The present invention is concerned with an audio codec supporting noise synthesis during inactive phases.
The possibility of reducing the transmission bandwidth by taking advantage of inactive periods of speech or other noise sources are known in the art. Such schemes generally use some form of detection to distinguish between inactive (or silence) and active (non-silence) phases. During inactive phases, a lower bitrate is achieved by stopping the transmission of the ordinary data stream precisely encoding the recorded signal, and only sending silence insertion description (SID) updates instead. SID updates may be transmitted in a regular interval or when changes in the background noise characteristics are detected. The SID frames may then be used at the decoding side to generate a background noise with characteristics similar to the background noise during the active phases so that the stopping of the transmission of the ordinary data stream encoding the recorded signal does not lead to an unpleasant transition from the active phase to the inactive phase at the recipient's side.
However, there is still a need for further reducing the transmission rate. An increasing number of bitrate consumers, such as an increasing number of mobile phones, and an increasing number of more or less bitrate intensive applications, such as wireless transmission broadcast, necessitate a steady reduction of the consumed bitrate.
On the other hand, the synthesized noise should closely emulate the real noise so that the synthesis is transparent for the users.
According to an embodiment, an audio encoder may have: a background noise estimator configured to determine a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal; an encoder for encoding the input audio signal into a data stream during the active phase; and a detector configured to detect an entrance of an inactive phase following the active phase based on the input signal, wherein the audio encoder is configured to encode into the data stream the parametric background noise estimate in the inactive phase, wherein the background noise estimator is configured to identify local minima in the spectral decomposition representation of the input audio signal and to estimate the spectral envelope of the background noise of the input audio signal using interpolation between the identified local minima as supporting points, or the encoder is configured to, in encoding the input audio signal, predictively code the input audio signal into linear prediction coefficients and an excitation signal, and transform code a spectral decomposition of the excitation signal, and code the linear prediction coefficients into the data stream, wherein the background noise estimator is configured to use the spectral decomposition of the excitation signal as the spectral decomposition representation of the input audio signal in determining the parametric background noise estimate.
According to another embodiment, an audio encoder may have: a background noise estimator configured to determine a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal; an encoder for encoding the input audio signal into a data stream during the active phase; and a detector configured to detect an entrance of an inactive phase following the active phase based on the input signal, wherein the audio encoder is configured to encode into the data stream the parametric background noise estimate in the inactive phase, wherein the encoder is configured to, in encoding the input audio signal, use predictive and/or transform coding to encode a lower frequency portion of the spectral decomposition representation of the input audio signal, and to use parametric coding to encode a spectral envelope of a higher frequency portion of the spectral decomposition representation of the input audio signal, wherein the encoder uses a filterbank in order to spectrally decompose the input audio signal into a set of subbands forming the lower frequency portion, and a set of subbands forming the higher frequency portion, and wherein the background noise estimator is configured to update the parametric background noise estimate in the active phase based on the lower and higher frequency portions of the spectral decomposition representation of the input audio signal.
According to another embodiment, an audio decoder for decoding a data stream so as to reconstruct therefrom an audio signal, the data stream having at least an active phase followed by an inactive phase, may have: a background noise estimator configured to determine a parametric background noise estimate based on a spectral decomposition representation of the input audio signal obtained from the data stream so that the parametric background noise estimate spectrally describes a spectral envelope a background noise of the input audio signal; a decoder configured to reconstruct the audio signal from the data stream during the active phase; a parametric random generator; and a background noise generator configured to reconstruct the audio signal during the inactive phase by controlling the parametric random generator during the inactive phase with the parametric background noise estimate, wherein the background noise estimator is configured to identify local minima in the spectral decomposition representation of the input audio signal and to estimate the spectral envelope of the background noise of the input audio signal using interpolation between the identified local minima as supporting points.
According to another embodiment, an audio encoding method may have the steps of: determining a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal; encoding the input audio signal into a data stream during the active phase; and detecting an entrance of an inactive phase following the active phase based on the input signal, and encoding into the data stream the parametric background noise estimate in the inactive phase, wherein the determining a parametric background noise estimate includes identifying local minima in the spectral decomposition representation of the input audio signal and estimating the spectral envelope of the background noise of the input audio signal using interpolation between the identified local minima as supporting points, or the encoding the input audio signal includes predictively coding the input audio signal into linear prediction coefficients and an excitation signal, and transform coding a spectral decomposition of the excitation signal, and coding the linear prediction coefficients into the data stream, wherein the determining a parametric background noise estimate includes using the spectral decomposition of the excitation signal as the spectral decomposition representation of the input audio signal in determining the parametric background noise estimate.
According to another embodiment, an audio encoding method may have the steps of: determining a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal; encoding the input audio signal into a data stream during the active phase; and detecting an entrance of an inactive phase following the active phase based on the input signal, and encoding into the data stream the parametric background noise estimate in the inactive phase, wherein the encoding the input audio signal includes using predictive and/or transform coding to encode a lower frequency portion of the spectral decomposition representation of the input audio signal, and using parametric coding to encode a spectral envelope of a higher frequency portion of the spectral decomposition representation of the input audio signal, wherein a filterbank is used in order to spectrally decompose the input audio signal into a set of subbands forming the lower frequency portion, and a set of subbands forming the higher frequency portion, and wherein the determining a parametric background noise estimate includes updating the parametric background noise estimate in the active phase based on the lower and higher frequency portions of the spectral decomposition representation of the input audio signal.
