This application is a continuation of co-pending International Application No. PCT/EP02/13623, filed Dec. 02, 2002, which designated the United States and was not published in English and is incorporated herein by reference in its entirety.
1. Field of the Invention
The present invention relates to the audio coding/decoding, and in particular to scalable coding/decoding algorithms with a psychoacoustic first scaling layer and a second scaling layer including ancillary audio data for lossless decoding.
2. Description of the Related Art
Modern audio coding methods, such as MPEG Layer3 (MP3) or MPEG AAC, use transforms, such as the so-called modified discrete cosine transform (MDCT), to obtain a block-wise frequency representation of an audio signal. Such an audio coder usually obtains a stream of time-discrete audio samples. A stream of audio samples is windowed to obtain a windowed block of for example 1,024 or 2,048 windowed audio samples. For the windowing, various window functions are employed, such as a sine window, etc.
The windowed time-discrete audio samples are then converted to a spectral representation by means of a filter bank. In principle, a Fourier transform, or a variety of the Fourier transform for special reasons, such as a FFT or, as has been set forth, a MDCT, may be employed for this. The block of audio spectral values at the output of the filter bank may then be processed further depending on demand. In the above-referenced audio coders, a quantization of the audio spectral values follows, wherein the quantization stages are typically chosen so that the quantization noise introduced by the quantizing lies below the psychoacoustic masking threshold, i.e. is “masked away”. The quantization is a lossy coding. In order to obtain further data amount reduction, the quantized spectral values are then entropy coded for example by means of Huffman coding. By adding side information, such as scale factors etc., a bit stream, which may be stored or transmitted, is formed from the entropy-coded quantized spectral values by means of a bit stream multiplexer.
In the audio decoder, the bit stream is split up in coded quantized spectral values and side information by means of a bit stream de-multiplexer. The entropy-coded quantized spectral values are at first entropy decoded to obtain the quantized spectral values. The quantized spectral values are then inversely quantized to obtain decoded spectral values comprising quantization noise, which, however, lies below the psychoacoustic masking threshold and will thus be inaudible. These spectral values are then converted into a temporal representation by means of a synthesis filter bank to obtain time-discrete decoded audio samples. In the synthesis filter bank, a transform algorithm inverse to the transform algorithm has to be employed. Moreover, the windowing has to be cancelled after the frequency-time inverse or backward transform.
In order to achieve good frequency selectivity, modern audio coders typically use block overlap. Such a case is illustrated in
In the decoder, the N spectral values of the first window, as it is shown in
In means 416, designated with TDAC (time domain aliasing cancellation) in
It is to be noted that by the function of means 416, which is also referred to as add function, the windowing performed in the coder schematically illustrated by
When the window function implemented by means 402 or 404 is designated with w(k), wherein the index k represents the time index, the condition has to be met that the squared window weight w(k) added to the squared window weight w(N+k) together are 1, wherein k runs from 0 to N−1. When a sine window is used, the window weights of which follow the first half-wave of the sine function, this condition is always met, since the square of the sine and the square of the cosine for each angle together result in the value 1.
Disadvantageous in the window method with ensuing MDCT function described in
Therefore, even when no psychoacoustic coder is used, i.e. when lossless coding is to be achieved, quantization is necessary at the output of means 408 or 410 to be able to perform reasonably manageable entropy coding.
When known transforms, as they have been described on the basis of
Concepts of the former kind, i.e. in which the quantization is so finely adjusted that the resulting error due to the rounding of the floating-point numbers is negligible, are for example disclosed in the German patent DE 197 42 201 C1. Here, an audio signal is converted to its spectral representation and quantized to obtain quantized spectral values. The quantized spectral values are then inversely quantized, converted to the time domain, and compared with the original audio signal. If the error, i.e. the error between the original audio signal and the quantized/inversely quantized audio signal, lies above an error threshold, the quantizer is more finely adjusted in feedback, and the comparison is performed again. The iteration is terminated, when the error threshold is underrun. The maybe still present residual signal is coded with a time domain coder and written into a bit stream including, apart from the time-domain-coded residual signal, also coded spectral values having been quantized according to the quantizer adjustments that were present at the time of the cancellation of the iteration. It is to be noted that the quantizer does not have to be controlled from a psychoacoustic model, so that the coded spectral values are typically quantized more accurately than this would have to be due to the psychoacoustic model.
