The present invention relates to audio reproduction applications where a desired audio signal is received in an uncontaminated form and interference (e.g. environmental noise) is present as an acoustic signal.
In acoustically noisy environments, listeners often have difficulty hearing a desired audio signal or “signal-of-interest”. For example, a cellular phone user in an automobile may have difficulty understanding the received speech signal through their headset because the noise of the automobile masks the signal-of-interest (i.e., the speech signal received by the cell phone). Many attempts have been made in the past to solve this problem. Some of them are described briefly as follows:
(a) Passive noise attenuating headsets: For the specific application in headset applications, passive noise attenuation is provided by a large and bulky ear cup that physically isolates the environmental (acoustic) noise from the users ear.
(b) Amplification: The incoming electrical signal-of-interest is amplified to overcome the background noise level. If not properly controlled, this can result in dangerously loud output levels. Also, unless the amplification well-controlled it may not provide the desired benefit.
(c) Filtering: The signal is statically filtered to make it more intelligible
(d) Simple Automatic Gain Control (AGC): The signal-of-interest is passed through an automatic gain control (AGC) system in which gain is adjusted based on a level measurement of the noise inside or outside the ear cup. The gain of the AGC is typically controlled by a simple measurement of the overall noise level.
(e) Active noise cancellation (ANC): Anti-noise (generated using either an open- or closed-loop servo system) is generated and added acoustically to the noise signal. For headset applications, sec Bose, Amar, et. al. Headphoning, U.S. Pat. No. 4,455,675. Jun. 19, 1984. and Moy. Chu. Active Noise Reduction in Headphone Systems, Headwize Technical Paper Library, 1999.
(f) Sometimes, these methods are combined: a common scheme for a headset application is to combine a passive noise-attenuating headset with an ANC system (see Bose, Amar, et. al. Headphoning, U.S. Pat. No. 4,455,675. Jun. 19, 1984).
Although these methods are highly effective and reduce the noise for a wide range of applications, they are not always suitable. For example, ANC-requires an accurate noise reference, which may not be available and works only at lower frequencies. Passive noise reduction works well only if sufficient room is available for the sound insulation. Filtering distorts the signal frequency content. AGC systems do not consider the human auditory system and yield sub-optimal results Also, even when these solutions can be applied, applications exist where the power drain of these solutions is prohibitive and a miniature, low power technique is required.
Accordingly, there is a need to solve the problems noted above and also a need for an innovative approach to enhance and/or replace the current technologies.
It is an object of the present invention to provide a novel method and system for improving a signal quality and a signal intelligibility.
In accordance with an aspect of the present invention, there is provided a system for improving a, signal intelligibility over an interference signal, which includes: an analysis filterbank for transforming an information signal in time domain into a plurality of channel information signals in transform domain, a signal, processor for processing the outputs of the analysis filterbank, the signal processor including a psychoacoustic processor for computing a dynamic range using a psycoacoustic model to render the information signal audible over the interference signal, and a synthesis filterbank for combining the outputs of the signal processor to generate an output signal.
The Signal Intelligibility Enhancement (SIE) of the invention is designed to alleviate the disadvantages and shortcomings of the prior art implementations. It can be used in environments where there are very high levels of noise relative to the level of the signal-of-interest. Such environments can result in a very restricted available dynamic range. While it is possible to use simple dynamic range compression methods of earlier systems to map the signal-of-interest into this small dynamic range, the resulting signal fidelity and quality may suffer. In this situation, applying the minimum gain required to make the signal-of-interest audible over the desired noise (and therefore more intelligible) results in improved signal quality. The present invention is therefore directed at determining and applying this minimum gain
According to the present invention, the SIE processing incorporates a psychoacoustic model that calculates, on an on-going basis, the minimum amplification that must be applied to make the signal-of-interest audible over the undesired signal. This results in better fidelity and signal quality.
