WO2012077462A1 - Method for restoring spectral components attenuated in test denoised speech signal as a result of denoising test speech signal - Google Patents

Method for restoring spectral components attenuated in test denoised speech signal as a result of denoising test speech signal Download PDF

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WO2012077462A1
WO2012077462A1 PCT/JP2011/076125 JP2011076125W WO2012077462A1 WO 2012077462 A1 WO2012077462 A1 WO 2012077462A1 JP 2011076125 W JP2011076125 W JP 2011076125W WO 2012077462 A1 WO2012077462 A1 WO 2012077462A1
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bases
training
speech signal
undistorted
test
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PCT/JP2011/076125
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French (fr)
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Rita Singh
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Mitsubishi Electric Corporation
Mitsubishi Electric Research Laboratories, Inc.
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Priority to CN201180057912.7A priority Critical patent/CN103238181B/en
Priority to JP2013513311A priority patent/JP5665977B2/en
Priority to EP11785801.9A priority patent/EP2649615A1/en
Publication of WO2012077462A1 publication Critical patent/WO2012077462A1/en

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    • GPHYSICS
    • G10MUSICAL INSTRUMENTS; ACOUSTICS
    • G10LSPEECH ANALYSIS TECHNIQUES OR SPEECH SYNTHESIS; SPEECH RECOGNITION; SPEECH OR VOICE PROCESSING TECHNIQUES; SPEECH OR AUDIO CODING OR DECODING
    • G10L21/00Speech or voice signal processing techniques to produce another audible or non-audible signal, e.g. visual or tactile, in order to modify its quality or its intelligibility
    • G10L21/02Speech enhancement, e.g. noise reduction or echo cancellation
    • G10L21/0272Voice signal separating
    • GPHYSICS
    • G10MUSICAL INSTRUMENTS; ACOUSTICS
    • G10LSPEECH ANALYSIS TECHNIQUES OR SPEECH SYNTHESIS; SPEECH RECOGNITION; SPEECH OR VOICE PROCESSING TECHNIQUES; SPEECH OR AUDIO CODING OR DECODING
    • G10L21/00Speech or voice signal processing techniques to produce another audible or non-audible signal, e.g. visual or tactile, in order to modify its quality or its intelligibility
    • G10L21/02Speech enhancement, e.g. noise reduction or echo cancellation
    • G10L21/0208Noise filtering
    • GPHYSICS
    • G10MUSICAL INSTRUMENTS; ACOUSTICS
    • G10LSPEECH ANALYSIS TECHNIQUES OR SPEECH SYNTHESIS; SPEECH RECOGNITION; SPEECH OR VOICE PROCESSING TECHNIQUES; SPEECH OR AUDIO CODING OR DECODING
    • G10L21/00Speech or voice signal processing techniques to produce another audible or non-audible signal, e.g. visual or tactile, in order to modify its quality or its intelligibility
    • G10L21/02Speech enhancement, e.g. noise reduction or echo cancellation
    • G10L21/038Speech enhancement, e.g. noise reduction or echo cancellation using band spreading techniques