According to another embodiment, a method for decoding a data stream so as to reconstruct therefrom an audio signal, the data stream including at least an active phase followed by an inactive phase, may have the steps of: determining a parametric background noise estimate based on a spectral decomposition representation of the input audio signal obtained from the data stream so that the parametric background noise estimate spectrally describes a spectral envelope a background noise of the input audio signal; reconstructing the audio signal from the data stream during the active phase; reconstructing the audio signal during the inactive phase by controlling a parametric random generator during the inactive phase with the parametric background noise estimate wherein the determining a parametric background noise estimate includes identifying local minima in the spectral decomposition representation of the input audio signal and estimating the spectral envelope of the background noise of the input audio signal using interpolation between the identified local minima as supporting points.
Another embodiment may have a computer program having a program code for performing, when running on a computer, an audio encoding method which may have the steps of: determining a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal; encoding the input audio signal into a data stream during the active phase; and detecting an entrance of an inactive phase following the active phase based on the input signal, and encoding into the data stream the parametric background noise estimate in the inactive phase, wherein the determining a parametric background noise estimate includes identifying local minima in the spectral decomposition representation of the input audio signal and estimating the spectral envelope of the background noise of the input audio signal using interpolation between the identified local minima as supporting points, or the encoding the input audio signal includes predictively coding the input audio signal into linear prediction coefficients and an excitation signal, and transform coding a spectral decomposition of the excitation signal, and coding the linear prediction coefficients into the data stream, wherein the determining a parametric background noise estimate includes using the spectral decomposition of the excitation signal as the spectral decomposition representation of the input audio signal in determining the parametric background noise estimate.
Another embodiment may have a computer program having a program code for performing, when running on a computer, an audio encoding method which may have the steps of: determining a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal; encoding the input audio signal into a data stream during the active phase; and detecting an entrance of an inactive phase following the active phase based on the input signal, and encoding into the data stream the parametric background noise estimate in the inactive phase, wherein the encoding the input audio signal includes using predictive and/or transform coding to encode a lower frequency portion of the spectral decomposition representation of the input audio signal, and using parametric coding to encode a spectral envelope of a higher frequency portion of the spectral decomposition representation of the input audio signal, wherein a filterbank is used in order to spectrally decompose the input audio signal into a set of subbands forming the lower frequency portion, and a set of subbands forming the higher frequency portion, and wherein the determining a parametric background noise estimate includes updating the parametric background noise estimate in the active phase based on the lower and higher frequency portions of the spectral decomposition representation of the input audio signal.
Another embodiment may have a computer program having a program code for performing, when running on a computer, a method for decoding a data stream so as to reconstruct therefrom an audio signal, the data stream including at least an active phase followed by an inactive phase, which method may have the steps of: determining a parametric background noise estimate based on a spectral decomposition representation of the input audio signal obtained from the data stream so that the parametric background noise estimate spectrally describes a spectral envelope a background noise of the input audio signal; reconstructing the audio signal from the data stream during the active phase; reconstructing the audio signal during the inactive phase by controlling a parametric random generator during the inactive phase with the parametric background noise estimate wherein the determining a parametric background noise estimate includes identifying local minima in the spectral decomposition representation of the input audio signal and estimating the spectral envelope of the background noise of the input audio signal using interpolation between the identified local minima as supporting points.
In particular, it is a basic idea underlying the present invention that the spectral domain may very efficiently be used in order to parameterize the background noise thereby yielding a background noise synthesis which is more realistic and thus leads to a more transparent active to inactive phase switching. Moreover, it has been found out that parameterizing the background noise in the spectral domain enables separating noise from the useful signal and accordingly, parameterizing the background noise in the spectral domain has an advantage when combined with the aforementioned continuous update of the parametric background noise estimate during the active phases as a better separation between noise and useful signal may be achieved in the spectral domain so that no additional transition from one domain to the other is necessary when combining both advantageous aspects of the present application.
In accordance with specific embodiments valuable bitrate may be saved with maintaining the noise generation quality within inactive phases, by continuously updating the parametric background noise estimate during an active phase so that the noise generation may immediately be started with upon the entrance of an inactive phase following the active phase. For example, the continuous update may be performed at the decoding side, and there is no need to preliminarily provide the decoding side with a coded representation of the background noise during a warm-up phase immediately following the detection of the inactive phase which provision would consume valuable bitrate, since the decoding side has continuously updated the parametric background noise estimate during the active phase and is, thus, prepared at any time to immediately enter the inactive phase with an appropriate noise generation. Likewise, such a warm-up phase may be avoided if the parametric background noise estimate is done at the encoding side. Instead of preliminarily continuing with providing the decoding side with a conventionally coded representation of the background noise upon detecting the entrance of the inactive phase in order to learn the background noise and inform the decoding side after the learning phase accordingly, the encoder is able to provide the decoder with the useful parametric background noise estimate immediately upon detecting the entrance of the inactive phase by falling back on the parametric background noise estimate continuously updated during the past active phase thereby avoiding the bitrate consuming preliminary further prosecution of supererogatorily encoding the background noise.
Embodiments of the present invention will be detailed subsequently referring to the appended drawings, in which:
The encoder 14 encodes the input audio signal into a data stream 30 during an active phase 24 and the detector 16 is configured to detect an entrance 34 of an inactive phase 28 following the active phase 24 based on the input signal. The portion of data stream 30 output by encoding engine 14 is denoted 44.
