HEARING DEVICE WITH MINIMUM PROCESSING BEAMFORMER
20260122432 · 2026-04-30
Assignee
Inventors
- Adel Zahedi (Smørum, DK)
- Michael Syskind Pedersen (Smørum, DK)
- Thomas Ulrich Christiansen (Smørum, DK)
- Lars BRAMSLØW (Smørum, DK)
- Jesper Jensen (Smørum, DK)
Cpc classification
H04R25/50
ELECTRICITY
International classification
Abstract
A hearing device adapted for being worn at or in an ear of a user, comprises a) an input unit comprising at last two input transducers each for converting sound around said hearing device to an electric input signal representing said sound, thereby providing at least two electric input signals; b) a beamformer filter comprising a minimum processing beamformer defined by optimized beamformer weights, the beamformer filter being configured to provide a filtered signal in dependence of said at least two electric input signals and said optimized beamformer weights; c) a reference signal representing sound around said hearing device; d) a performance criterion for said minimum processing beamformer. The minimum processing beamformer is a beamformer that provides the filtered signal with as little modification as possible in terms of a selected distance measure compared to said reference signal, while still fulfilling said performance criterion. The optimized beamformer weights are adaptively determined in dependence of said at least two electric input signals, said reference signal, said distance measure, and said performance criterion. A method of operating a hearing device is further disclosed. The invention may e.g. be used in hearing aids or headsets.
Claims
1. A hearing device adapted for being worn at or in an ear of a user, the hearing device comprising an input unit comprising at least two input transducers for converting sound around said hearing device to at least two electric input signals representing said sound, thereby providing at least two electric input signals; and a beamformer filter comprising a first beamformer defined by optimized beamformer weights, the beamformer filter being configured to provide a filtered signal of said at least two electrical input signals, the optimized beamformer weights being calculated based on a reference signal generated by processing the at least two electrical input signals with a second beamformer, wherein the first beamformer is composed of a dynamic, signal-dependent, linear combination of the second beamformer and a third beamformer, wherein the second beamformer comprises one of a multi-channel Wiener filter, a minimum variance distortionless response beamformer, a linearly-constrained minimum variance beamformer, and a DNN-based beamformer, and wherein the third beamformer comprises one of a multi-channel Wiener filter and a minimum variance distortionless response beamformer.
2. A hearing device according to claim 1 wherein said optimized beamformer weights are adaptively determined on a per frequency sub-band level.
3. A hearing device according to claim 1 wherein a performance criterion relates to a performance estimator for said first beamformer being larger than or equal to a minimum value.
4. A hearing device according to claim 1 wherein the calculation of said optimized beamformer weights includes calculating said distance measure based on a squared error between the reference signal and the filtered signal.
5. A hearing device according to claim 3 wherein said performance estimator comprises an algorithmic speech intelligibility measure or a signal quality measure.
6. A hearing device according to claim 1 comprising a filter bank allowing processing of said at least two electric input signals, or a signal or signals originating therefrom, in the time-frequency domain where said electric input signals are provided in a time frequency representation k, l, where k is said frequency index and l is a time index.
7. A hearing device according to claim 1 wherein the linear combination comprises a signal dependent weight , which is adaptively updated in dependence of the at least two electric input signals.
8. A hearing device according to claim 7 wherein said signal dependent weight is adaptively updated in dependence of said at least two electric input signals and said reference signal.
9. A hearing device according to claim 7 configured to provide a smoothing over time of the signal dependent weight .
10. A hearing device according to claim 1 being constituted by or comprising a hearing aid.
11. A method of operating a hearing device adapted for being worn at or in an ear of a user, the method comprising providing at least two electric input signals representing sound around said hearing device; providing optimized beamformer weights defining a first beamformer of a beamformer filter, which when applied to said at least two electric input signals provide a filtered signal, the optimized beamformer weights being calculated based on a reference signal generated by processing the at least two electrical input signals with a second beamformer, wherein the first beamformer is composed of a dynamic, signal-dependent, linear combination of the second beamformer and a third beamformer, wherein the second beamformer comprises one of a multi-channel Wiener filter, a minimum variance distortionless response beamformer, a linearly-constrained minimum variance beamformer, and a DNN-based beamformer, and wherein the third beamformer comprises one of a multi-channel Wiener filter and a minimum variance distortionless response beamformer.