Definitions

  • This invention relates generally to denoised speech signals, and more particularly to restoring spectral components attenuated in the speech signals as a result of the denoising.
  • a speech signal is often acquired in a noisy environment.
  • noise negatively affects the performance of downstream processing such as coding for transmission and recognition, which are typically optimized for efficient performance on an undistorted "clean" speech signal. For this reason, it becomes necessary to denoise the signal before further processing.
  • a large number of denoising methods are known. Typically, the
  • the noise estimate is usually inexact, especially when the noise is time- varying.
  • some residual noise remains after denoising, and information carrying spectral components are attenuated.
  • the denoised, high-frequency components of fricated sounds such as IS/
  • very-low frequency components of nasals and liquids such as IMI, INI and LI are attenuated. This happens because automotive noise is dominated by high and low frequencies, and reducing the noise attenuates these spectral components in the speech signal.
  • the intelligibility of the speech often does not improve, i.e., while the denoised signal sounds undistorted, the ability to make out what was spoken is decreased.
  • the denoised signal is less intelligible than the noisy signal.
  • denoising methods subtract or filter an estimate of the noise, which is often inexact. As a result, denoising can attenuate spectral components of the speech, and reducing intelligibility.
  • a training undistorted speech signal is represented as a composition of training undistorted bases.
  • a training denoised speech is represented a composition of training distorted bases.
  • Fig. 1 is a model of a denoising process 100 according to
  • Fig. 2 is a flow diagram of a method for restoring spectral
  • Fig. 3 is a flow diagram detailing conversion of an estimated short- time Fourier transform to a time-domain signal
  • Fig. 4 is a flow diagram detailing conversion of an estimated short- time Fourier transform to a signal when bandwidth expansion is performed.
  • the embodiments of the invention provide a method for restoring spectral components attenuated in a test denoised speech signal as a result of denoising a test speech signal to enhance the intelligibility of the speech in the denoised signal.
  • the denoising is usually a "backbox."
  • the manner in which the noise is estimated, and the actual noise reduction procedure are unknown.
  • Third, the processing must restore the attenuated spectral components of the speech without reintroducing the noise into the signal.
  • the method uses a compositional characterization of the speech signal that assumes that the signal can be represented as a constructive composition of additive bases.
  • this characterization is obtained by non-negative matrix factorization(NMF), although other techniques can also be used.
  • NMF factors a matrix into matrices with non-negative elements. NMF has been used for separating mixed speech signals and denoising speech.
  • compositional models have also been used to extend the bandwidth of bandlimited signals.
  • NMF has not been used for the specific problem of restoring attenuated spectral components in a denoised speech signal.
  • the manner in which the composition of the additive bases is affected by the denoising is relatively constant, and can be obtained from training data comprising stereo pairs of training undistorted signals and training distorted speech signals.
  • the denoised signal is represented in terms of the composition of the additive bases, the attenuated spectral structures can be estimated from the undistorted versions of the bases, and subsequently restored to provide undistorted speech.
  • the embodiments of the invention model a lossy denoising process G() 100, which inappropriately attenuates spectral components of noisy speech S, as a combination of a lossless denoising mechanism F() 1 10 that attenuates the noise in the signal without
  • the noisy speech signal S is processed by an ideal "lossless" denoising function F(S) 110 to produce a hypothetical lossless denoised signal
  • the denoised signal X is passed through a distortion function D ⁇ X) 120 that attenuates the spectral components to produce a lossy signal Y.
  • the goal is to estimate the denoised signal X, given only the lossy signal Y.
  • the embodiments of the invention express the lossless signal X as a composition of weighted additive bases WjBj
  • the bases Bj are assumed to represent uncorrected building blocks that constitute the individual spectral structures that compose the denoised speech signal X.
  • the distortion function D() distorts the bases to modify the spectral structure the bases represent.
  • D(Bi ⁇ Bj '. j ⁇ ⁇ ) represents the distortion of the bases i?, given that the other bases Bj , j ⁇ ⁇ are also concurrently present. This assumption is invalid unless the bases represent non-overlapping, complete spectral structures. It is also assumed that the manner in which the bases are combined to compose the signal is not modified by the distortion. These assumptions are made to simplify the method. The implication of the above assumptions is that D X)
  • FIG. 2 shows the steps of a method 200 for restoring spectral components in a test denoised speech signal 203.
  • a training undistorted speech signal 201 is represented 210 as a composition of training
  • a training denoised speech 202 is represented 220 a composition of training distorted bases 221.
  • a corresponding test undistorted speech signal 204 can be estimated 240 as the composition of the training undistorted bases 21 1 that is identical to the composition of the training distorted bases 221.
  • the steps of the above method can be performed in a processor connected to a memory and input/output interfaces as known in the art.
  • the model described and shown in Fig. 1 is primarily a spectral model.
  • the model characterizes a composition of uncorrelated signals, which leads to a spectral characterization of all signals, because the power spectra of uncorrelated signals are additive. Therefore, all speech signals are represented as magnitude spectrograms that are obtained by determining short- time Fourier transforms (STFT) of the signals and computing the magnitude of its components. In theory, it is the power spectra that are additive. However, empirically, additivity holds better for magnitude spectra.
  • An optimal analysis frame for the STFT is 40-64 ms.
  • the speech signals are segmented by sliding a window of 64 ms over the signals to produce the frames.
  • a Fourier spectrum is computed over each frame to obtain a complex spectral vector. Its magnitude is taken to obtain a magnitude spectral vector.
  • the set of complex spectral vectors for all frames compose the complex spectrogram for the signal.
  • the magnitude spectral vectors for all frames compose the magnitude spectrogram.
  • the spectra for individual frames are represented as vectors, e.g., X(f), Y(t).
  • the bases B f as well as their distorted versions ⁇ 3 ⁇ ⁇ ⁇ re p resen t magnitude spectral vectors.
  • the magnitude spectrum of the t th analysis frame of the signal X which is represented as X ⁇ t), is assumed to be composed from the lossless bases Bf as
  • weights Wf are now all non-negative, because the signs of the weights in the model of Eqn. are incorporated into the phase of the spectra for the bases, and do not appear in the relationship between magnitude spectra of the signals and the bases.
  • the spectral restoration method estimates the lossless magnitude spectrogram X from that of the lossy signal Y.
  • the estimated magnitude spectrogram is inverted to a time-domain signal. To do so, the phase from the complex spectrogram of the lossy signal is used.
  • the lossless bases Bf 211 for the signal X and the corresponding lossy bases ] istorte d 221 for the signal Y are obtained from training data, i.e., the training undistorted speech signal 201 and the training denoised speech signal 202. After training, during operation of the method, these bases are employed to estimate the denoised signal X.
  • the joint recordings of the training signals X and 7 are needed in the training phase.
  • the signal X is not directly available, and the following approximation is used instead.
  • An undistorted (clean) training speech signals C is artificially corrupt with digitally added noise to obtain the noisy signal S. Then, the signal S is processed with the denoising process 110 to obtain the corresponding signal Y.
  • the "losslessly denoised" signal X is a hypothetical entity that also is unknown. Instead, the original undistorted clean signal C is used as a proxy for X for the signal.
  • the denoising process and the distortion function introduce a delay into the signal so that the signals for Zand C are shifted in time with respect to one another.
  • the model of Eqn. 2 assumes a one-to-one correspondence between each frame of X and the corresponding frame of Y, the recorded samples of the signals C and Fare time aligned to eliminate any relative time shifts introduced by the denoising.
  • the time shift is estimates by cross- correlating each frame of the signal C and the corresponding frame of the signal Y.
  • the bases ⁇ ⁇ are assumed to be the composing bases for the signal X.
  • the bases can be obtained by analysis of magnitude spectra of signals using NMF.
  • the distorted bases Bf " must be reliably known to actually be distortions of their undistorted counterpart bases Bj.
  • the corresponding vectors are selected from the training instances of the
  • the vector W t) is constrained to be non-negative during the estimation.
  • a variety of update rules are known for learning the weights. For speech and audio signals, it most effective to employ the update rule that minimizes the generalized Kullback-Leibler distance between Y(t) and B W ⁇ t):
  • Fig. 3 shows the overall process 300 for restoring the undistorted test signal, after weights are estimated.
  • the initial estimate shown by the numerator of Eqn. (5), is determined 301 by combining the training undistorted bases 211 according to the estimated weights 306.
  • the result is then used in the Wiener filter estimate 302.
  • the resulting STFT is combined 303 with the phase from the STFT of the denoised test signal, and finally converted to a time-domain signal 305 by performing the inverse STFT 304.
  • the recorded and denoised speech signal has a reduced bandwidth, e.g., if the speech is acquired by telephony, then the speech may only include low frequencies up to 4k Hz, and high frequencies above 4k Hz are lost.
  • the method can be extended to restore high- frequency spectral components into the signal. This is also expected to improve the intelligibility of the signal.
  • a bandwidth reconstruction procedure can be used, see U.S. Patent 7,698,143, "Constructing broad-band acoustic signals from lower-band acoustic signals," issued to amakrishnan et al. on April 13, 2010, incorporated herein by reference. That procedure is only concerned with constructing broad-band acoustic signals from lower-band acoustic signals, and not denoised speech signals, as here.
  • the training data also includes wideband signals for the training undistorted signal C.
  • the training recordings for C and Y are time aligned, and STFT analysis is performed using identical analysis frames. This ensures that in any joint recording there is a one-to-one
  • the bases 2? ⁇ stortea ⁇ 221, drawn from training instances of 7, represent reduced-bandwidth signals
  • the corresponding bases 5 211 represent wideband signals and include high-frequency components. After the signals are denoised, low-frequency components are restored using Eqn. 5, and the high-frequency components are obtained as
  • Fig. 4 shows the overall process for restoring the undistorted test signal with bandwidth expansion, after weights are estimated.
  • the initial estimate for both the low and high-frequency components shown by the numerator of Eqn. (5), is determined 401.
  • Low frequency components are updated using the Wiener filter estimate 402, while retaining high frequency estimates from step 401.
  • the resulting STFT is combined 403 with the phase from the STFT of the denoised test signal in low frequencies. Phases of low frequencies are replicated 404 to high frequencies, and finally converted to a time-domain signal by performing the inverse STFT 405.