In the publication “A Design of Lossy and Lossless Scalable Audio Coding”, T. Moriya et al., Proc. ICASSP, 2000, a scalable coder is described, which includes e.g. an MPEG coder as first lossy data compression module, which has a block-wise digital signal form as input signal and generates the compressed bit stream. In an also present local decoder the coding is cancelled again, and a coded/decoded signal is generated. This signal is compared with the original input signal by subtracting the coded/decoded signal from the original input signal. The error signal is then fed to a second module, where a lossless bit conversion is used. This conversion has two steps. The first step consists in a conversion from a two's complement format to a presign-magnitude format. The second step consists in a conversion from a vertical magnitude sequence to a horizontal bit sequence in a processing block. The lossless data conversion is executed to maximize the number of zeros or to maximize the number of successive zeros in a sequence, in order to achieve an as-good-as-possible compression of the temporal error signal present as a result of digital numbers. This principle is based on a bit slice arithmetic coding (BSAC) scheme illustrated in the publication “Multi-Layer Bit Sliced Bit Rate Scalable Audio Coder”, 103rd AES Convention, Preprint No. 4520, 1997.
Disadvantageous in the above-described concepts is the fact that the data for the lossless expansion layer, i.e. the ancillary data required to achieve lossless decoding of the audio signal has to be obtained in the time domain. This means that complete decoding including a frequency/time conversion is required to obtain the coded/decoded signal in the time domain, so that by means of a sample-wise difference formation between the original audio input signal and the coded/decoded audio signal, which is lossy due to the psychoacoustic coding, the error signal is calculated. This concept is particularly disadvantageous in that in the coder generating the audio data stream both complete time/frequency conversion means, such as a filter bank or e.g. a MDCT algorithm, is required for the forward transform, and at the same time, only to generate the error signal, a complete inverse filter bank or a complete synthesis algorithm is required. The coder thus, in addition to its inherent coder functionalities, also has to contain the complete decoder functionality. If the coder is implemented in software, both storage capacities and processor capacities are required for this, leading to a coder implementation with increased expenditure.
The object of the present invention is to provide a less expensive concept, by which an audio data stream may be generated, which may be decoded in an at least almost lossless manner.
In accordance with a first aspect, the present invention provides an apparatus for coding a time-discrete audio signal to obtain coded audio data, having: a quantizer for providing a quantization block of spectral values of the time-discrete audio signal quantized using a psychoacoustic model; an inverse quantizer for inversely quantizing the quantization block and for rounding the inversely quantized spectral values to obtain a rounding block of rounded inversely quantized spectral values; a generator for generating an integer block of integer spectral values using an integer transform algorithm formed to generate the integer block of spectral values from a block of integer time-discrete samples; a combiner for forming a difference block depending on a spectral value-wise difference between the rounding block and the integer block, to obtain a difference block with difference spectral values; and a processor for processing the quantization block and the difference block to generate coded audio data including information on the quantization block and information on the difference block.
In accordance with a second aspect, the present invention provides a method of coding a time-discrete audio signal to obtain coded audio data, with the steps of: providing a quantization block of spectral values of a time-discrete audio signal quantized using a psychoacoustic model; inversely quantizing the quantization block and rounding the inversely quantized spectral values to obtain a rounding block of rounded inversely quantized spectral values; generating an integer block of integer spectral values using an integer transform algorithm formed to generate the integer block of spectral values from a block of integer time-discrete samples; forming a difference block depending on a spectral value-wise difference between the rounding block and the integer block, to obtain a difference block with difference spectral values; and processing the quantization block and the difference block to generate coded audio data including information on the quantization block and information on the difference block.
In accordance with a third aspect, the present invention provides an apparatus for decoding coded audio data having been generated from a time-discrete audio signal by providing a quantization block of spectral values of the time-discrete audio signal quantized using a psychoacoustic model, by inversely quantizing the quantization block and rounding the inversely quantized spectral values to obtain a rounding block of rounded inversely quantized spectral values, by generating of an integer block of integer spectral values using an integer transform algorithm formed to generate the integer block of spectral values from a block of integer time-discrete samples, and by forming a difference block depending on a spectral value-wise difference between the rounding block and the integer block, to obtain a difference block with difference spectral values, having: a processor for processing the coded audio data to obtain a quantization block and a difference block; an inverse quantizer for inversely quantizing and rounding the quantization block to obtain an integer inversely quantized quantization block; a combiner for spectral value-wise combining the integer quantization block and the difference block to obtain a combination block; and a generator for generating a temporal representation of the time-discrete audio signal using the combination block and using an integer transform algorithm inverse to the integer transform algorithm.
In accordance with a fourth aspect, the present invention provides a method of decoding coded audio data having been generated from a time-discrete audio signal by providing, inversely quantizing, generating, forming, and processing, with the steps of: processing the coded audio data to obtain a quantization block and a difference block; inversely quantizing the quantization block and rounding to obtain an integer inversely quantized quantization block; spectral value-wise combining the integer quantization block and the difference block to obtain a combination block; and generating a temporal representation of the time-discrete audio signal using a combination block and using an integer transform algorithm inverse to the integer transformation algorithm.