12. A method according to claim 11 comprising providing an estimate of whether or not the least two electric input signals comprise speech in a given time-frequency unit and providing signal statistics based on said at least two electric input signals.
13. A method according to claim 12 comprising providing signal statistics based on said at least two electric input signals as covariance matrices or acoustic transfer functions.
14. A hearing device according to claim 1 wherein said hearing device is constituted by or comprises an air-conduction type hearing aid, a bone-conduction type hearing aid, a cochlear implant type hearing aid, a headset or an earphone, or a combination thereof.
15. A hearing device according to claim 1 wherein said reference signal is a beamformed signal provided as a result of the at least two electric signals having been filtered by the second beamformer.
16. A hearing device according to claim 1 wherein the second beamformer is an aggressive, noise suppressing beamformer.
17. A hearing device according to claim 16 wherein the second beamformer comprises the multi-channel Wiener filter.
18. A hearing device according to claim 1 wherein the second beamformer comprises the multi-channel Wiener filter configured to remove as much noise as possible in the beamformed signal, and the third beamformer comprises the multi-channel Wiener filter configured to preserve speech.
Description
BRIEF DESCRIPTION OF DRAWINGS
[0096] The aspects of the disclosure may be best understood from the following detailed description taken in conjunction with the accompanying figures. The figures are schematic and simplified for clarity, and they just show details to improve the understanding of the claims, while other details are left out. Throughout, the same reference numerals are used for identical or corresponding parts. The individual features of each aspect may each be combined with any or all features of the other aspects. These and other aspects, features and/or technical effect will be apparent from and elucidated with reference to the illustrations described hereinafter in which:
[0097]
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[0099]
as a function of the SNK .sub.k for the MWF beamformer with three different values of ,
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[0106] The figures are schematic and simplified for clarity, and they just show details which are essential to the understanding of the disclosure, while other details are left out. Throughout, the same reference signs are used for identical or corresponding parts.
[0107] Further scope of applicability of the present disclosure will become apparent from the detailed description given hereinafter. However, it should be understood that the detailed description and specific examples, while indicating preferred embodiments of the disclosure, are given by way of illustration only. Other embodiments may become apparent to those skilled in the art from the following detailed description.
DETAILED DESCRIPTION OF EMBODIMENTS
[0108] The detailed description set forth below in connection with the appended drawings is intended as a description of various configurations. The detailed description includes specific details for the purpose of providing a thorough understanding of various concepts. However, it will be apparent to those skilled in the art that these concepts may be practiced without these specific details. Several aspects of the apparatus and methods are described by various blocks, functional units, modules, components, circuits, steps, processes, algorithms, etc. (collectively referred to as elements). Depending upon particular application, design constraints or other reasons, these elements may be implemented using electronic hardware, computer program, or any combination thereof.
[0109] The electronic hardware may include micro-electronic-mechanical systems (MEMS), integrated circuits (e.g. application specific), microprocessors, microcontrollers, digital signal processors (DSPs), field programmable gate arrays (FPGAs), programmable logic devices (PLDs), gated logic, discrete hardware circuits, printed circuit boards (PCB) (e.g. flexible PCBs), and other suitable hardware configured to perform the various functionality described throughout this disclosure, e.g. sensors, e.g. for sensing and/or registering physical properties of the environment, the device, the user, etc. Computer program shall be construed broadly to mean instructions, instruction sets, code, code segments, program code, programs, subprograms, software modules, applications, software applications, software packages, routines, subroutines, objects, executables, threads of execution, procedures, functions, etc., whether referred to as software, firmware, middleware, microcode, hardware description language, or otherwise.
[0110] The present application relates to the field of hearing aids. The present application relates to hearing aids, in particular to noise reduction in hearing aids.