According to the present invention. Signal Intelligibility Enhancement (STE) algorithm utilizes a measurement of either (1) the level of the outside interference (undesired signal, noise) or (2) the level of the interference (undesired signal, noise) in the headset ear cup or in the ear canal to adaptively adjust the gain and equalization of the signal-of-interest (electrical) so that the intelligibility and audibility of the signal-of-interest is improved. These level measurements are made using frequency band levels alone on in combination using techniques that are well-known in the art and are described in Schneider, Todd A. An Adaptive Dynamic Range Controller, MASc Thesis. University of Waterloo, Waterloo, Ontario, Canada 1991, Schneider & Brennan, A Compression Strategy for a Digital Hearing Aid, Proc ICASSP 1997, Munich, Germany, and Schmidt, John, Apparatus for Dynamic Range Compression of an Audio Signal, U.S. Pat. No. 5,832,444.
In summary, by using the invention, the user can receive a signal with improved SNR (signal-to-noise ratio) that continuously adapts to the user's environment, rendering the signal-of-interest at a comfortable level. This results in improved signal intelligibility, improved perceived signal quality and less user fatigue.
To provide the best possible fidelity, ultra miniaturized size and the lowest possible power consumption, the SIE algorithm is preferably implemented using an oversampled filterbank to separate both the, signal-of-interest and the undesired signal into a number of overlapping, abutting or non-overlapping bands. A suitable oversampled filterbank is described in U.S. Pat. No. 6,236,731 Schneider & Brennan, Filterbank structure and method for filtering and separating an information signal into different bands, particularly for audio signal in hearing aids. The design is advantageously implemented in an architecture that combines a weighted overlap add (WOLA) filterbank, a software programmable DSP core, an input-output processor and non-volatile memory Such an architecture is described in U.S. Pat. No. 6,240,192, Schneider & Brennan, Apparatus for and method of filtering in a digital hearing aid, including an application specific integrated circuit and a programmable digital signal processor.
This invention can be used in any application where it is necessary to improve the intelligibility of a received audio signal containing significant noise white maintaining high fidelity and good signal quality. Typical applications of the invention include headsets used in call centres, mobile phones, and other miniature/portable audio devices when used in noisy environments (e.g., aircraft concerts, factories. etc.).
A further understanding of the other features, aspects, and advantages of the present invention will be realized by reference to the following description, appended claims, and accompanying drawings.
Embodiments of the invention will now be described with reference to the accompanying drawings, in which:
The preferred embodiments will be described with particular reference to the use of a headset by a listener, to which the present invention is principally applied, but not exclusively.
Signal processing algorithms for audio listening applications are commonly called “receive algorithms” (Rx) because the listener wants to hear the received audio signal. A typical application for the Signal Intelligibility Enhancement (SIE) processing of the invention is a headset being used in a noisy environment
If the level of signal-of-interest falls significantly below the level of the noise signal in the ear canal, the signal-of-interest is masked and can be inaudible. The listener also has a maximum signal level that is considered comfortable (Loudness Discomfort Level—LDL). LDL may be a simple frequency-based measurement of a discomfort level (as is well know in the art for audiological hearing assessment and fitting) or it may be a complex measure of psychoacoustic loudness that accounts for signal level within critical bandwidth, frequency content, signal duration or other relevant psychoacoustic parameters. The difference in level between the level of the noise signal and the LDL, which are both functions of frequency, is the effective dynamic range, which also a function of frequency. Because of the level of the undesired sisal (i.e. noise), the listener experiences reduced dynamic range. Remapping the dynamic range of the signal-of-interest in a frequency dependent manner raises its level above the ambient noise making the signal-of-interest audible. However, the amplification must not allow the level of the signal to exceed the maximum signal level that is comfortable for the listener (LDL). The solution is to map the dynamic range of the original signal-of-interest into the available dynamic range of the signal in the presence of environmental noise. This type of signal processing is called dynamic range compression. This mapping is shown for a single frequency band in
A version of this dynamic range compression operation acting as a function of frequency is now described with reference to
In the following descriptions of preferred embodiments all of the paths between the one or more analysis filterbanks and the synthesis filterbank should be considered to have N dimensions (parallel paths), since there are N sub-bands derived by the analysis filterbanks, and each requires a separate path. This consideration also applies to any function blocks interposed between the filterbanks, since each sub-band is to be considered and operated on separately The present invention is particularly applicable where the N>1; although typically N>=16. In some embodiments, these N sub-bands are grouped into K channels, where each channel comprises one or more adjacent sub-bands, and each channel is then processed so that all of the sub-bands within that channel get the same gain.