In accordance with a fifth aspect, the present invention provides a computer program with a program code for performing, when the program is executed on a computer, the method of coding a time-discrete audio signal to obtain coded audio data, with the steps of: providing a quantization block of spectral values of a time-discrete audio signal quantized using a psychoacoustic model; inversely quantizing the quantization block and rounding the inversely quantized spectral values to obtain a rounding block of rounded inversely quantized spectral values; generating an integer block of integer spectral values using an integer transform algorithm formed to generate the integer block of spectral values from a block of integer time-discrete samples; forming a difference block depending on a spectral value-wise difference between the rounding block and the integer block, to obtain a difference block with difference spectral values; and processing the quantization block and the difference block to generate coded audio data including information on the quantization block and information on the difference block.
In accordance with a sixth aspect, the present invention provides a computer program with a program code for performing, when the program is executed on a computer, the method of decoding coded audio data having been generated from a time-discrete audio signal by providing, inversely quantizing, generating, forming, and processing, with the steps of: processing the coded audio data to obtain a quantization block and a difference block; inversely quantizing the quantization block and rounding to obtain an integer inversely quantized quantization block; spectral value-wise combining the integer quantization block and the difference block to obtain a combination block; and generating a temporal representation of the time-discrete audio signal using a combination block and using an integer transform algorithm inverse to the integer transformation algorithm.
The present invention is based on the finding that the ancillary audio data enabling lossless decoding of the audio signal may be obtained by providing a block of quantized spectral values as usual and then inversely quantizing it in order to have inversely quantized spectral values, which are lossy due to the quantization by means of a psychoacoustic model. These inversely quantized spectral values are then rounded to obtain a rounding block of rounded inversely quantized spectral values. As reference for the difference formation, according to the invention, an integer transform algorithm is used, which generates an integer block of spectral values only comprising integer spectral values from a block of integer time-discrete samples. According to the invention, now the combination of the spectral values in the rounding block and in the integer block is performed spectral value-wise, i.e. in the frequency domain, so that in the coder itself no synthesis algorithm, i.e. an inverse filter bank or an inverse MDCT algorithm, etc., is required. The combination block comprising the difference spectral values only includes integer values, which may be entropy coded in some known manner, due to the integer transformation algorithm and the rounded quantization values. It is to be noted that arbitrary entropy coders may be employed for the entropy coding of the combination block, such as Huffman coders or arithmetic coders, etc.
For the coding of the quantized spectral values of the quantization block, also arbitrary coders may be employed, such as the known tools usual for modern audio coders.
It is to be noted that the inventive coding/decoding concept is compatible with modern coding tools, such as window switching, TNS, or center/side coding for multi-channel audio signals.
In a preferred embodiment of the present invention, a MDCT is employed for providing a quantization block of spectral values quantized using a psychoacoustic model. In addition, it is preferred to employ a so-called IntMDCT as integer transform algorithm.
In an alternative embodiment of the present invention, it can be done without the usual MDCT, and the IntMDCT may be used as approximation for the MDCT, namely in that the integer spectrum obtained by the integer transform algorithm is fed to a psychoacoustic quantizer to obtain quantized IntMDCT spectral values, which are then again inversely quantized and rounded to be compared with the original integer spectral values. In this case only a single transform is required, namely the IntMDCT generating integer spectral values from integer time-discrete samples.
Typically, processors work with integers, or each floating-point number may be represented as an integer. If an integer arithmetic is used in a processor, it can be done without the rounding of the inversely quantized spectral values, since due to the arithmetic of the processor rounded values, namely within the accuracy of the LSB, i.e. the least significant bit, are present anyway. In this case, completely lossless processing is achieved, i.e. processing within the accuracy of the used processor system. Alternatively, however, rounding to a rougher accuracy may be performed, in that the difference signal in the combination block is rounded to an accuracy fixed by a rounding function. Introducing rounding beyond the inherent rounding of the processor system enables flexibility in so far as to affect the “degree” of the losslessness of the coding, in order to generate an almost lossless coder in the sense of data compression.
The inventive decoder distinguishes itself by both the psychoacoustically coded audio data and the ancillary audio data being extracted from the audio data, being subjected to possibly present entropy decoding, and then being processed as follows. At first the quantization block in the decoder is inversely quantized and rounded using the same rounding function also employed in the coder, in order to be then added to the entropy-decoded ancillary audio data. In the decoder, then both a psychoacoustically compressed spectral representation of the audio signal and a lossless representation of the audio signal are present, wherein the psychoacoustically compressed spectral representation of the audio signal is to be converted to the time domain to obtain a lossy coded/decoded audio signal, whereas the lossless representation is converted in the time domain using an integer transform algorithm inverse to the integer transform algorithm to obtain a losslessly or, as it has been set forth, almost losslessly coded/decoded audio signal.