The background noise estimator 12 is configured to determine a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal. The determination may be commenced upon entering the inactive phase 38, i.e. immediately following the time instant 34 at which detector 16 detects the inactivity. In that case, normal portion 44 of data stream 30 would slightly extend into the inactive phase, i.e. it would last for another brief period sufficient for background noise estimator 12 to learn/estimate the background noise from the input signal which would be, then, be assumed to be solely composed of background noise.
However, the embodiments described below take another line. According to alternative embodiments described further below, the determination may continuously be performed during the active phases to update the estimate for immediate use upon entering the inactive phase.
In any case, the audio encoder 10 is configured to encode into the data stream 30 the parametric background noise estimate during the inactive phase 28 such as by use of SID frames 32 and 38.
Thus, although many of the subsequently explained embodiments refer to cases where the noise estimate is continuously performed during the active phases so as to be able to immediately commence noise synthesis this is not necessarily the case and the implementation could be different therefrom. Generally, all the details presented in these advantageous embodiments shall be understood to also explain or disclose embodiments where the respective noise estimate is done in upon detecting the noise estimate, for example.
Thus, the background noise estimator 12 may be configured to continuously update the parametric background noise estimate during the active phase 24 based on the input audio signal entering the audio encoder 10 at input 18. Although
The encoding engine 14 is configured to encode the input audio signal arriving at input 18 into a data stream during the active phase 24. The active phase shall encompass all times where a useful information is contained within the audio signal such as speech or other useful sound of a noise source. On the other hand, sounds with an almost time-invariant characteristic such as a time-invariance spectrum as caused, for example, by rain or traffic in the background of a speaker, shall be classified as background noise and whenever merely this background noise is present, the respective time period shall be classified as an inactive phase 28. The detector 16 is responsible for detecting the entrance of an inactive phase 28 following the active phase 24 based on the input audio signal at input 18. In other words, the detector 16 distinguishes between two phases, namely active phase and inactive phase wherein the detector 16 decides as to which phase is currently present. The detector 16 informs encoding engine 14 about the currently present phase and as already mentioned, encoding engine 14 performs the encoding of the input audio signal into the data stream during the active phases 24. Detector 16 controls switch 22 accordingly so that the data stream output by encoding engine 14 is output at output 20. During inactive phases, the encoding engine 14 may stop encoding the input audio signal. At least, the data stream outputted at output 20 is no longer fed by any data stream possibly output by the encoding engine 14. In addition to that, the encoding engine 14 may only perform minimum processing to support the estimator 12 with some state variable updates. This action will greatly reduce the computational power. Switch 22 is, for example, set such that the output of estimator 12 is connected to output 20 instead of the encoding engine's output. This way, valuable transmission bitrate for transmitting the bitstream output at output 20 is reduced.
In case of the background noise estimator 12 being configured to continuously update the parametric background noise estimate during the active phase 24 based on the input audio signal 18 as already mentioned above, estimator 12 is able to insert into the data stream 30 output at output 20 the parametric background noise estimate as continuously updated during the active phase 24 immediately following the transition from the active phase 24 to the inactive phase 28, i.e. immediately upon the entrance into the inactive phase 28. Background noise estimator 12 may, for example, insert a silence insertion descriptor frame 32 into the data stream 30 immediately following the end of the active phase 24 and immediately following the time instant 34 at which the detector 16 detected the entrance of the inactive phase 28. In other words, there is no time gap between the detectors detection of the entrance of the inactive phase 28 and the insertion of the SID 32 that may be used due to the background noise estimator's continuous update of the parametric background noise estimate during the active phase 24.
Thus, summarizing the above description the audio encoder 10 of
The background noise estimator 12 continuously updates the parametric background noise estimate during the active phase 24. Accordingly, the background noise estimator 12 may be configured to distinguish between a noise component and a useful signal component within the input audio signal in order to determine the parametric background noise estimate merely from the noise component. The background noise estimator 12 performs this updating in a spectral domain such as a spectral domain also used for transform coding within encoding engine 14. Moreover, the background noise estimator 12 may perform the updating based on an excitation or residual signal obtained as an intermediate result within encoding engine 14 during, for example, transform coding a LPC-based filtered version of the input signal rather than the audio signal as entering input 18 or as lossy coded into the data stream. By doing so, a large amount of the useful signal component within the input audio signal would already have been removed so that the detection of the noise component is easier for the background noise estimator 12. As the spectral domain, a lapped transform domain such as an MDCT domain, or a filterbank domain such as a complex valued filterbank domain such as an QMF domain may be used.
During the active phase 24, detector 16 is also continuously running to detect an entrance of the inactive phase 28. The detector 16 may be embodied as a voice/sound activity detector (VAD/SAD) or some other means which decides whether a useful signal component is currently present within the input audio signal or not. A base criterion for detector 16 in order to decide whether an active phase 24 continues could be checking whether a low-pass filtered power of the input audio signal remains below a certain threshold, assuming that an inactive phase is entered as soon as the threshold is exceeded.
Independent from the exact way the detector 16 performs the detection of the entrance of the inactive phase 28 following the active phase 24, the detector 16 immediately informs the other entities 12, 14 and 22 of the entrance of the inactive phase 28. In case of the background noise estimator's continuous update of the parametric background noise estimate during the active phase 24, the data stream 30 output at output 20 may be immediately prevented from being further fed from encoding engine 14. Rather, the background noise estimator 12 would, immediately upon being informed of the entrance of the inactive phase 28, insert into the data stream 30 the information on the last update of the parametric background noise estimate in the form of the SID frame 32. That is, SID frame 32 could immediately follow the last frame of encoding engine which encodes the frame of the audio signal concerning the time interval within which the detector 16 detected the inactive phase entrance.