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  • Engineering & Computer Science (AREA)
  • Computational Linguistics (AREA)
  • Quality & Reliability (AREA)
  • Signal Processing (AREA)
  • Health & Medical Sciences (AREA)
  • Audiology, Speech & Language Pathology (AREA)
  • Human Computer Interaction (AREA)
  • Physics & Mathematics (AREA)
  • Acoustics & Sound (AREA)
  • Multimedia (AREA)
  • Cable Transmission Systems, Equalization Of Radio And Reduction Of Echo (AREA)
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Abstract

Spectral components attenuated in a test denoised speech signal as a result of denoising a test speech signal are restored by representing a training undistorted speech signal as a composition of training undistorted bases, and representing a training denoised speech signal as a composition of training distorted bases. The test denoised signal decomposed as a composition of the training distorted bases. The undistorted test speech signal is then estimated as the composition of the training undistorted bases that is identical to the composition of training distorted bases.

Description

DESCRIPTION
TITLE OF INVENTION
Method for Restoring Spectral Components Attenuated in Test Denoised Speech Signal as a Result of Denoising Test Speech Signal
TECHNICAL FIELD
This invention relates generally to denoised speech signals, and more particularly to restoring spectral components attenuated in the speech signals as a result of the denoising.
BACKGROUND ART
A speech signal is often acquired in a noisy environment. In addition to reducing the perceptual quality and intelligibility of the speech, noise negatively affects the performance of downstream processing such as coding for transmission and recognition, which are typically optimized for efficient performance on an undistorted "clean" speech signal. For this reason, it becomes necessary to denoise the signal before further processing. A large number of denoising methods are known. Typically, the
conventional methods first estimate the noise, and then reduce the noise either by subtraction or filtering.
The problem is that the noise estimate is usually inexact, especially when the noise is time- varying. As a result, some residual noise remains after denoising, and information carrying spectral components are attenuated. For example, if speech is acquired in a vehicle, then the denoised, high-frequency components of fricated sounds such as IS/, and very-low frequency components of nasals and liquids, such as IMI, INI and LI are attenuated. This happens because automotive noise is dominated by high and low frequencies, and reducing the noise attenuates these spectral components in the speech signal.
Although noise reduction results in a signal with improved perceptual quality, the intelligibility of the speech often does not improve, i.e., while the denoised signal sounds undistorted, the ability to make out what was spoken is decreased. In some cases, particularly when the denoising is aggressive or when the noise is time-varying, the denoised signal is less intelligible than the noisy signal.
This problem is the result of imperfect processing. Nevertheless, it is a very real problem for a spoken-interface device that incorporates third- party denoising hardware or software. The denoising techniques are often "black boxes" that are integrated into the device, and only the denoised signal is available. In this case, it becomes important to somehow restore the spectral components of the speech information that the denoising attenuated.
SUMMARY OF INVENTION
Noise degrades speech signals, affecting the perceptual quality, intelligibility, as well as downstream processing, e.g., coding for transmission or speech recognition. Hence, noisy speech is denoised.
Typically, denoising methods subtract or filter an estimate of the noise, which is often inexact. As a result, denoising can attenuate spectral components of the speech, and reducing intelligibility.
A training undistorted speech signal is represented as a composition of training undistorted bases. A training denoised speech is represented a composition of training distorted bases. By decomposing the test denoised speech signal as a composition of the training distorted bases. Then, a corresponding test undistorted speech signal can be estimated as an identical composition of the training undistorted bases.
BRIEF DESCRIPTION OF DRAWINGS
Fig. 1 is a model of a denoising process 100 according to
embodiments of the invention;
Fig. 2 is a flow diagram of a method for restoring spectral
components in a test denoised speech signal according to embodiments of the invention;
Fig. 3 is a flow diagram detailing conversion of an estimated short- time Fourier transform to a time-domain signal; and
Fig. 4 is a flow diagram detailing conversion of an estimated short- time Fourier transform to a signal when bandwidth expansion is performed. DESCRIPTION OF EMBODIMENTS
The embodiments of the invention provide a method for restoring spectral components attenuated in a test denoised speech signal as a result of denoising a test speech signal to enhance the intelligibility of the speech in the denoised signal.
The method is constrained by practical aspects of the denoising. First, the denoising is usually a "backbox." The manner in which the noise is estimated, and the actual noise reduction procedure are unknown. Second, it is usually impossible or impractical to record the noise itself separately, and no external estimate of the noise is available to understand how the denoising has affected any spectral components of the speech. Third, the processing must restore the attenuated spectral components of the speech without reintroducing the noise into the signal.
The method uses a compositional characterization of the speech signal that assumes that the signal can be represented as a constructive composition of additive bases.
In one embodiment, this characterization is obtained by non-negative matrix factorization(NMF), although other techniques can also be used. NMF factors a matrix into matrices with non-negative elements. NMF has been used for separating mixed speech signals and denoising speech.
Compositional models have also been used to extend the bandwidth of bandlimited signals. However, as best as known, NMF has not been used for the specific problem of restoring attenuated spectral components in a denoised speech signal.