These and other objects and features of the present invention will become clear from the following description taken in conjunction with the accompanying drawings, in which:
a is a schematic block circuit diagram of a known coder with MDCT and 50 percent overlap;
b is a block circuit diagram of a known decoder for decoding the values generated by
a is a schematic illustration of a bit stream with a first scaling layer and a second scaling layer;
b is a schematic illustration of a bit stream with a first scaling layer and several further scaling layers; and
In the following, on the basis of FIGS. 5 to 7, it is gone into inventive coder circuits (
The inventive coder further includes means 58 for inversely quantizing the quantization block output from means 52 and, when another accuracy than the processor accuracy is required, a rounding function. If it has to be gone up to the accuracy of the processor system, as it has been set forth, the rounding function already is inherently contained in the inversely quantizing of the quantization block, since a processor having an integer arithmetic is incapable of providing non-integer values anyway. Means 58 thus provides a so-called rounding block including inversely quantized spectral values, which are integer, i.e. have been inherently or explicitly rounded. Both the rounding block and the integer block are fed to combining means providing a difference block with difference spectral values, using difference formation, wherein the term “difference block” is to imply that the difference spectral values are values including differences between the integer block and the rounding block.
Both the quantization block output from means 52 and the difference block output from the difference formation means 58 are fed to processing means 60 performing for example usual processing of the quantization block and also causing for example entropy coding of the difference block. Means 60 for processing outputs coded audio data at the output 52, which contains both information on the quantization block and includes information on the difference block.
In a first preferred embodiment, as shown in
In addition, it is preferred to generate the integer block with an IntMDCT 56 as integer transform algorithm.
In
In an alternative preferred embodiment, it may be done without the MDCT block 52a of
Again referring to
The output-side spectral values of means 74 may then be converted to the time domain by means of means 80 for performing an inverse modified discrete cosine transform, to obtain a lossy psychoacoustically coded and again decoded audio signal. By means of means 82 for performing an inverse integer MDCT (IntMDCT), the output signal of the combiner 78 is also converted to its temporal representation, in order to generate a losslessly coded/decoded audio signal or, when a corresponding rougher rounding has been employed, an almost losslessly coded and again decoded audio signal.
In the following, it is gone into a special preferred embodiment of the entropy coder 60b of
In a MPEG-2 AAC coder, the spectral coefficients, i.e. the quantized spectral values, are grouped into scale factor bands in the quantization block, wherein the spectral values are weighted with a gain factor derived from a corresponding scale factor associated with a scale factor band. Since in this known coder concept a non-uniform quantizer is used to quantize the weighted spectral values, the size of the residual values, i.e. the spectral values at the output of the combiner 58, does not only depend on the scale factors but also on the quantized values themselves. But since both the scale factors and the quantized spectral values are contained in the bit stream, which is generated by the means 60a of
In an audio coder according to the standard MPEG-2 AAC, window switching is used to avoid pre-echoes in transient audio signal areas. This technique is based on the possibility to select window shapes individually in each half of the MDCT window, and enables to vary the block size in successive blocks. Similarly, the integer transform algorithm in form of the IntMDCT, which is explained with reference to FIGS. 1 to 3, is executed to also use different window shapes in windowing and in the time domain aliasing section of the MDCT split-up. It is thus preferred to use the same window decisions both for the integer transform algorithm and for the transform algorithm for generating the quantization block.
In a coder according to MPEG-2 AAC, also several further coding tools exist, of which only TNS (temporal noise shaping) and center/side (CS) stereo coding are to be mentioned. In TNS coding, just like in CS coding, modification of the spectral values prior to the quantization is performed. Consequently, the difference between the IntMDCT values, i.e. the integer block, and the quantized MDCT values increases. According to the invention, the integer transform algorithm is formed to admit both TNS coding and center/side coding also of integer spectral values. The TNS technique is based on adaptive forward prediction of the MDCT values over the frequency. The same prediction filter calculated by a usual TNS module in a signal-adaptive manner is preferably also used to predict the integer spectral values, wherein, if non-integer values arise thereby, downstream rounding may be employed, in order to again generate integer values. This rounding preferably takes place after each prediction step. In the decoder, the original spectrum may again be reconstructed by employing the inverse filter and the same rounding function. Similarly, the CS coding may also be applied to IntMDCT spectral values by applying rounded Givens rotations with an angle of π/4, based on the lifting scheme. Thereby, the original IntMDCT values in the decoder may be reconstructed again.