A. Notation and Signal Model
[0111] In the following matrices and vectors are denoted by boldface uppercase and lowercase letters, respectively. Covariance matrices are denoted by the letter C followed by an appropriate subscript as for example in C.sub.x.sub.. The MM identity matrix is denoted by IM, and e.sub.r denotes a vector which is zero everywhere except for its r.sup.th component, which is unity. The superscript .sup.H is used to denote the Hermitian transpose. For complex conjugate of scalars, the superscript * is used (not to be confused with the superscript *, which is used to mark the solutions to optimization problems). The statistical expectation operation is denoted by E[.Math.].
[0112] In the present disclosure, speech and noise signals are represented in the time-frequency domain. A frequency bin index k and a time frame index l are thus needed to address a certain time-frequency tile. In most of the expressions and formula of the present disclosure, the time frame index l has been dispensed with, however, to avoid confusing notation. It is therefore assumed by default, that we are considering a certain time frame l, unless otherwise is expressly stated.
[0113] Denoting the number of microphones by M, without loss of generality, microphone r, 1rM, is arbitrarily selected as the reference microphone. Suppose that K={1, . . . , K} is the set of all frequency bin indices. Stacking the signals acquired by all the microphones in one vector {tilde over (x)}.sub.k .sup.M for frequency bin k, the following speech in noise model is used:
[0115] In some applications of beamforming, e.g. in some hearing assistive devices (e.g. hearing aids), the signal needs to be amplified or attenuated depending on the application. This means that the speech to be delivered to the listener's ear will be subject to an insertion gain g.sub.k. Therefore, in ideal conditions, the clean speech at the output of the device is given by:
[0116] Obviously g.sub.k=1, when no gain is applied. Corresponding to equation (2), we define x.sub.k g.sub.k{tilde over (x)}.sub.k and v.sub.kg.sub.k {tilde over (v)}.sub.k. Therefore, without any change in the form, equation (1) can be rewritten as:
[0117] As common practice in the speech processing literature, we assume independence across the frequency bins, which is approximately valid, when the correlation time of the signals involved is short compared to the time-frequency analysis window size. Moreover, we assume that speech and noise signals are uncorrelated and zero-mean. Combining these assumptions, the covariance matrix C.sub.x.sub.
[0118] More generally, we define
as:
the generalized covariance matrix of x.sub.k.
[0120] Throughout the present disclosure, the common assumption that C.sub.v.sub.
which is tie variance or tie noise component v.sub.k at the reference microphone will be referred to.
[0121] The proposed concept heavily relies on perceptually driven performance criteria, e.g. intelligibility or quality predictors.
[0122] The most well-known examples of these predictors, such as PESQ, STOI and ESTOI, HASPI and HASQI, and SII and ESII are defined in sub-bands that are deliberately defined for compliance with the human perception of sound. Critical bands, octave bands, and fractional octave bands are a few examples. On the other hand, beamformers are typically derived and analysed in the time-frequency domain using easy-to-invert time-frequency transformations such as the short-time Fourier transform (STFT).
[0123] For the sake of generality, we make a distinction between the two: For the perceptually driven sub-band divisions in which a certain performance criterion is defined, we use the term sub-band, while for the time-frequency tiles where the beamformer weight vector is derived/applied, we use the term frequency bin. The case where the two are chosen to be the same is a special case of this general framework. Depending on how the sub-bands and frequency bins are defined, there may be multiple frequency bins contributing to the same sub-band and/or multiple sub-bands contributing to the same frequency bin, each with certain weights. Throughout this application, we use i to index sub-bands, and k to index frequency bins.
[0124] Suppose that we have n sub-bands, and .sub.i for i=1, . . . , n, is the set of all frequency bins k that contribute to sub-band i. As an example of how we use the correspondence between the sub-bands and frequency bins, the clean speech spectrum level for sub-band i is defined as:
[0126]
[0127] The purpose of the weight estimator WGT-EST in
B. Multi-Channel Wiener Filter
[0128] The standard form of MWF results from solving a minimum MSE problem which minimizes the following cost function:
[0130] The first term on the right-hand side of (9) formulates the distortion introduced to the clean speech due to the enhancement, and the second term is the residual noise power. As seen in equation (9), the MSE criterion equally penalizes speech distortion and residual noise. A natural generalization of this cost function is to allow for different weights for these two terms. As previously proposed, one such generalization is to use
[0132] It is well-known that MWF can be restated as a cascade of the MVDR beamformer and a Wiener postfilter. It can be shown (cf. e.g. Appendix B in [Zahedi et al.; 2021]), that the MWF beamformer in equation (12) can similarly be restated as the cascade of the MVDR beamformer and the following generalized Wiener postfilter:
is the SNR at the output of the MVDR beamformer.
