. Accordingly, a so-called “small-value-flag” is set (e.g., bit 16 of the numeric current context value c).
In some embodiments, the region-dependent context computation may be used. However, in other embodiments, a region-dependent context computation may be omitted in order to keep the complexity and the size of the tables reasonably small.
Moreover, the context hashing using a hash function is an important aspect of the invention. The context hashing may be based on the two-table concept which is described in the above-referenced non-pre-published International patent applications. However, specific adaptations of the context hashing may be used in some embodiments in order to increase the computational efficiency. Nevertheless, in some other embodiments according to the invention, the context hashing which is described in the above-referenced International patent applications may be used.
Moreover, it should be noted that the incremental context hashing is rather simple and computationally efficient. Also, the context-independence from the sign of the values, which is used in some embodiments of the invention, helps to simplify the context, thereby keeping the memory requirements reasonably low.
In some embodiments of the invention, a context derivation using the sum of two spectral values and a context limitation is used. These two aspects can be combined. Both aim to limit the context order by conveying the most meaningful information from the neighborhood.
In some embodiments, a small-value-flag is used which may be similar to an identification of a group of a plurality of zero values.
In some embodiments according to the invention, an arithmetic stop mechanism is used. The concept is similar to the usage of a symbol “end-of-block” in JPEG, which has a comparable function. However, in some embodiments of the invention, the symbol (“ARITH_STOP”) is not included explicitly in the entropy coder. Instead, a combination of already existing symbols, which could not occur previously, is used, i.e. “ESC+0”. In other words, the audio decoder is configured to detect a combination of existing symbols, which are not normally used for representing a numeric value, and to interpret the occurrence of such a combination of already existing symbols as an arithmetic stop condition.
An embodiment according to the invention uses a two-table context hashing mechanism.
To further summarize, some embodiments according to the invention may comprise one or more of the following five main aspects.
To further conclude, one aspect of embodiments according to the present invention lies in an incremental context update. Embodiments according to the invention comprise an efficient concept for the update of the context, which avoids the extensive calculations of the working draft (for example, of the working draft 5). Rather, simple shift operations and logic operations are used in some embodiments. The simple context update facilitates the computation of the context significantly.
In some embodiments, the context is independent from the sign of the values (e.g., the decoded spectral values). This independence of the context from the sign of the values brings along a reduced complexity of the context variable. This concept is based on the finding that a neglect of the sign in the context does not bring along a severe degradation of the coding efficiency.
According to an aspect of the invention, the context is derived using the sum of two spectral values. Accordingly, the memory requirements for storage of the context are significantly reduced. Accordingly, the usage of a context value, which represents the sum of two spectral values, may be considered as advantageous in some cases.
Also, the context limitation brings along a significant improvement in some cases. In addition to the derivation of the context using the sum of two spectral values, the entries of the context array “q” are limited to a maximum value of “0xF” in some embodiments, which in turn results in a limitation of the memory requirements. This limitation of the values of the context array “q” brings along some advantages.
In some embodiments, a so-called “small value flag” is used. In obtaining the context variable c (which is also designated as a numeric current context value), a flag is set if the values of some entries “q[1][i−3]” to “q[1][i−1]” are very small. Accordingly, the computation of the context can be performed with high efficiency. A particularly meaningful context value (e.g. numeric current context value) can be obtained.
In some embodiments, an arithmetic stop mechanism is used. The “ARITH_STOP” mechanism allows for an efficient stop of the arithmetic encoding or decoding if there are only zero values left. Accordingly, the coding efficiency can be improved at moderate costs in terms of complexity.
According to an aspect of the invention, a two-table context hashing mechanism is used. The mapping of the context is performed using an interval-division algorithm evaluating the table “ari_hash_m” in combination with a subsequent lookup table evaluation of the table “ari_lookup_m”. This algorithm is more efficient than the WD3 algorithm.
In the following, some additional details will be discussed.
It should be noted here that the tables “arith_hash_m[742]” and “arith_lookup_m[742]” are two distinct tables. The first is used to map a single context index (e.g. numeric context value) to a probability model index (e.g., mapping rule index value) and the second is used for mapping a group of consecutive contexts, delimited by the context indices in “arith_hash_m[ ]”, into a single probability model.
It should further be noted that table “arith_cf_m sb[64][16]” may be used as an alternative to the table “ari_cf_m[64][17]”, even though the dimensions are slightly different. “ari_cf_m[ ][ ]” and “ari_cf_msb[ ][ ]” may refer to the same table, as the 17th coefficients of the probability models are invariably zero. It is sometimes not taken into account when counting the space that may be used for storing the tables.
To summarize the above, some embodiments according to the invention provide a proposed new noiseless coding (encoding or decoding), which engenders modifications in the MPEG USAC working draft (for example, in the MPEG USAC working draft 5). Said modifications can be seen in the enclosed figures and also in the related description.
As a concluding remark, it should be noted that the prefix “ari” and the prefix “arith” in names of variables, arrays, functions, and so on, are used interchangeably.
While this invention has been described in terms of several embodiments, there are alterations, permutations, and equivalents which fall within the scope of this invention. It should also be noted that there are many alternative ways of implementing the methods and compositions of the present invention. It is therefore intended that the following appended claims be interpreted as including all such alterations, permutations and equivalents as fall within the true spirit and scope of the present invention.
This application is a continuation of copending International Application No. PCT/EP2011/062478, filed Jul. 20, 2011, which is incorporated herein by reference in its entirety, and additionally claims priority from U.S. Patent Application No. 61/365,936, filed Jul. 20, 2010, which is also incorporated herein by reference in its entirety.
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Number | Date | Country | |
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20130226594 A1 | Aug 2013 | US |
Number | Date | Country | |
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61365936 | Jul 2010 | US |
Number | Date | Country | |
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Parent | PCT/EP2011/062478 | Jul 2011 | US |
Child | 13744772 | US |