It is to be noted that the inventive concept in its preferred embodiment with the IntMDCT as integer transform algorithm may be applied to all MDCT-based hearing-adapted audio coders. Only as an example, such coders are coders according to MPEG-4 AAC Scalable, MPEG-4 AAC Low Delay, MPEG-4 BSAC, MPEG-4 Twin VQ, Dolby AC-3 etc.
In particular, it is to be noted that the inventive concept is reversely compatible. The hearing-adapted coder or decoder is not changed, but only extended. Ancillary information for the lossless components may be transmitted in the bit stream coded in a hearing-adapted manner in a reversely compatible manner, such as in MPEG-2 AAC in the field “Ancillary Data”. The addition to the previous hearing-adapted decoder drawn in a dashed manner in
The inventive concept of the psychoacoustic coding, supplemented by lossless or almost lossless coding, is particularly suited for the generation, transmission, and decoding of scalable data streams. It is known that scalable data streams include various scaling layers, at least the lowest scaling layer of which may be transmitted and decoded independently of the higher scaling layers. Further scaling layers or enhancement layers are added to the first scaling layer or base layer in a scalable processing of data. A fully equipped coder may generate a scalable data stream having a first scaling layer and in principle having an arbitrary number of further scaling layers. An advantage of the scaling concept is that, in the case in which a broadband transmission channel is available, the scaled data stream generated by the coder may be transmitted completely, i.e. inclusive of all scaling layers, via the broadband transmission channel. If, however, only a narrowband transmission channel is present, the coded signal may yet be transmitted via the transmission channel, but only in form of the first scaling layer or a certain number of further scaling layers, wherein the certain number is smaller than the overall number of scaling layers generated by the coder. Of course, the coder, adapted to a channel to which it is connected, may already generate the base scaling layer or first scaling layer and a number of further scaling layers dependent on the channel.
On the decoder side, the scalable concept also has the advantage that it is reversely compatible. This means that a decoder that is only able to process the first scaling layer simply ignores the second and further scaling layers in the data stream and can generate a useful output signal. If, however, the decoder is a typically more modern decoder that is able to process several scaling layers from the scaled data stream, this coder may be addressed with the same data stream as a base decoder.
In the present invention, the basic scalability is that the quantization block, i.e. the output of the bit stream coder 60a, is written to a first scaling layer 81 of
If the transmission channel from the coder to the decoder is a broadband transmission channel, both scaling layers 81 and 82 may be transmitted to the decoder. If, however, the transmission channel is a narrowband transmission channel, in which only the first scaling layer “fits”, the second scaling layer may simply be removed from the data stream before the transmission, so that a decoder is only addressed with the first scaling layer.
On the decoder side a “base decoder” that is only able to process the psychoacoustically coded data may simply omit the second scaling layer 82, as far it has received it via a broadband transmission channel. If, however, the decoder is a fully equipped decoder including both a psychoacoustic decoding algorithm and an integer decoding algorithm, this fully equipped decoder may take both the first scaling layer and the second scaling layer for decoding to generate a losslessly coded and again decoded output signal.
In a preferred embodiment of the present invention, as it is schematically illustrated in
The difference spectral values output from the adder 58 are particularly well suited for further subscaling, as it is illustrated on the basis of
In a preferred embodiment of the present invention, an accuracy scaling is made in that the e.g. 16 most significant bits of a difference spectral value are taken as second scaling layer, in order to then, if desired, be entropy coded by the entropy coder 60b. A decoder using the second scaling layer obtains difference spectral values with an accuracy of 16 bits at the output side, so that the second scaling layer, together with the first scaling layer, provides a losslessly decoded audio signal in CD quality. It is known that audio samples in CD quality with a width of 16 bits are present.
If on the other hand an audio signal in studio quality is fed to the coder, i.e. an audio signal with samples, with each sample including 24 bits, the coder may further generate a third scaling layer including the last eight bits of a difference spectral value and also being entropy coded depending on demand (means 60 of
A fully equipped decoder obtaining the data stream with the first scaling layer, the second scaling layer (16 most significant bits of the difference spectral values), and the third scaling layer (8 less significant bits of a difference spectral value) may provide a losslessly coded/decoded audio signal in studio quality, i.e. with a word width of a sample of 24 bits present at the output of the decoder, using all three scaling layers.
It is to be noted that in the studio area higher word lengths of the samples are customary than in the consumer area. In the consumer area the word width is 16 bits in an audio CD, whereas in the studio area 24 bits or 20 bits are employed.