as a function of .sub.k for =1, <1 and >1. For =1, it reduces to the well-known single-channel Wiener filter (SWF), leading to a beamformer that is optimal in MSE sense. For <1, the postfilter incurs a lower level of speech distortion compared to the standard
[0134] Wiener filter at the cost of higher residual noise. In the limit when .fwdarw.0, the MWF beamformer reduces to the MVDR beamformer. On the contrary, >1 leads to an aggressive postfilter that suppresses more noise compared to the standard SWF at the cost of higher levels of speech distortion.
[0135] All the beamformers introduced so far are formulated with the aim of reconstructing the clean speech, i.e. complete suppression of noise as an ideal. It has been suggested that one may be interested in preserving a fraction of the noise in addition to the target speech, for instance to better preserve the spatial characteristics of noise in addition to the target speech. For that purpose, one can minimize (s.sub.k+v.sub.k, y.sub.k)=for a given positive constant , which leads to the following solution:
[0136] In effect, the MWF-N beamformer takes the output of an MWF beamformer and adds a fraction of the unprocessed noisy speech from the reference microphone to it.
[0137] Finally, one can combine the MWF and MWF-N beamformers to obtain the following generalized beamformer (see e.g. [Van den Bogaert et al, 2009]):
[0138] This is especially useful when a large value of is chosen for the MWF part; i.e. an aggressive beamformer with a high level of speech distortion. In this case, the resulting distortion of the clean speech can be partially compensated for by adding a fraction of the unprocessed signal to the output of the MWF beamformer. The MWF-N beamformer in equation (15) is the most general of the above-mentioned beamformers. All the other beamformers can be seen as special cases of equation (15) for certain choices of the parameters and .
Minimum Processing Beamforming
A. Proposed Concept:
[0139] Suppose that
is a given reference signal (not to be confused with the clean speech at the reference microphone). Consider a certain sub-band i. We stack all
for k.sub.i in a vector denoted by
Similarly, we stack all y.sub.k, s.sub.k and v.sub.k for kB.sub.i into vectors y.sub.i, s.sub.i and v.sub.i, respectively. Also, consider the two finite non-negative functionals and
. We define the minimum-processing beamformer in sub-band i as the solution to the following optimization problem:
measures the distance (processing penalty) between the reference signal and the beamformer output, I(y.sub.i, .Math.s.sub.i) is an estimator of performance for the beamformer output in sub-band i in a certain sense, e.g. speech intelligibility, sound quality, etc. The term
in (16) is defined as:
is disregarded, and the performance I(y.sub.i, .Math.s.sub.i) is maximized in an unconstrained manner.
[0142] In equation (16), dependency of I(y.sub.i, .Math.s.sub.i) on the clean speech s.sub.i is implied by the notation for generality. In many practical situations, performance is estimated from the beamformer output alone, and we have I(y.sub.i, .Math.s.sub.i)=I(y.sub.i).
[0143] A special case of equation (16), where
the processing penaity is chosen to be the
.sub. defined in equation (11), and the constraint is annihilated by setting I.sub.i=0, leads to the generalized MWF-N beamformer in equation (15). This demonstrates the generality of the formulation in equation (16). In present disclosure, a case study, where the processing penalty
is similar to the
.sub. criterion, and the performance criterion
is an intelligibility estimator based on the SII [ANSI S3.22-1997], is outlined. The problem may be solved analytically for any given reference signal
[0144] In the following two special cases are exemplified, an ambient preserving mode and an aggressive mode.
Ambient-Preserving Mode:
[0145] In this mode of operation, the unprocessed signal from the reference microphone
is chosen as the reference signal
This leads to a beamformer that attempts to retain as much of the clean speech and noise as possible by keeping the processing of the noisy speech to the minimum amount necessary for achieving the given intelligibility requirement.