Normally, the background noise does not change very often. In most cases, the background noise tends to be something invariant in time. Accordingly, after the background noise estimator 12 inserted SID frame 32 immediately after the detector 16 detecting the beginning of the inactive phase 28, any data stream transmission may be interrupted so that in this interruption phase 34, the data stream 30 does not consume any bitrate or merely a minimum bitrate that may be used for some transmission purposes. In order to maintain a minimum bitrate, background noise estimator 12 may intermittently repeat the output of SID 32.
However, despite the tendency of background noise to not change in time, it nevertheless may happen that the background noise changes. For example, imagine a mobile phone user leaving the car so that the background noise changes from motor noise to traffic noise outside the car during the user phoning. In order to track such changes of the background noise, the background noise estimator 12 may be configured to continuously survey the background noise even during the inactive phase 28. Whenever the background noise estimator 12 determines that the parametric background noise estimate changes by an amount which exceeds some threshold, background estimator 12 may insert an updated version of parametric background noise estimate into the data stream 20 via another SID 38, whereinafter another interruption phase 40 may follow until, for example, another active phase 42 starts as detected by detector 16 and so forth. Naturally, SID frames revealing the currently updated parametric background noise estimate may alternatively or additionally interspersed within the inactive phases in an intermediate manner independent from changes in the parametric background noise estimate.
Obviously, the data stream 44 output by encoding engine 14 and indicated in
Moreover, in case of the background noise estimator 12 being able to immediately start with proceeding to further feed the data stream 30 by the above optional continuous estimate update, it is not necessary to preliminarily continue transmitting the data stream 44 of encoding engine 14 beyond the inactive phase detection point in time 34, thereby further reducing the overall consumed bitrate.
As will be explained in more detail below with regard to more specific embodiments, the encoding engine 14 may be configured to, in encoding the input audio signal, predictively code the input audio signal into linear prediction coefficients and an excitation signal with transform coding the excitation signal and coding the linear prediction coefficients into the data stream 30 and 44, respectively. One possible implementation is shown in
Based on the linear prediction coefficients determined by the linear prediction analysis module 60, the data stream output at output 58 is fed with respective information on the LPCs, and the frequency domain noise shaper is controlled so as to spectrally shape the audio signal's spectrogram in accordance with a transfer function corresponding to the transfer function of a linear prediction analysis filter determined by the linear prediction coefficients output by module 60. A quantization of the LPCs for transmitting them in the data stream may be performed in the LSP/LSF domain and using interpolation so as to reduce the transmission rate compared to the analysis rate in the analyzer 60. Further, the LPC to spectral weighting conversion performed in the FDNS may involve applying a ODFT onto the LPCs and applying the resulting weighting values onto the transformer's spectra as divisor.
Quantizer 54 then quantizes the transform coefficients of the spectrally formed (flattened) spectrogram. For example, the transformer 50 uses a lapped transform such as an MDCT in order to transfer the audio signal from time domain to spectral domain, thereby obtaining consecutive transforms corresponding to overlapping windowed portions of the input audio signal which are then spectrally formed by the frequency domain noise shaper 52 by weighting these transforms in accordance with the LP analysis filter's transfer function.
The shaped spectrogram may be interpreted as an excitation signal and as it is illustrated by dashed arrow 62, the background noise estimator 12 may be configured to update the parametric background noise estimate using this excitation signal. Alternatively, as indicated by dashed arrow 64, the background noise estimator 12 may use the lapped transform representation as output by transformer 50 as a basis for the update directly, i.e. without the frequency domain noise shaping by noise shaper 52.
Further details regarding possible implementation of the elements shown in
Before, however, describing these more detailed embodiments, reference is made to
The audio decoder 80 of
The background noise estimator 90 is configured to determine a parametric background noise estimate based on a spectral decomposition representation of the input audio signal obtained from the data stream so that the parametric background noise estimate spectrally describes the spectral envelope of background noise of the input audio signal. The parametric random generator 94 and the background noise generator 96 are configured to reconstruct the audio signal during the inactive phase by controlling the parametric random generator during the inactive phase with the parametric background noise estimate.
However, as indicated by dashed lines in
If, however, estimator 90 is present, decoder 80 of
The background noise estimator 90 may not be connected to input 82 directly but via the decoding engine 92 as illustrated by dashed line 100 so as to obtain from the decoding engine 92 some reconstructed version of the audio signal. In principle, the background noise estimator 90 may be configured to operate very similar to the background noise estimator 12, besides the fact that the background noise estimator 90 has merely access to the reconstructible version of the audio signal, i.e. including the loss caused by quantization at the encoding side.
The parametric random generator 94 may comprise one or more true or pseudo random number generators, the sequence of values output by which may conform to a statistical distribution which may be parametrically set via the background noise generator 96.
The background noise generator 96 is configured to synthesize the audio signal 98 during the inactive phase 88 by controlling the parametric random generator 94 during the inactive phase 88 depending on the parametric background noise estimate as obtained from the background noise estimator 90. Although both entities 96 and 94 are shown to be serially connected, the serial connection should not be interpreted as being limiting. The generators 96 and 94 could be interlinked. In fact, generator 94 could be interpreted to be part of generator 96.