The manner in which the composition of the additive bases is affected by the denoising is relatively constant, and can be obtained from training data comprising stereo pairs of training undistorted signals and training distorted speech signals. By determining how the denoised signal is represented in terms of the composition of the additive bases, the attenuated spectral structures can be estimated from the undistorted versions of the bases, and subsequently restored to provide undistorted speech.
Denoising Model
As shown in Fig. 1, the embodiments of the invention model a lossy denoising process G() 100, which inappropriately attenuates spectral components of noisy speech S, as a combination of a lossless denoising mechanism F() 1 10 that attenuates the noise in the signal without
attenuating any speech spectral components, and a distortion function DQ 120 that modifies the losslessly denoised signal X to produce a lossy signal Y.
That is, the noisy speech signal S is processed by an ideal "lossless" denoising function F(S) 110 to produce a hypothetical lossless denoised signal Then, the denoised signal X is passed through a distortion function D{X) 120 that attenuates the spectral components to produce a lossy signal Y. The goal is to estimate the denoised signal X, given only the lossy signal Y. The embodiments of the invention express the lossless signal X as a composition of weighted additive bases WjBj
K
Figure imgf000007_0001
The bases Bj are assumed to represent uncorrected building blocks that constitute the individual spectral structures that compose the denoised speech signal X. The distortion function D() distorts the bases to modify the spectral structure the bases represent. Thus, any basis Bj is transformed by the distortion function to ]$†l!itorted =∑)(β^).
It is assumed that the distortion transforms any basis independently of other bases, i.e.,
Figure imgf000007_0002
where D(Bi \ Bj '. j≠ Ϊ) represents the distortion of the bases i?, given that the other bases Bj , j≠ ΐ are also concurrently present. This assumption is invalid unless the bases represent non-overlapping, complete spectral structures. It is also assumed that the manner in which the bases are combined to compose the signal is not modified by the distortion. These assumptions are made to simplify the method. The implication of the above assumptions is that D X)
wiBfistortsd
Figure imgf000008_0001
Eqn. 2 leads to the conclusion that if all bases B and their distorted distorted
versions Bf are known, and if the manner in which the distorted bases compose Fcan be determined, i.e., if the weights W can be estimated, then the denoised signal X can be estimated.
Restoration Method Overview
Fig. 2 shows the steps of a method 200 for restoring spectral components in a test denoised speech signal 203. A training undistorted speech signal 201 is represented 210 as a composition of training
undistorted bases 21 1. A training denoised speech 202 is represented 220 a composition of training distorted bases 221. By decomposing 230 the test denoised speech signal 203 according to the composition of the training distorted bases 221, a corresponding test undistorted speech signal 204 can be estimated 240 as the composition of the training undistorted bases 21 1 that is identical to the composition of the training distorted bases 221. The steps of the above method can be performed in a processor connected to a memory and input/output interfaces as known in the art.
Representing the signal The model described and shown in Fig. 1 is primarily a spectral model. The model characterizes a composition of uncorrelated signals, which leads to a spectral characterization of all signals, because the power spectra of uncorrelated signals are additive. Therefore, all speech signals are represented as magnitude spectrograms that are obtained by determining short- time Fourier transforms (STFT) of the signals and computing the magnitude of its components. In theory, it is the power spectra that are additive. However, empirically, additivity holds better for magnitude spectra.
An optimal analysis frame for the STFT is 40-64 ms. Hence, the speech signals are segmented by sliding a window of 64 ms over the signals to produce the frames. A Fourier spectrum is computed over each frame to obtain a complex spectral vector. Its magnitude is taken to obtain a magnitude spectral vector. The set of complex spectral vectors for all frames compose the complex spectrogram for the signal. The magnitude spectral vectors for all frames compose the magnitude spectrogram. The spectra for individual frames are represented as vectors, e.g., X(f), Y(t).
Let S, X, and represent magnitude spectrograms of the noisy speech, losslessly denoised speech and lossy denoised speech, respectively.
The bases Bf, as well as their distorted versions β^3ίο ίε^ represent magnitude spectral vectors. The magnitude spectrum of the tth analysis frame of the signal X, which is represented as X{t), is assumed to be composed from the lossless bases Bf as
Figure imgf000010_0001
and the magnitude spectrum of the corresponding frame of the lossy signal Y is
Figure imgf000010_0002
Also, the weights Wf are now all non-negative, because the signs of the weights in the model of Eqn. are incorporated into the phase of the spectra for the bases, and do not appear in the relationship between magnitude spectra of the signals and the bases.
The spectral restoration method estimates the lossless magnitude spectrogram X from that of the lossy signal Y. The estimated magnitude spectrogram is inverted to a time-domain signal. To do so, the phase from the complex spectrogram of the lossy signal is used.
Restoration Method Details
For restoration, in a training phase, the lossless bases Bf 211 for the signal X and the corresponding lossy bases ] istorted 221 for the signal Y are obtained from training data, i.e., the training undistorted speech signal 201 and the training denoised speech signal 202. After training, during operation of the method, these bases are employed to estimate the denoised signal X.
Obtaining the Bases Because the distortion function DQ 120 is unknown, the bases distorted
Figure imgf000011_0001
are jointly obtained from analysis of joint recordings of the signal X and the corresponding signal Y. Therefore, the joint recordings of the training signals X and 7 are needed in the training phase. However, the signal X is not directly available, and the following approximation is used instead.