Aggressive Mode:
[0146] In this mode, the reference signal
is the output of a reference beamformer
This leads to a beamformer that inherits the (presumably desirable) properties of the reference beamformer, except for the situations, where this violates the intelligibility requirement. In particular, we study the case where the reference beamformer is the aggressive form of the MWF beamformer.
B. Motivation
[0147] Existing research (as well as our experience) show that directional hearing aids in some situations tend to over-suppress the natural ambient noise, leaving the users with a feeling of isolation or exclusion. While not downplaying the crucial role of sufficient speech intelligibility, it seems reasonable that if any suppression of the ambient noise takes place, it should be limited to the minimum necessary amount that precludes any compromise of speech intelligibility. This can be formulated by setting the reference signal in equation (16) equal to the unprocessed signal at the reference microphone, and choosing a speech intelligibility estimator as the performance criterion . In other words, we apply a minimum processing principle to modify the noisy signal as little as possible in order to obtain a desired level of intelligibility. This was indeed the initial motivation for this work of the present disclosure. The concept has been generalized, however, from using the noisy signal at the reference microphone to any given reference signal as in equation (16). An example of special interest is when the reference signal is the output of a certain beamformer
This call ve useful when the reference beamformer
within a certain context or for a certain application, has particularly desirable properties that are compromised by pronounced drawbacks. As an example, the MWF beamformer in equation (12) with aggressive noise suppression properties (>>1) can effectively suppress noise at the cost of distorting speech. By choosing it as the reference beamformer in equation (16), while opting for a speech preserving performance criterion , we obtain a beamformer that does an outstanding job of suppressing the noise, whenever it would not harm the speech to more than a certain extent.
Theory
Processing Penalty
[0148] A starting point for defining the processing penalty may e.g. be the MSE criterion. Writing it in sub-bands rather than frequency bins for the sake of compatibility with the formulation in equation (16), it takes the following form:
[0149] Vectors r.sub.k and u.sub.k are defined:
[0150] Expanding the terms in equation (18) and subtracting and adding
on the right side, we obtain:
[0151] The first term on the right-hand side of equation (21) is independent of the weight vectors w.sub.k. It thus has no impact on the solution to the optimization problem of equation (16). Discarding this term, and substituting C.sub.x.sub.
in equation (21) for more generality, the final form of the processing penalty is obtained as follows:
Exemplary Performance Criterion:
[0152] In the following example, an estimation of speech intelligibility based on the SII is used as the performance criterion. It is evaluated on a per-frame basis. Assuming normal vocal effort and thus no speech level distortion, the SII is given by a weighted sum of the so-called band audibility functions over all the sub-bands [ANSI S3.22-1997]. Since equation (16) is defined for a certain sub-band, we define a band audibility constraint for each sub-band instead of setting one single intelligibility constraint for the entire signal. Moreover, we disregard spectral masking effects to avoid unnecessary complications, as our experience suggests that for most cases of practical interest, it has an insignificant effect on the resulting score.
[0153] With .sub.i being the speech to disturbance ratio for sub-band i, the audibility function (.sub.i) for sub-band i is given by the following function:
[0154] This function is plotted in
[0155] To calculate .sub.i, we first obtain the total error power in sub-band i at the output of beamformers w.sub.k; for k.sub.i. This is calculated, in a manner similar to equation (11), as the sum of the speech distortion and noise power:
[0157] Finally, we calculate the speech to disturbance ratio .sub.i using the following formula:
[0158] Where
is defined as
[0160] The fact that the threshold of hearing .sub.i, as well as the insertion gain g.sub.k (cf. equations (26) and (2), respectively) are taken into account, makes the present framework suitable for hearing-impaired as well as normal-hearing users.