Thus, in accordance with an advantageous implementation of
In any case, the entrance of the inactive phase 88 occurs very suddenly, but this is not a problem since the background noise estimator 90 has continuously updated the parametric background noise estimate during the active phase 86 on the basis of the data stream portion 102. Due to this, the background noise estimator 90 is able to provide the background noise generator 96 with the newest version of the parametric background noise estimate as soon as the inactive phase 88 starts at 106. Accordingly, from time instant 106 on, decoding engine 92 stops outputting any audio signal reconstruction as the decoding engine 92 is not further fed with a data stream portion 102, but the parametric random generator 94 is controlled by the background noise generator 96 in accordance with a parametric background noise estimate such that an emulation of the background noise may be output at output 84 immediately following time instant 106 so as to gaplessly follow the reconstructed audio signal as output by decoding engine 92 up to time instant 106. Cross-fading may be used to transit from the last reconstructed frame of the active phase as output by engine 92 to the background noise as determined by the recently updated version of the parametric background noise estimate.
As the background noise estimator 90 is configured to continuously update the parametric background noise estimate from the data stream 104 during the active phase 86, same may be configured to distinguish between a noise component and a useful signal component within the version of the audio signal as reconstructed from the data stream 104 in the active phase 86 and to determine the parametric background noise estimate merely from the noise component rather than the useful signal component. The way the background noise estimator 90 performs this distinguishing/separation corresponds to the way outlined above with respect to the background noise estimator 12. For example, the excitation or residual signal internally reconstructed from the data stream 104 within decoding engine 92 may be used.
Similar to
With regard to
In accordance with
In the case of transmitting zero frames, i.e. during the interruption phase of the inactive phase, the detector 16 informs the background noise estimator 12, in particular the quantizer 152, to stop processing and to not send anything to the bitstream packager 154.
In accordance with
The mode of operation of the encoder of
In particular, the encoder of
In particular, the decoder of
The mode of operation and functionality of the individual modules of
In particular, the transformer 140 spectrally decomposes the input signal into a spectrogram such as by using a lapped transform. A noise estimator 146 is configured to determine noise parameters therefrom. Concurrently, the voice or sound activity detector 16 evaluates the features derived from the input signal so as to detect whether a transition from an active phase to an inactive phase or vice versa takes place. These features used by the detector 16 may be in the form of transient/onset detector, tonality measurement, and LPC residual measurement. The transient/onset detector may be used to detect attack (sudden increase of energy) or the beginning of active speech in a clean environment or denoised signal; the tonality measurement may be used to distinguish useful background noise such as siren, telephone ringing and music; LPC residual may be used to get an indication of speech presence in the signal. Based on these features, the detector 16 can roughly give an information whether the current frame can be classified for example, as speech, silence, music, or noise.
While the noise estimator 146 may be responsible for distinguishing the noise within the spectrogram from the useful signal component therein, such as proposed in [R. Martin, Noise Power Spectral Density Estimation Based on Optimal Smoothing and Minimum Statistics, 2001], parameter estimator 148 may be responsible for statistically analyzing the noise components and determining parameters for each spectral component, for example, based on the noise component.
The noise estimator 146 may, for example, be configured to search for local minima in the spectrogram and the parameter estimator 148 may be configured to determine the noise statistics at these portions assuming that the minima in the spectrogram are primarily an attribute of the background noise rather than foreground sound.
As an intermediate note it is emphasized that it may also be possible to perform the estimation by noise estimator without the FDNS 142 as the minima do also occur in the non-shaped spectrum. Most of the description of
Parameter quantizer 152, in turn, may be configured to parameterize the parameters estimated by parameter estimator 148. For example, the parameters may describe a mean amplitude and a first or higher order momentum of a distribution of the spectral values within the spectrogram of the input signal as far as the noise component is concerned. In order to save bitrate, the parameters may be forwarded to the data stream for insertion into the same within SID frames in a spectral resolution lower than the spectral resolution provided by transformer 140.
The stationarity measurer 150 may be configured to derive a measure of stationarity for the noise signal. The parameter estimator 148 in turn may use the measure of stationarity so as to decide whether or not a parameter update should be initiated by sending another SID frame such as frame 38 in
Module 152 quantizes the parameters calculated by parameter estimator 148 and LP analysis 144 and signals this to the decoding side. In particular, prior to quantizing, spectral components may be grouped into groups. Such grouping may be selected in accordance with psychoacoustical aspects such as conforming to the bark scale or the like. The detector 16 informs the quantizer 152 whether the quantization is needed to be performed or not. In case of no quantization is needed, zero frames should follow.
When transferring the description onto a concrete scenario of switching from an active phase to an inactive phase, then the modules of
During an active phase, encoding engine 14 keeps on coding the audio signal via packager into bitstream. The encoding may be performed frame-wise. Each frame of the data stream may represent one time portion/interval of the audio signal. The audio encoder 14 may be configured to encode all frames using LPC coding. The audio encoder 14 may be configured to encode some frames as described with respect to
In parallel, noise estimator 146 inspects the LPC flattened (LPC analysis filtered) spectra so as to identify the minima kmin within the TCX sprectrogram represented by the sequence of these spectra. Of course, these minima may vary in time t, i.e. kmin(t). Nevertheless, the minima may form traces in the spectrogram output by FDNS 142, and thus, for each consecutive spectrum i at time ti, the minima may be associatable with the minima at the preceding and succeeding spectrum, respectively.
The parameter estimator then derives background noise estimate parameters therefrom such as, for example, a central tendency (mean average, median or the like) m and/or dispersion (standard deviation, variance or the like) d for different spectral components or bands. The derivation may involve a statistical analysis of the consecutive spectral coefficients of the spectra of the spectrogram at the minima, thereby yielding m and d for each minimum at kmin. Interpolation along the spectral dimension between the aforementioned spectrum minima may be performed so as to obtain m and d for other predetermined spectral components or bands. The spectral resolution for the derivation and/or interpolation of the central tendency (mean average) and the derivation of the dispersion (standard deviation, variance or the like) may differ.