An undistorted (clean) training speech signals C is artificially corrupt with digitally added noise to obtain the noisy signal S. Then, the signal S is processed with the denoising process 110 to obtain the corresponding signal Y. The "losslessly denoised" signal X is a hypothetical entity that also is unknown. Instead, the original undistorted clean signal C is used as a proxy for X for the signal. The denoising process and the distortion function introduce a delay into the signal so that the signals for Zand C are shifted in time with respect to one another.
Because the model of Eqn. 2 assumes a one-to-one correspondence between each frame of X and the corresponding frame of Y, the recorded samples of the signals C and Fare time aligned to eliminate any relative time shifts introduced by the denoising. The time shift is estimates by cross- correlating each frame of the signal C and the corresponding frame of the signal Y.
The bases Βέ are assumed to be the composing bases for the signal X. The bases can be obtained by analysis of magnitude spectra of signals using NMF. However, as an additional constraint, the distorted bases Bf " must be reliably known to actually be distortions of their undistorted counterpart bases Bj.
Therefore, an example based model is used, where such a
correspondence is assured. A large number of magnitude spectral vectors are randomly selected from the signal C as the bases B\ for the signal X.
The corresponding vectors are selected from the training instances of the
D distorted _ . , D distorted . . . , signal Y as JJ . This ensures that JJ Z IS indeed a near-exact distorted version of 2?,-. Because the bases represent spectral structures in the speech, and the potential number of spectral structures in speech is virtually unlimited, a large number of training bases are selected, e.g., 5000 or more. The model of Eqn. I thus becomes overcomplete, combining many more elements than the dimensionality of the signal itself.
Estimating Weights
The method for restoring spectral components in the test denoise signal Γ203 determines how each spectral vector Y(i) of Fis composed by the distorted bases. As stated above, Y(f) = Σ if)B istorte(^
l l If the set of all training distorted bases 221 is represented as a matrix B = ^ distorted^ and the set of weights {Wl(t)} as a vector: W(t) =
Y(t) = B W(t). (3)
The vector W t) is constrained to be non-negative during the estimation. A variety of update rules are known for learning the weights. For speech and audio signals, it most effective to employ the update rule that minimizes the generalized Kullback-Leibler distance between Y(t) and B W{t):
Figure imgf000013_0001
where Θ represents component- wise multiplication, and all divisions are also component-wise. Because the representation is overcomplete, i.e., there are more bases than there are dimensions in Y(t)), the equation is
underdetermined and multiple solutions for W{t) exist that characterize Y(t) equally well.
Estimating the Speech with Restored Spectral Components
After the weights W{t) = ["^( ^( ···] are determined for any
Y{f), by Eqn. 2 the corresponding lossless spectrum X{t) can be estimated as X{i) =∑ (f)Bi' Because the estimation procedure is iterative, the exact equality in Eqn. 3 is never achieved. Instead, the matrix B W(t) is only an approximation to Y(t). To account for the entire energy in the signal Y , the following Wiener filter formulation is used to estimate the spectral vectors of X
Figure imgf000014_0001
All divisions and multiplications above are component-wise, and ε > 0 to ensure that attenuated spectral components can still be restored when 7(0 = 0.
Fig. 3 shows the overall process 300 for restoring the undistorted test signal, after weights are estimated. The initial estimate, shown by the numerator of Eqn. (5), is determined 301 by combining the training undistorted bases 211 according to the estimated weights 306. The result is then used in the Wiener filter estimate 302. The resulting STFT is combined 303 with the phase from the STFT of the denoised test signal, and finally converted to a time-domain signal 305 by performing the inverse STFT 304.
Expanding the Bandwidth
Often, the recorded and denoised speech signal has a reduced bandwidth, e.g., if the speech is acquired by telephony, then the speech may only include low frequencies up to 4k Hz, and high frequencies above 4k Hz are lost. In these cases, the method can be extended to restore high- frequency spectral components into the signal. This is also expected to improve the intelligibility of the signal. To expand the bandwidth, a bandwidth reconstruction procedure can be used, see U.S. Patent 7,698,143, "Constructing broad-band acoustic signals from lower-band acoustic signals," issued to amakrishnan et al. on April 13, 2010, incorporated herein by reference. That procedure is only concerned with constructing broad-band acoustic signals from lower-band acoustic signals, and not denoised speech signals, as here.
In this case, the training data also includes wideband signals for the training undistorted signal C. The training recordings for C and Y are time aligned, and STFT analysis is performed using identical analysis frames. This ensures that in any joint recording there is a one-to-one
correspondence between the spectral vectors for the signals C and Y.
Consequently, while the bases 2? ^stortea ^ 221, drawn from training instances of 7, represent reduced-bandwidth signals, the corresponding bases 5 211 represent wideband signals and include high-frequency components. After the signals are denoised, low-frequency components are restored using Eqn. 5, and the high-frequency components are obtained as
X(t, f)
Figure imgf000015_0001
{high frequency), where /is an index to specific frequency components of X(t) and Bf.
The above estimate only determines spectral magnitudes. To invert the magnitude spectrum to a time-domain, a signal phase is also required. The phase for low-frequency components is taken directly from the reduced-bandwidth lossy denoised signal. For higher frequencies, it is sufficient to replicate the phase terms from the lower frequencies. Fig. 4 shows the overall process for restoring the undistorted test signal with bandwidth expansion, after weights are estimated. The initial estimate for both the low and high-frequency components, shown by the numerator of Eqn. (5), is determined 401. Low frequency components are updated using the Wiener filter estimate 402, while retaining high frequency estimates from step 401. The resulting STFT is combined 403 with the phase from the STFT of the denoised test signal in low frequencies. Phases of low frequencies are replicated 404 to high frequencies, and finally converted to a time-domain signal by performing the inverse STFT 405.