Problem Formulation and Solution
[0161] Combining the results outlined above, the optimization problem set up in equation (16) can be written as follows:
and h.sub.i follows:
[0163] As shown in [Zahedi et al.; 2021], these parameters can be interpreted depending on the choice of the reference signal. In addition, the two constants
are defined as follows (details can be found in Appendix C of [Zahedi et al.; 2021]):
[0164] Finally, the constant
is defined
[0165] From the above, following results can consequently be deduced (cf. e.g. [Zahedi et al.; 2021]): [0166] 1) The minimum processing beamformer; i.e. the solution
to (29) is given by:
then .sub.i=1; otherwise:
and maximizing I(y.sub.i, s.sub.i)=(.sub.i), is given by equation (33). [0169] 3) Minimum performance, which is obtained by disregarding the performance constraint
and minimizing the processing penalty
is given by equation (32).
[0170] Depending on the type of correspondence considered between the frequency bins and sub-bands, there can be overlap between the sub-bands; i.e., a single frequency bin can contribute to more than one sub-band. For that reason, we have assumed dependency both on the frequency bin index k and the sub-band index i in the beamformer weight vector
Let F.sub.k denote the set of all sub-bands to which the frequency bin k contributes, and .sub.i,k be the weight that accounts for the impact of this contribution on the beamformer weight vector. The beamformer weight vector at frequency bin k is given by:
[0171] In Appendix A of [Zahedi et al.; 2021], we provide more details on the calculation of .sub.i,k and other considerations related to the correspondence between the sub-bands and frequency bins.
Reference Signal
[0172] In the examples of the present disclosure, we confine ourselves to two choices of the reference signal with two different goals in mind. Obviously, for any other relevant scenario, one has to define the reference signal that suits the application.
1. Ambient Noise Preserving Mode:
[0173] In applications, such as hearing assistive devices, when sounds other than the target speech potentially convey useful information (e.g. traffic noise alarms, etc.) or are of interest (e.g. background music), it is desirable to preserve them fully or in part, with the criterion being an uncompromised level of intelligibility for the target speech. Setting the reference signal
equal to the unprocessed signal from the reference microphone
allows for this mode of operation. Substituting in equation (19) and the result in equation (20), we obtain:
[0174] Following equation (35), we thus have:
[0175] This beamformer is similar to equation (15), with the important difference that here the coefficient .sub.i is signal dependent. More particularly, .sub.i adapts to the situation depending on how noisy the speech is in the given time frame and sub-band, cf. equation (36).
[0176] Substituting equations (38) and (39) in (30), we have:
[0177] In other words,
is the noise power in sub-band i. Similarly, substituting equations (38) and (39) in (31), and using equation (12), we obtain:
[0178] Using equation (5), applying the Sherman-Morrison formula, and simplifying the result, equation (41) reduces to the following:
is the generalized Wiener postfilter given by equation (13), and
is the noise variance at the output of the MVDR beamformer.
2. Aggressive Mode:
[0180] This mode of operation is suitable for circumstances, where maximum suppression of noise is desired, without severely damaging the target speech. The reference signal is chosen to be the output of a reference beamformer
We thus have
Substituting in equation (19) and the result in equation (20), we obtain:
[0181] Consequently, equation (35) takes the following form:
[0182] One viable choice of the reference beamformer is the MWF beamformer (12) with >>1. This beamformer can do an outstanding job of suppressing the noise, but at the same time, it significantly distorts the target speech. In time frames and sub-bands where the SNR is not particularly high, these distortions will be very severe, giving rise to an overall output speech that is more audibly distorted than desired. We attempt to obtain a performance as close as possible to the MWF beamformer (with >>1) in terms of noise suppression by choosing it as the reference beamformer. On the other hand, for the second term on the right-hand side of equation (44), we set <<1 to obtain a speech-preserving beamformer that precludes excessive distortions of speech in unfavourable conditions. This yields:
[0183] Where .sub.1>>1 and .sub.2<<1.
[0184] Next, we calculate
and h.sub.i for the present case. Substituting equation (43) in (30) yields:
[0185] It thus becomes clear that
is the total error at the output of the reference beamformer in sub-band i, and can be written as the sum of the noise power
and speech distortion
at the output of the reference beamformer. To calculate h.sub.i using (31), we rewrite the two MWF beamformers in (45) as the series of the MVDR beamformer and a generalized Wiener postfilter to obtain:
PRACTICAL CONSIDERATIONS
[0187] There are practical matters that are crucial for optimal operation of the proposed beamformers in real-life scenarios. In this section, we address these considerations.