The just mentioned parameters are continuously updated per spectrum output by FDNS 142, for example.
As soon as detector 16 detects the entrance of an inactive phase, detector 16 may inform engine 14 accordingly so that no further active frames are forwarded to packager 154. However, the quantizer 152 outputs the just-mentioned statistical noise parameters in a first SID frame within the inactive phase, instead. The first SID frame may or may not comprise an update of the LPCs. If an LPC update is present, same may be conveyed within the data stream in the SID frame 32 in the format used in portion 44, i.e. during active phase, such as using quantization in the LSF/LSP domain, or differently, such as using spectral weightings corresponding to the LPC analysis or LPC synthesis filter's transfer function such as those which would have been applied by FDNS 142 within the framework of encoding engine 14 in proceeding with an active phase.
During the inactive phase, noise estimator 146, parameter estimator 148 and stationarity measurer 150 keep on co-operating so as to keep the decoding side updated on changes in the background noise. In particular, measurer 150 checks the spectral weighting defined by the LPCs, so as to identify changes and inform the estimator 148 when an SID frame should be sent to the decoder. For example, the measurer 150 could activate estimator accordingly whenever the afore-mentioned measure of stationarity indicates a degree of fluctuation in the LPCs which exceeds a certain amount. Additionally or alternatively, estimator could be triggered to send the updated parameters an a regular basis. Between these SID update frames 40, nothing would be send in the data streams, i.e. “zero frames”.
At the decoder side, during the active phase, the decoding engine 160 assumes responsibility for reconstructing the audio signal. As soon as the inactive phase starts, the adaptive parameter random generator 164 uses the dequantized random generator parameters sent during the inactive phase within the data stream from parameter quantizer 150 to generate random spectral components, thereby forming a random spectrogram which is spectrally formed within the spectral energy processor 166 with the synthesizer 168 then performing a retransformation from the spectral domain into the time domain. For spectral formation within FDNS 166, either the most recent LPC coefficients from the most recent active frames may be used or the spectral weighting to be applied by FDNS 166 may be derived therefrom by extrapolation, or the SID frame 32 itself may convey the information. By this measure, at the beginning of the inactive phase, the FDNS 166 continues to spectrally weight the inbound spectrum in accordance with a transfer function of an LPC synthesis filter, with the LPS defining the LPC synthesis filter being derived from the active data portion 44 or SID frame 32. However, with the beginning of the inactive phase, the spectrum to be shaped by FDNS 166 is the randomly generated spectrum rather than a transform coded on as in case of TCX frame coding mode. Moreover, the spectral shaping applied at 166 is merely discontinuously updated by use of the SID frames 38. An interpolation or fading could be performed to gradually switch from one spectral shaping definition to the next during the interruption phases 36.
As shown in
Briefly referring back to
Similar to the relationship between the embodiment of
While elements 146, 148 and 150 act as the background noise estimator 90 of
Summarizing
The random generator 164 is advantageously controlled such that same models the type of noise as closely as possible. This could be accomplished if the target noise is known in advance. Some applications may allow this. In many realistic applications where a subject may encounter different types of noise, an adaptive method may be used as shown in
To make the parameter random generator adaptive, the random generator parameter estimator 146 adequately controls the random generator. Bias compensation may be included in order to compensate for the cases where the data is deemed to be statistically insufficient. This is done to generate a statistically matched model of the noise based on the past frames and it will invariably update the estimated parameters. An example is given where the random generator 164 is supposed to generate a Gaussian noise. In this case, for example, only the mean and variance parameters may be needed and a bias can be calculated and applied to those parameters. A more advanced method can handle any type of noise or distribution and the parameters are not necessarily the moments of a distribution.
For the non-stationary noise, it needs to have a stationarity measure and a less adaptive parametric random generator can then be used. The stationarity measure determined by measurer 148 can be derived from the spectral shape of the input signal using various methods like, for example, the Itakura distance measure, the Kullback-Leibler distance measure, etc.
To handle the discontinuous nature of noise updates sent through SID frames such as illustrated by 38 in
As already noted above,
Among the scenarios shown in
All of the above embodiments could be combined with bandwidth extension techniques such as spectral band replication (SBR), although bandwidth extension in general may be used.
To illustrate this, see
It should be noted that the bandwidth extension information generated in accordance with the embodiments of
Thus,
That is, the bandwidth extension coding may be performed differently in the QMF or spectral domain depending on the silence or active phase being present. In the active phase, i.e. during active frames, regular SBR encoding is carried out by the encoder 202, resulting in a normal SBR data stream which accompanies data streams 44 and 102, respectively. In inactive phases or during frames classified as SID frames, only information about the spectral envelope, represented as energy scale factors, may be extracted by application of a time/frequency grid which exhibits a very low frequency resolution, and for example the lowest possible time resolution. The resulting scale factors might be efficiently coded by encoder 212 and written to the data stream. In zero frames or during interruption phases 36, no side information may be written to the data stream by the spectral band replication encoding module 206, and therefore no energy calculation may be carried out by calculator 210.