Based on the concept of the scaling in the IntMDCT area, as it has been set forth, thus all three accuracies (16 bits, 20 bits or 24 bits) or arbitrary accuracies scaled by minimally 1 bit may be scalably coded.
Here, the audio signal represented with 24 bit accuracy is represented in the integer spectral region with the aid of the inverse IntMDCT and scalably combined with a hearing-adapted MDCT-based audiocoder output signal.
The integer difference values present for the lossless representation are now not completely coded in a scaling layer, but at first with lower accuracy. Only in a further scaling layer are the residual values transmitted that necessary for the exact representation. Alternatively however, a difference spectral value could be represented entirely, i.e. with for example 24 bits, also in a further scaling layer, so that for decoding this further scaling layer the underlying scaling layer is not required. This scenario, however, altogether leads to a higher bit stream size, but when the bandwidth of the transmission channel is unproblematic may contribute to a simplification in the decoder, since in the decoder scaling layers do then no longer have to be combined, but always one scaling layer alone is sufficient for decoding.
If for example the lower eight LSB, as it is illustrated in
For the inverse transform of the values transmitted with lower accuracy into the time domain, the transmitted values are preferably scaled back to the original region, for example 24 bits, by multiplying them for example by 28. An inverse IntMDCT is then applied to the correspondingly scaled-back values.
In the inventive accuracy scaling in the frequency domain, it is further preferred to also utilize the redundancy in the LSBs. If an audio signal for example has very little energy in the upper frequency domain, this also shows in very small values in the IntMDCT spectrum, which are for example significantly smaller than values (−128, . . . , 127) possible with for example 8 bits. This shows in a compressibility of the LSB values of the IntMDCT spectrum. Furthermore, it is to be noted that in very small difference spectral values typically a number of bits from MSB to MSB-1 are equal to zero, and that then the first, leading 1 in a binarily coded difference spectral value does not occur before a bit with a significance MSB-n-1. In such a case, when a difference spectral value in the second scaling layer includes only zeros, entropy coding is particularly well suited for the further data compression.
According to a further embodiment of the present invention, for the second scaling layer 82 of
In a preferred embodiment of the present invention, the second scaling layer in
It is further to be noted that in the second scaling layer and the third scaling layer not necessarily all bits of a difference spectral value have to be coded. In a further form of the combined scalability, the second scaling layer could include bits MSB to MSB-X of the difference spectral values up to a certain cut-off frequency. A third scaling layer could then include the bits MSB to MSB-X of the difference spectral values from the first cut-off frequency to the maximum frequency. A fourth scaling layer could then include the residual bits for the difference spectral values up to the cut-off frequency. The last scaling layer could then include the residual bits of the difference spectral values for the upper frequencies. This concept will lead to a division of the tablet in
In the scalability in frequency, in a preferred embodiment of the present invention, a scalability between 48 kHz and 96 kHz sample rate is described. The 96 kHz sample signal is at first only coded half in the IntMDCT area in the lossless extension layer and transmitted. If the upper part is not transmitted in addition, it is assumed zero in the decoder. In the inverse IntMDCT (same length as in the coder), then a 96 kHz signal arises, which does not contain energy in the upper frequency domain and may thus be subsampled on 48 kHz without quality losses.
The above scaling of the difference spectral values in quadrants of
An alternative scaling is to somewhat “soften” the quadrant boundaries in
The accuracy scaling may also somewhat be softened similarly. The first scaling layer may also have spectral values with e.g. more than 16 bits, wherein the next scaling layer then still has the difference. Generally speaking, the second scaling layer thus has the difference spectral values with lower accuracy, whereas in the next scaling layer the rest, i.e. the difference between the complete spectral values and the spectral values contained in the second scaling layer, is transmitted. With this, variable accuracy reduction is achieved.
The inventive method for coding or decoding is preferably stored on a digital storage medium, such as a floppy disc, with electronically readable control signals, wherein the control signals may cooperate with a programmable computer system so that the coding and/or decoding method may be executed. In other words, a computer program product with a program code stored on a machine-readable carrier for performing the coding method and/or the decoding method is present, when the program product is executed on a computer. The inventive method may be realized in a computer program with a program code for performing the inventive methods, when the program is executed on a computer.
In the following, as an example for an integer transform algorithm, it is gone into the IntMDCT transform algorithm described in “Audio Coding Based on Integer Transforms” 111th AES convention, New York, 2001. The IntMDCT is particularly favorable, since it has the attractive properties of the MDCT, such as good spectral representation of the audio signal, critical sampling, and block overlap. A good approximation of the MDCT by an IntMDCT also enables to use only one transform algorithm in the coder shown in
For windowing the time-discrete samples, at first two time-discrete samples are selected in means 16, which together represent a vector of time-discrete samples. A time-discrete sample selected by means 16 lies in the first quarter of the window. The other time-discrete sample lies in the second quarter of the window, as it is explained in still greater detail on the basis of
A lifting matrix has the property of only comprising one element dependent on the window w and being unequal “1” or “0”.