Claims

1. A method for restoring spectral components attenuated in a test denoised speech signal as a result of denoising a test speech signal, comprising:
representing a training undistorted speech signal as a composition of training undistorted bases;
representing a training denoised speech signal as a composition of training distorted bases;
decomposing the test denoised signal as a composition of the training distorted bases;
estimating the undistorted test speech signal as the composition of the training undistorted bases that is identical to the composition of training distorted bases.
2. The method of claim 1, wherein a process for producing the test denoised speech signal is unknown, and further comprising:
modeling the process by an ideal lossless denoising function to produce a denoised signal that is hypothetically lossless, and passing the denoised signal through a distortion function that attenuates the spectral components.
3. The method of claim 1, wherein all the bases are additive, and each bases is associated with a weight.
4. The method of claim 2, wherein the distortion function transforms any basis independently of any other bases.
5. The method of claim 1, further comprising:
representing all speech signals as magnitude spectrograms that are obtained by determining magnitudes of short-time Fourier transforms (STFTs) of the speech signals.
6. The method of claim 1, wherein the training undistorted bases and the training distorted bases are determined by a joint analysis of magnitude spectrograms of training data, wherein the training data comprise pairs of recordings, where each pair includes a clean speech signal, and an artificially corrupted version of the clean speech signal that has been corrupted by adding of noise and then denoising the corrupted version.
7. The method of claim 6, wherein samples of the clean speech signal, and the artificially corrupted and denoised version of the clean speech signal are time aligned.
8. The method of claim 7, wherein the undistorted training bases and the distorted training bases are determined by joint analysis of the pairs of recordings.
9. The method of claim 1, wherein the training undistorted bases and the training distorted bases are determined using an example-based model, and wherein the training undistorted bases and the training distorted bases are randomly selected from among magnitude spectral vectors for the training undistorted bases and the training distorted bases.
10. The method of claim 3, wherein the weights are non-negative.
11. The method of claim 3 where the weights are determined by non- negative matrix factorization (NMF).
12. The method of claim 1, further comprising:
expanding a bandwidth of the test undistorted speech signal.
13. The method of claims 6 or 12, wherein the training undistorted bases are obtained from a full-bandwidth clean speech signal and the training distorted bases are obtained from a reduced-bandwidth, artificially noise-corrupted, and denoised speech signal.
14. The method of claim 1, wherein the estimated test undistorted speech signal is obtained by combining the training undistorted bases using weights determined by non-negative matrix factorization (NMF).
15. The method of claim 1, wherein final magnitude spectra composing estimated magnitude short-time Fourier transforms (STFTs) of the test undistorted speech signal is obtained by applying using a Wiener filter formulation to an estimated undistorted spectra.
16. The method of claim 15, where the estimated test undistorted speech signal is obtained by and combining the inverted estimated magnitude STFTs with a phase obtained from the STFT of the test denoised speech signal and inverting the resulting complex STFT.
17. The methods of claim 15, wherein frequency components greater than 4k HZ of the STFT of the estimated test undistorted speech signal are obtained directly from the combination of the training undistorted bases.
18. The method of claims 16 or 17, wherein a phase for the frequency components greater than 4kHz of the STFT is obtained by replicating phase of low-frequency components less than 4k HZ of the STFT of the estimated test undistorted speech signal.
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Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US9930466B2 (en) 2015-12-21 2018-03-27 Thomson Licensing Method and apparatus for processing audio content