In conformity with
As shown in
As in accordance with the embodiment of
Further, the SBR decoder 224 of
Modules 230 to 236 operate as follows. Spectral decomposer 230 spectrally decomposes the time domain input signal so as to obtain a reconstructed low frequency portion. The HF generator 232 generates a high frequency replica portion based on the reconstructed low frequency portion and the envelope adjuster 234 spectrally forms or shapes the high frequency replica using a representation of a spectral envelope of the high frequency portion as conveyed via the SBR data stream portion and provided by modules not yet discussed but shown in
As already mentioned above with respect to
Thus, at the decoder side the following processing may be carried out. In active frames or during active phases, regular spectral band replication processing may be applied. During these active periods, the scale factors from the data stream, which are typically available for a higher number of scale factor bands as compared to comfort noise generating processing, are converted to the comfort noise generating frequency resolution by the scale factor combiner 242. The scale factor combiner combines the scale factors for the higher frequency resolution to result in a number of scale factors compliant to CNG by exploiting common frequency band borders of the different frequency band tables. The resulting scale factor values at the output of the scale factor combining unit 242 are stored for the reuse in zero frames and later reproduction by restorer 252 and are subsequently used for updating the filtering unit 246 for the CNG operating mode. In SID frames, a modified SBR data stream reader is applied which extracts the scale factor information from the data stream. The remaining configuration of the SBR processing is initialized with predefined values, the time/frequency grid is initialized to the same time/frequency resolution used in the encoder. The extracted scale factors are fed into filtering unit 246, where, for example, one IIR smoothing filter interpolates the progression of the energy for one low resolution scale factor band over time. In case of zero frames, no payload is read from the bitstream and the SBR configuration including the time/frequency grid is the same as is used in SID frames. In zero frames, the smoothing filters in filtering unit 246 are fed with a scale factor value output from the scale factor combining unit 242 which have been stored in the last frame containing valid scale factor information. In case the current frame is classified as an inactive frame or SID frame, the comfort noise is generated in TCX domain and transformed back to the time domain. Subsequently, the time domain signal containing the comfort noise is fed into the QMF analysis filterbank 230 of the SBR module 224. In QMF domain, bandwidth extension of the comfort noise is performed by means of copy-up transposition within HF generator 232 and finally the spectral envelope of the artificially created high frequency part is adjusted by application of energy scale factor information in the envelope adjuster 234. These energy scale factors are obtained by the output of the filtering unit 246 and are scaled by the gain adjustment unit 248 prior to application in the envelope adjuster 234. In this gain adjustment unit 248, a gain value for scaling the scale factors is calculated and applied in order to compensate for huge energy differences at the border between the low frequency portion and the high frequency content of the signal. The embodiments described above are commonly used in the embodiments of
The audio encoder of
The spectral bandwidth extension data output by estimator 260 describe the spectral envelope of the high frequency portion of the spectrogram or spectrum output by the QMF analysis filterbank 200, which is then encoded, such as by entropy coding, by SBR encoder 264. Data stream multiplexer 266 inserts the spectral bandwidth extension data in active phases into the data stream output at an output 268 of the multiplexer 266.
Detector 270 detects whether currently an active or inactive phase is active. Based on this detection, an active frame, an SID frame or a zero frame, i.e. inactive frame, is to currently be output. In other words, module 270 decides whether an active phase or an inactive phase is active and if the inactive phase is active, whether or not an SID frame is to be output. The decisions are indicated in
SID frames (or, to be more precise, the information to be conveyed by same) are forwarded to SID encoder 274, which assumes responsibility for the functionalities of module 152 of
Multiplexer 266 multiplexes the respective encoded information into the data stream at output 268.
The audio decoder of
Thus, during active phases, the core decoder 92 reconstructs the low-frequency portion of the audio signal including both noise and useful signal components. The QMF analysis filterbank 282 spectrally decomposes the reconstructed signal and the spectral bandwidth extension module 284 uses spectral bandwidth extension information within the data stream and active frames, respectively, in order to add the high frequency portion. The noise estimator 286, if present, performs the noise estimation based on a spectrum portion as reconstructed by the core decoder, i.e. the low frequency portion. In inactive phases, the SID frames convey information parametrically describing the background noise estimate derived by the noise estimation 262 at the encoder side. The parameter updater 292 may primarily use the encoder information in order to update its parametric background noise estimate, using the information provided by the noise estimator 286 primarily as a fallback position in case of transmission loss concerning SID frames. The QMF synthesis filterbank 288 converts the spectrally decomposed signal as output by the spectral band replication module 284 in active phases and the comfort noise generated signal spectrum in the time domain. Thus,
In particular, in accordance with the embodiments of
Ideally, note that the noise estimation 262 applied at the encoder side should be able to operate during both inactive (i.e., noise-only) and active periods (typically containing noisy speech) so that the comfort noise parameters can be updated immediately at the end of each active period. In addition, noise estimation might be used at the decoder side as well. Since noise-only frames are discarded in a DTX-based coding/decoding system, the noise estimation at the decoder side is favorably able to operate on noisy speech contents. The advantage of performing the noise estimation at the decoder side, in addition to the encoder side, is that the spectral shape of the comfort noise can be updated even when the packet transmission from the encoder to the decoder fails for the first SID frame(s) following a period of activity.
The noise estimation should be able to accurately and rapidly follow variations of the background noise's spectral content and ideally it should be able to perform during both active and inactive frames, as stated above. One way to achieve these goals is to track the minima taken in each band by the power spectrum using a sliding window of finite length, as proposed in [R. Martin, Noise Power Spectral Density Estimation Based on Optimal Smoothing and Minimum Statistics, 2001]. The idea behind it is that the power of a noisy-speech spectrum frequently decays to the power of the background noise, e.g., between words or syllables. Tracking the minimum of the power spectrum provides therefore an estimate of the noise floor in each band, even during speech activity. However, these noise floors are underestimated in general. Furthermore, they do not allow to capture quick fluctuations of the spectral powers, especially sudden energy increases.