Time Averaging for Combination Weights
[0188] The value of .sub.i given by equation (36) can change abruptly across the time frames, leading to audible distortions of the speech. To avoid this, a recursive averaging of .sub.ii across the time frames may be performed as follows:
Target Loss Effects
[0191] Applying a beamformer to a noisy signal x.sub.k generally results in a suppression of the target signal s.sub.k at the output, i.e., a target loss. Formulation of the target loss requires a model for the speech distortion that is introduced by the beamformer. The simplest model is the additive noise model, i.e. speech distortion treated as additive noise uncorrelated with both speech and noise. With the additive noise model, the target loss .sub.i in equation (28) is zero, and speech distortion is accounted for by adding it to the residual noise power as in equation (25). An alternative is to subtract the speech distortion from the clean speech power in addition to treating it as residual noise power. In this case, we have:
[0193] Substituting equation (35) in (50) and using
yields:
[0195] As seen in (51), dependency of .sub.i on the weight vector is reflected by the presence of .sub.i. From equations (51) and (28), one needs the knowledge of .sub.i to calculate
on the other hand,
has to be known in order to calculate .sub.i in equation (36). As suggested above, to cope with this, we make use of the approximation
in equations (51) and (28), respectively, and then update
Substituting in equation (51), we obtain:
[0198]
[0199] In the embodiment of
[0200] The hearing device (HD), e.g. the processor (PRO), is configured to provide or receive a reference signal (REF) representing sound around said hearing device. The reference signal is termed
In the mathematical outline above (eq. (1)-(53)), where k and i frequency bin and frequency sub-band indices, respectively (see e.g.
[0201] The hearing device (HD), e.g. the processor (PRO), is configured to provide or receive a minimum value of a performance estimator for the beamformer filter. The minimum value is intended to ensure that the performance of the minimum processing beamformer is acceptable to the user, e.g. provides an acceptable speech intelligibility. The minimum value of a performance estimator may be stored in memory of the hearing device, or received from another device, e.g. via a user interface (e.g. provided by the user via the user interface, e.g. fully or partially implemented as an application program (APP) of a smartphone or similar portable communication device). In the embodiment of
[0202] The hearing device (HD), e.g. the processor (PRO), e.g. as in
[0203] The weight estimation unit (WGT-EST) may be configured to optimize the beamformer weights (W1(k), W2(k)) of the minimum processing beamformer as signal dependent linear combination of at least two beam formers. The minimum processing (MP) beamformer may be written as BF.sup.MP=BF.sup.1+(1) BF.sup.2, where BF.sup.MP is the minimum processing beamformer, BF.sup.1 is the reference beamformer, BF.sup.2 may be a speech preserving beamformer (e.g. an MVF-beamformer) and is the signal dependent weight of the linear combination.
[0204] An embodiment of the weight estimation unit (WGT-EST) is schematically illustrated in
[0205]
[0206] The weight estimation unit (WGT-EST) of
and a speech maintaining beamformer
In addition to the input signal (CovM-RTF) from the signal statistics estimation block (SIG-STAT-EST) and the at least two electric input signals (X1(k), X2(k)), an input to the beamformer weight determination block (IND-BF-WGT-DET) is the choice of reference signal (or beamformer) indicated by signal REF-ctr, e.g. received from a user interface (see e.g.
[0207]
as a function of the SNK .sub.k for the MWF beamformer with three different values of .
[0208]
[0209]
[0210]
[0211] In the present application, a number J of (non-uniform) frequency sub-bands with sub-band indices i=1, 2, . . . , J is defined, each sub-band comprising one or more DFT-bins (cf. vertical Sub-band i-axis in
respectively, e.g. defining lower and upper cut-off frequencies of the i.sup.th frequency sub-band, respectively. A specific time-frequency unit (i,l) is defined by a specific time index l and the DFT-bin indices from
as indicated in
[0212] The frequency sub-bands i may e.g. be third octave bands. (e.g. to mimic the frequency dependent level sensitivity of the human auditory system). The time-frequency unit (i,l) may contain a single real or complex value of the signal (e.g. an average of the values
e.g. a weighted average), cf. e.g. eq. (6) above.