The factorization of wavelet transforms into lifting steps is illustrated in the publication “Factoring Wavelet Transforms Into Lifting Steps”, Ingrid Daubechies and Wim Sweldens, preprint, Bell Laboratories, Ludent Technologies, 1996. In general, a lifting scheme is a simple relation between perfectly reconstructed filter pairs having the same low-pass or high-pass filter. Each pair of complementary filters may be factorized into lifting steps. This applies in particular to Givens rotations. Consider the case in which the poly-phase matrix is a Givens rotation. Then, the following applies:
Each of the three lifting matrices to the right of the equality sign has the value “1” as main diagonal elements. Furthermore, in each lifting matrix an element not on the main diagonal equals 0, and an element not on the main diagonal is dependent on the rotation angle α.
The vector is now multiplied by the third lifting matrix, i.e. the lifting matrix on the far right in the above equation, to obtain a first result vector. This is illustrated in
Preferably, means 14 is embodied as integer DCT.
The discrete cosine transform according to type 4 (DCT-IV) with a length N is given by the following equation:
The coefficients of the DCT-IV form an orthonormal N×N matrix. Each orthogonal N×N matrix may be split up into N (N−1)/2 Givens rotations, as it is explained in the publication P. P. Vaidyanathan, “Multirate Systems And Filter Banks”, Prentice Hall, Englewood Cliffs, 1993. It is to be noted that there are also further split-ups.
With reference to the classifications of the various DCT algorithms, reference is to be made to H. S. Malvar, “Signal Processing With Lapped Transforms”, Artech House, 1992. In general, the DCT algorithms differ by the kind of their basis functions. While the DCT-IV, which is preferred here, includes non-symmetrical basis functions, i.e. a cosine quarter wave, a cosine ¾ wave, a cosine {fraction (5/4)} wave, a cosine {fraction (7/4)} wave, etc., the discrete cosine transform e.g. of the type II (DCT-II) has axis-symmetrical and point-symmetrical basis functions. The 0th basis function has a DC component, the first basis function is half a cosine wave, the second basis function is a whole cosine wave, etc. Due to the fact that the DCT-II particularly takes the DC component into account, it is used in the video coding, but not in the audio coding, since in the audio coding in contrast to the video coding the DC component is irrelevant.
In the following, it is gone into how the rotation angle α of the Givens rotation depends on the window function.
A MDCT with a window length of 2N may be reduced to a discrete cosine transform of type IV with a length N. This is achieved by the TDAC operation being performed explicitly in the time domain and the DCT-IV then being applied. With a 50% overlap, the left half of the window for a block t overlaps with the right half of the preceding block, i.e. the block t-1. The overlapping part of two successive blocks t-1 and t is preprocessed in the time domain, i.e. before the transform, i.e. between the input 10 and the output 12 of
The values designated with the tilde are the values at the output 12 of
From the TDAC condition for the window function w, the following connection applies:
For certain angles αk, k=0, . . . , N/2−1, this preprocessing in the time domain may be written as Givens rotation, as it has been explained.
The angle α of the Givens rotation depends on the window function w as follows:
α=arctan [w(N/2−1−k)/w(N/2+k)] (5)
It is to be noted that arbitrary window functions w may be employed as long as they meet this TDAC condition.
In the following, on the basis of
When the first vector is processed as described above, also a second vector is selected from the samples x(N/2−1) and x(N/2), i.e. again a sample from the first quarter of the window and a sample from the second quarter of the window, and again processed by the algorithm described in
In the right half of
The output-side operation takes place by an inverse Givens rotation, i.e. such that the blocks 26, 28 or 22, 24 or 18, 20 are passed in the opposite direction. This is to be illustrated in greater detail on the basis of the second lifting matrix of equation 1. When (in the coder) the second result vector is formed by multiplication of the rounded first result vector by the second lifting matrix (means 22), the following term results:
(x,y)→(x,y+xsin α) (6)
The values x, y on the right side of equation 6 are integers. This however does not apply for the value x sin α. Here, the rounding function r has to be introduced, as it is illustrated in the following equation.
(x,y)→(x,y+r(x sin α)) (7)
This operation executes means 24.