Families Citing this family (23)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US9812150B2 (en) 2013-08-28 2017-11-07 Accusonus, Inc. Methods and systems for improved signal decomposition
US9684087B2 (en) 2013-09-12 2017-06-20 Saudi Arabian Oil Company Dynamic threshold methods for filtering noise and restoring attenuated high-frequency components of acoustic signals
US9324338B2 (en) * 2013-10-22 2016-04-26 Mitsubishi Electric Research Laboratories, Inc. Denoising noisy speech signals using probabilistic model
US10013975B2 (en) * 2014-02-27 2018-07-03 Qualcomm Incorporated Systems and methods for speaker dictionary based speech modeling
US20150264505A1 (en) 2014-03-13 2015-09-17 Accusonus S.A. Wireless exchange of data between devices in live events
US10468036B2 (en) 2014-04-30 2019-11-05 Accusonus, Inc. Methods and systems for processing and mixing signals using signal decomposition
US9679559B2 (en) * 2014-05-29 2017-06-13 Mitsubishi Electric Research Laboratories, Inc. Source signal separation by discriminatively-trained non-negative matrix factorization
US9858922B2 (en) 2014-06-23 2018-01-02 Google Inc. Caching speech recognition scores
EP3010017A1 (en) * 2014-10-14 2016-04-20 Thomson Licensing Method and apparatus for separating speech data from background data in audio communication
US9299347B1 (en) 2014-10-22 2016-03-29 Google Inc. Speech recognition using associative mapping
US10605941B2 (en) 2014-12-18 2020-03-31 Conocophillips Company Methods for simultaneous source separation
CN105023580B (en) * 2015-06-25 2018-11-13 中国人民解放军理工大学 Unsupervised noise estimation based on separable depth automatic coding and sound enhancement method
US9786270B2 (en) 2015-07-09 2017-10-10 Google Inc. Generating acoustic models
WO2017058723A1 (en) 2015-09-28 2017-04-06 Conocophillips Company 3d seismic acquisition
US10229672B1 (en) 2015-12-31 2019-03-12 Google Llc Training acoustic models using connectionist temporal classification
US20180018973A1 (en) 2016-07-15 2018-01-18 Google Inc. Speaker verification
EP3507993B1 (en) 2016-08-31 2020-11-25 Dolby Laboratories Licensing Corporation Source separation for reverberant environment
US10809402B2 (en) 2017-05-16 2020-10-20 Conocophillips Company Non-uniform optimal survey design principles
US10706840B2 (en) 2017-08-18 2020-07-07 Google Llc Encoder-decoder models for sequence to sequence mapping
CN108922518B (en) * 2018-07-18 2020-10-23 苏州思必驰信息科技有限公司 Voice data amplification method and system
CA3111405A1 (en) * 2018-09-30 2020-04-02 Conocophillips Company Machine learning based signal recovery
US20220335964A1 (en) * 2019-10-15 2022-10-20 Nec Corporation Model generation method, model generation apparatus, and program
WO2022197296A1 (en) * 2021-03-17 2022-09-22 Innopeak Technology, Inc. Systems, methods, and devices for audio-visual speech purification using residual neural networks

Citations (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20060265210A1 (en) * 2005-05-17 2006-11-23 Bhiksha Ramakrishnan Constructing broad-band acoustic signals from lower-band acoustic signals