Nevertheless, the noise floor computed as described above in each band provides very useful side-information to apply a second stage of noise estimation. In fact, we can expect the power of a noisy spectrum to be close to the estimated noise floor during inactivity, whereas the spectral power will be far above the noise floor during activity. The noise floors computed separately in each band can hence be used as rough activity detectors for each band. Based on this knowledge, the background noise power can be easily estimated as a recursively smoothed version of the power spectrum as follows:
σN2(m,k)=β(m,k)·σN2(m−1,k)+(1−β(m,k))·σX2(m,k),
where σX2(m,k) denotes the power spectral density of the input signal at the frame m and band k , σN2(m,k) refers the noise power estimate, and β(m,k) is a forgetting factor (between 0 and 1) controlling the amount of smoothing for each band and each frame separately. Using the noise floor information to reflect the activity status, it should take a small value during inactive periods (i.e., when the power spectrum is close to the noise floor), whereas a high value should be chosen to apply more smoothing (ideally keeping σN2(m,k) constant) during active frames. To achieve this, a soft decision may be made by computing the forgetting factors as follows:
where σNF2 is the noise floor power and a is a control parameter. A higher value for a results in larger forgetting factors and hence causes overall more smoothing.
Thus, a Comfort Noise Generation (CNG) concept has been described where the artificial noise is produced at the decoder side in a transform domain. The above embodiments can be applied in combination with virtually any type of spectro-temporal analysis tool (i.e., a transform or filterbank) decomposing a time-domain signal into multiple spectral bands.
Again, it should be noted that the use of the spectral domain alone provides a more precise estimate of the background noise and achieves advantages without using the above possibility of continuously updating the estimate during active phases. Accordingly, some further embodiments differ from the above embodiments by not using this feature of continuous update of the parametric background noise estimate. But these alternative embodiments use the spectral domain so as to parametrically determine the noise estimate.
Accordingly, in a further embodiment, the background noise estimator 12 may be configured to determine a parametric background noise estimate based on a spectral decomposition representation of an input audio signal so that the parametric background noise estimate spectrally describes a spectral envelope of a background noise of the input audio signal. The determination may be commenced upon entering the inactive phase, or the above advantages may be co-used, and the determination may continuously performed during the active phases to update the estimate for immediate use upon entering the inactive phase. The encoder 14 encodes the input audio signal into a data stream during the active phase and a detector 16 may be configured to detect an entrance of an inactive phase following the active phase based on the input signal. The encoder may be further configured to encode into the data stream the parametric background noise estimate. The background noise estimator may be configured to perform the determining the parametric background noise estimate in the active phase and with distinguishing between a noise component and a useful signal component within the spectral decomposition representation of the input audio signal and to determine the parametric background noise estimate merely from the noise component. In another embodiment the encoder may be configured to, in encoding the input audio signal, predictively code the input audio signal into linear prediction coefficients and an excitation signal, and transform code a spectral decomposition of the excitation signal, and code the linear prediction coefficients into the data stream, wherein the background noise estimator is configured to use the spectral decomposition of the excitation signal as the spectral decomposition representation of the input audio signal in determining the parametric background noise estimate.
Further, the background noise estimator may be configured to identify local minima in the spectral representation of the excitation signal and to estimate the spectral envelope of a background noise of the input audio signal using interpolation between the identified local minima as supporting points.
In a further embodiment, an audio decoder for decoding a data stream so as to reconstruct therefrom an audio signal, the data stream comprising at least an active phase followed by an inactive phase. The audio decoder comprises a background noise estimator 90 which may be configured to determine a parametric background noise estimate based on a spectral decomposition representation of the input audio signal obtained from the data stream so that the parametric background noise estimate spectrally describes a spectral envelope a background noise of the input audio signal. A decoder 92 may be configured to reconstruct the audio signal from the data stream during the active phase. A parametric random generator 94 and a background noise generator 96 may be configured to reconstruct the audio signal during the inactive phase by controlling the parametric random generator during the inactive phase with the parametric background noise estimate.
According to another embodiment, the background noise estimator may be configured to perform the determining the parametric background noise estimate in the active phase and with distinguishing between a noise component and a useful signal component within the spectral decomposition representation of the input audio signal and to determine the parametric background noise estimate merely from the noise component.
In a further embodiment, the decoder may be configured to, in reconstructing the audio signal from the data stream, apply shaping a spectral decomposition of an excitation signal transform coded into the data stream according to linear prediction coefficients also coded into the data. The background noise estimator may be further configured to use the spectral decomposition of the excitation signal as the spectral decomposition representation of the input audio signal in determining the parametric background noise estimate.
According to a further embodiment, the background noise estimator may be configured to identify local minima in the spectral representation of the excitation signal and to estimate the spectral envelope of a background noise of the input audio signal using interpolation between the identified local minima as supporting points.
Thus, the above embodiments, inter alias, described a TCX-based CNG where a basic comfort noise generator employs random pulses to model the residual.
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.
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 Blu-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.
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/EP2012/052464, filed Feb. 14, 2012, which is incorporated herein by reference in its entirety, and additionally claims priority from U.S. Application No. 61/442,632, filed Feb. 14, 2011, which is also incorporated herein by reference in its entirety.
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Number | Date | Country | |
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Parent | PCT/EP2012/052464 | Feb 2012 | US |
Child | 13966551 | US |