The inverse mapping (in the decoder) is defined as follows:
(x′,y′)→(x′,y′−r(x′ sin α)) (8)
Due to the minus sign in front of the rounding operation, it becomes apparent that the integer approximation of the lifting step may be reversed, without introducing an error. The application of this approximation to each of the three lifting steps leads to an integer approximation of the Givens rotation. The rounded rotation (in the coder) may be reversed (in the decoder), without introducing an error, namely by passing the inverse rounded lifting steps in reversed order, i.e. when in decoding the algorithm of
If the rounding function r is point-symmetrical, the inversed rounded rotation is identical to the rounded rotation with the angle −α, and reads as follows:
The lifting matrices for the decoder, i.e. for the inverse Givens rotation, in this case immediately result from equation (1), by simply replacing the term “sin α” by the term “−sin α”.
In the following, on the basis of
Therefore, the usual Givens rotations are split up into lifting matrices, which are executed sequentially, wherein after each lifting matrix multiplication a rounding step is introduced such that the floating-point numbers are rounded immediately after their development such that before each multiplication of a result vector by a lifting matrix the result vector has only integers.
The output values always stay integer, it being preferred to also use integer input values. This does not represent a limitation, since any exemplary PCM samples, as they are stored on a CD, are integer number values the value range of which varies depending on bit width, i.e. depending on whether the time-discrete digital input values are 16-bit values or 24-bit values. Nevertheless, as it has been set forth, the entire process is invertible by executing the inverse rotations in reversed order. Thus, an integer approximation of the MDCT with perfect reconstruction exists, namely a lossless transform.
The transform shown provides integer output values instead of floating-point values. It provides a perfect reconstruction, so that no error is introduced when a forward and then a backward transform are executed. The transform, according to a preferred embodiment of the present invention, is a replacement for the modified discrete cosine transform. Other transform methods may, however, also be executed in an integer manner, as long as a split-up into rotations and a split-up of the rotations into lifting steps is possible.
The integer MDCT has most of the favorable properties of the MDCT. It has an overlapping structure, whereby better frequency selectivity than in non-overlapping block transforms is obtained. Due to the TDAC function, which is already taken into account when windowing prior to the transform, critical sampling is maintained so that the overall number of spectral values representing an audio signal equals the overall number of input samples.
Compared with a normal MDCT providing floating-point samples, in the described preferred integer transform, it shows that only in the spectral region in which there is little signal level the noise is increased in comparison with the normal MDCT, whereas this noise increase does not make itself felt at significant signal levels. For this, the integer processing lends itself for an efficient hardware implementation, since only multiplication steps are used, which may easily be split up into shift/add steps, which may be implemented in hardware easily and quickly. Of course, a software implementation is also possible.
The integer transform provides a good spectral representation of the audio signal and yet remains in the area of integers. When it is applied to tonal parts of an audio signal, this results in good energy concentration. With this, an efficient lossless coding scheme may be built up by simply cascading the windowing/transform illustrated in
In particular for tonal signals, entropy coding of the integer spectral values enables high coding gain. For transient parts of the signal, the coding gain is low, namely due to the flat spectrum of transient signals, i.e. due to a small number of spectral values equal to or almost 0. As it is described in J. Herre, J. D. Johnston: “Enhancing the Performance of Perceptual Audio Coders by Using Temporal Noise Shaping (TNS)” 101st AES Convention, Los Angeles, 1996, preprint 4384, this flatness may however be used by using a linear prediction in the frequency domain. An alternative is a prediction with open loop. Another alternative is the predictor with closed loop. The first alternative, i.e. the predictor with open loop, is called TNS. The quantization after the prediction leads to adaptation of the resulting quantization noise to the temporal structure of the audio signal and thus prevents pre-echoes in psychoacoustic audio coders. For lossless audio coding, the second alternative, i.e. with a predictor with closed loop, is more suited, since the prediction with closed loop allows accurate reconstruction of the input signal. When this technique is applied to a generated spectrum, a rounding step has to be performed after each step of the prediction filter in order to stay in the area of the integers. By using the inverse filter and the same rounding function, the original spectrum may accurately be produced.
In order to take advantage of the redundancy between two channels for data reduction, also center-side coding may be employed in a lossless manner, when a rounded rotation with an angle α/4 is used. In comparison with the alternative of calculating the sum and difference of the left and right channel of a stereo signal, the rounded rotations have the advantage of the energy maintenance. The use of so-called joint stereo coding techniques may be switched on or off for each band, as it is also performed in the standard MPEG AAC. Further rotation angles may also be taken into account to be able to reduce redundancy between two channels more flexibly.
While this invention has been described in terms of several preferred 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.
Number | Date | Country | Kind |
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10217297.8 | Apr 2002 | DE | national |
Number | Date | Country | |
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Parent | PCT/EP02/13623 | Dec 2002 | US |
Child | 10966780 | Oct 2004 | US |