[0213]
[0219]
[0226] The method of step S5 illustrated in
[0227]
[0228] The hearing aid (HD) exemplified in
[0229] The hearing aid (HD) comprises a directional microphone system (beamformer filter (BF in
[0230] The hearing aid of
[0231] The hearing aid (HD) according to the present disclosure may comprise a user interface UI, e.g., as shown in the lower part of
[0232] The auxiliary device and the hearing aid are adapted to allow communication of data representative of the reference signal, performance criterion, speech preserving beamformer, etc. currently selected by the user to the hearing aid via a, e.g. wireless, communication link (cf. dashed arrow WL2 to wireless receiver WLR.sub.2 in the hearing aid of
[0233] It is intended that the structural features of the devices described above, either in the detailed description and/or in the claims, may be combined with steps of the method, when appropriately substituted by a corresponding process.
[0234] As used, the singular forms a, an, and the are intended to include the plural forms as well (i.e. to have the meaning at least one), unless expressly stated otherwise. It will be further understood that the terms includes, comprises, including, and/or comprising, when used in this specification, specify the presence of stated features, integers, steps, operations, elements, and/or components, but do not preclude the presence or addition of one or more other features, integers, steps, operations, elements, components, and/or groups thereof. It will also be understood that when an element is referred to as being connected or coupled to another element, it can be directly connected or coupled to the other element but an intervening element may also be present, unless expressly stated otherwise. Furthermore, connected or coupled as used herein may include wirelessly connected or coupled. As used herein, the term and/or includes any and all combinations of one or more of the associated listed items. The steps of any disclosed method are not limited to the exact order stated herein, unless expressly stated otherwise.
[0235] It should be appreciated that reference throughout this specification to one embodiment or an embodiment or an aspect or features included as may means that a particular feature, structure or characteristic described in connection with the embodiment is included in at least one embodiment of the disclosure. Furthermore, the particular features, structures or characteristics may be combined as suitable in one or more embodiments of the disclosure. The previous description is provided to enable any person skilled in the art to practice the various aspects described herein. Various modifications to these aspects will be readily apparent to those skilled in the art, and the generic principles defined herein may be applied to other aspects. Embodiments of the disclosure may e.g. be useful in applications such as hearing aids or headsets.
[0236] The claims are not intended to be limited to the aspects shown herein but are to be accorded the full scope consistent with the language of the claims, wherein reference to an element in the singular is not intended to mean one and only one unless specifically so stated, but rather one or more. Unless specifically stated otherwise, the term some refers to one or more.
REFERENCES
[0237] [Zahedi et al.; 2021] Adel Zahedi, Michael Syskind Pedersen, Jan stergaard, Thomas Ulrich Christiansen, Lars Bramslw, Jesper Jensen, Minimum Processing Beamforming, accepted for publication in IEEE Transactions on Audio, Speech, and Language Processing, 2021. Published 21.01.2021 (https://iecexplore.ieee.org/document/9332253). [0238] [ANSI S3.22-1997] Methods for calculation of the speech intelligibility index, American National Standard Institute (ANSI), 1997. [0239] [Van den Bogaert et al, 2009] T. Van den Bogaert, S. Doclo, J. Wouters, and M. Moonen, Speech enhancement with multichannel wiener filter techniques in multimicrophone binaural hearing aids, J. Acoust. Soc. Am. (JASA), vol. 125, no. 1, pp. 360-371, 2009. [0240] EP2701145A1 (Retune, Oticon) 26.02.2014. [0241] [Brandstein & Ward; 2001] M. Brandstein and D. Ward, Microphone Arrays, Springer 2001. [0242] [Taal et al.; 2011] Cees H. Taal, Richard C. Hendriks, Richard Heusdens, and Jesper Jensen, An Algorithm for Intelligibility Prediction of Time-Frequency Weighted Noisy Speech, IEEE Transactions on Audio, Speech and Language Processing, vol. 19, no. 7, 1 Sep. 2011, pages 2125-2136.