Family Cites Families (48)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US1000A (en) * 1838-11-03 Spring foe
US9013A (en) * 1852-06-15 Improvement in mills for crushing quartz
US7005A (en) * 1850-01-08 Improvement in coating iron with copper or its alloy
US8001A (en) * 1851-03-25 Machine for preparing clay for making brick
US6026A (en) * 1849-01-09 Cast-iron car-wheel
US4720802A (en) * 1983-07-26 1988-01-19 Lear Siegler Noise compensation arrangement
GB8608289D0 (en) * 1986-04-04 1986-05-08 Pa Consulting Services Noise compensation in speech recognition
US5148489A (en) * 1990-02-28 1992-09-15 Sri International Method for spectral estimation to improve noise robustness for speech recognition
WO1993018505A1 (en) * 1992-03-02 1993-09-16 The Walt Disney Company Voice transformation system
US5251263A (en) * 1992-05-22 1993-10-05 Andrea Electronics Corporation Adaptive noise cancellation and speech enhancement system and apparatus therefor
IN184794B (en) * 1993-09-14 2000-09-30 British Telecomm
US6122403A (en) * 1995-07-27 2000-09-19 Digimarc Corporation Computer system linked by using information in data objects
CN1129486A (en) * 1993-11-30 1996-08-21 美国电报电话公司 Transmitted noise reduction in communications systems
DE69730779T2 (en) * 1996-06-19 2005-02-10 Texas Instruments Inc., Dallas Improvements in or relating to speech coding
EP0878790A1 (en) * 1997-05-15 1998-11-18 Hewlett-Packard Company Voice coding system and method
US6381569B1 (en) * 1998-02-04 2002-04-30 Qualcomm Incorporated Noise-compensated speech recognition templates
WO1999050825A1 (en) * 1998-03-30 1999-10-07 Mitsubishi Denki Kabushiki Kaisha Noise reduction device and a noise reduction method
US6910011B1 (en) * 1999-08-16 2005-06-21 Haman Becker Automotive Systems - Wavemakers, Inc. Noisy acoustic signal enhancement
JP2001175299A (en) * 1999-12-16 2001-06-29 Matsushita Electric Ind Co Ltd Noise elimination device
US7089182B2 (en) * 2000-04-18 2006-08-08 Matsushita Electric Industrial Co., Ltd. Method and apparatus for feature domain joint channel and additive noise compensation
DE10041512B4 (en) * 2000-08-24 2005-05-04 Infineon Technologies Ag Method and device for artificially expanding the bandwidth of speech signals
US6738481B2 (en) * 2001-01-10 2004-05-18 Ericsson Inc. Noise reduction apparatus and method
US20030028386A1 (en) * 2001-04-02 2003-02-06 Zinser Richard L. Compressed domain universal transcoder
GB2380644A (en) * 2001-06-07 2003-04-09 Canon Kk Speech detection
US7240001B2 (en) * 2001-12-14 2007-07-03 Microsoft Corporation Quality improvement techniques in an audio encoder
US7050954B2 (en) * 2002-11-13 2006-05-23 Mitsubishi Electric Research Laboratories, Inc. Tracking noise via dynamic systems with a continuum of states
US7363221B2 (en) * 2003-08-19 2008-04-22 Microsoft Corporation Method of noise reduction using instantaneous signal-to-noise ratio as the principal quantity for optimal estimation
SG120121A1 (en) * 2003-09-26 2006-03-28 St Microelectronics Asia Pitch detection of speech signals
JP3909709B2 (en) * 2004-03-09 2007-04-25 インターナショナル・ビジネス・マシーンズ・コーポレーション Noise removal apparatus, method, and program
US7236930B2 (en) * 2004-04-12 2007-06-26 Texas Instruments Incorporated Method to extend operating range of joint additive and convolutive compensating algorithms
US7492889B2 (en) * 2004-04-23 2009-02-17 Acoustic Technologies, Inc. Noise suppression based on bark band wiener filtering and modified doblinger noise estimate
EP1681670A1 (en) * 2005-01-14 2006-07-19 Dialog Semiconductor GmbH Voice activation
WO2006091636A2 (en) * 2005-02-23 2006-08-31 Digital Intelligence, L.L.C. Signal decomposition and reconstruction
US7729908B2 (en) * 2005-03-04 2010-06-01 Panasonic Corporation Joint signal and model based noise matching noise robustness method for automatic speech recognition
US20060227968A1 (en) * 2005-04-08 2006-10-12 Chen Oscal T Speech watermark system
US7596231B2 (en) * 2005-05-23 2009-09-29 Hewlett-Packard Development Company, L.P. Reducing noise in an audio signal
US20070033027A1 (en) * 2005-08-03 2007-02-08 Texas Instruments, Incorporated Systems and methods employing stochastic bias compensation and bayesian joint additive/convolutive compensation in automatic speech recognition
US7590530B2 (en) * 2005-09-03 2009-09-15 Gn Resound A/S Method and apparatus for improved estimation of non-stationary noise for speech enhancement
EP1772855B1 (en) * 2005-10-07 2013-09-18 Nuance Communications, Inc. Method for extending the spectral bandwidth of a speech signal
US7809559B2 (en) * 2006-07-24 2010-10-05 Motorola, Inc. Method and apparatus for removing from an audio signal periodic noise pulses representable as signals combined by convolution
US8015003B2 (en) * 2007-11-19 2011-09-06 Mitsubishi Electric Research Laboratories, Inc. Denoising acoustic signals using constrained non-negative matrix factorization
US8406525B2 (en) * 2008-01-31 2013-03-26 The Regents Of The University Of California Recognition via high-dimensional data classification
US9293130B2 (en) * 2008-05-02 2016-03-22 Nuance Communications, Inc. Method and system for robust pattern matching in continuous speech for spotting a keyword of interest using orthogonal matching pursuit
US8180635B2 (en) * 2008-12-31 2012-05-15 Texas Instruments Incorporated Weighted sequential variance adaptation with prior knowledge for noise robust speech recognition
US8660281B2 (en) * 2009-02-03 2014-02-25 University Of Ottawa Method and system for a multi-microphone noise reduction
CN101599274B (en) * 2009-06-26 2012-03-28 瑞声声学科技(深圳)有限公司 Method for speech enhancement
US20120215529A1 (en) * 2010-04-30 2012-08-23 Indian Institute Of Science Speech Enhancement
US8606572B2 (en) * 2010-10-04 2013-12-10 LI Creative Technologies, Inc. Noise cancellation device for communications in high noise environments

Patent Citations (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US20060265210A1 (en) * 2005-05-17 2006-11-23 Bhiksha Ramakrishnan Constructing broad-band acoustic signals from lower-band acoustic signals
US7698143B2 (en) 2005-05-17 2010-04-13 Mitsubishi Electric Research Laboratories, Inc. Constructing broad-band acoustic signals from lower-band acoustic signals

Non-Patent Citations (1)

* Cited by examiner, † Cited by third party
Title
KEVIN W WILSON ET AL: "Speech denoising using nonnegative matrix factorization with priors", ACOUSTICS, SPEECH AND SIGNAL PROCESSING, 2008. ICASSP 2008. IEEE INTERNATIONAL CONFERENCE ON, IEEE, PISCATAWAY, NJ, USA, 31 March 2008 (2008-03-31), pages 4029 - 4032, XP031251480, ISBN: 978-1-4244-1483-3 *

Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US9930466B2 (en) 2015-12-21 2018-03-27 Thomson Licensing Method and apparatus for processing audio content

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