Referring to
Any differences between these implementations are pointed out in the following description. In a closed loop implementation, equalization is included to account for the acoustics of the signal path (e.g., an acoustic tube that supplies audio to a microphone molded into the ear cup). By contrast, in an open loop implementation, a model of the transfer function from the microphone to the inside of the ear canal is incorporated to account for the attenuation and frequency response of the headset ear cup and acoustic signal path. A model of the output stage can also be included so that the level of the signal-of-interest that may appear in the ear canal, prior to any adaptive equalization, can be approximated
In an open-loop implementation, a separate or shared environmental noise microphone can be used. In the shared microphone case, the same microphone can be used for transmitting a signal (e.g., transmitted speech in a headset application). This reduces costs and simplifies mechanical construction. In this case, a signal or voice activity detector is required to ensure that the noise spectral estimate does not contain any of the transmitted signal.
In operation, the psychoacoustic model incorporated in the psychoacoustic processing block 430 receives the level of the signal-of-interest in frequency sub-bands or combinations of frequency sub-bands (channels) covering the desired signal spectrum as produced by the first (signal-of-interest) WOLA analysis filterbank 405. The psychoacoustic processing block 430, using the level of environmental noise in those same frequency bands or combinations frequency bands (channels) but applied to the environmental noise spectrum as produced by the second (environmental noise) WOLA analysis filterbank 406, then computes dynamic range parameters. These computed parameters are passed to the multi-band compressor 420 that, in turn, applies them to the sub-bands derived by the first (signal-of-interest) WOLA analysis filterbank 405. The multi-band compressor 420 then uses the dynamic range parameters supplied by the psychoacoustic processing block 430 to equalize the signal as a function of frequency thereby improving its audibility or intelligibility. The use of a psychoacoustic model, combined with well-known dynamic range compression techniques, ensures that the output audio is made audible and intelligible over the environmental noise while minimizing perceived distortion and maintaining the quality of the desired signal. The Desired Signal Activity Detector (DSAD) block 410, receives outputs from both WOLA analysis filterbanks 405, 406 and controls the updates to the estimate of the noise spectrum by the spectral estimation block 435 This spectral estimation block 435, described next, provides further information to the psychoacoustic processing block 430. The outputs of the Multi-band compressor 420 are supplied to a synthesis filterbank 450. The synthesis filterbank 450 transforms the outputs the Multi-band compressor 420 to output a time-domain audio signal.
Noise Estimation
An important input to the SIE signal processing carried out in the psychoacoustic processing block 430 is the spectrum of the environmental noise supplied by the second input device 402. The Spectral Estimation block 435 of SIE processing of the invention includes an adaptive estimation technique or a spectral differencing technique. These, together with a desired signal activity detector (DSAD) 410, permit an accurate, uncontaminated estimate of the environmental noise spectrum to be determined. In a further preferred embodiment, the environmental noise is obtained by using a shared-input microphone (see below).
In the open-loop case, noise estimation is done using shared or separate microphones. A DSAD or VAD on the shared or separate microphone controls updates to the spectral estimate of the noise that is derived via spectral analysis from the shared or separate microphone. If speech (or some other signal of interest) is detected on the shared or separate microphone, the spectral estimate of the noise is not updated (Note that spectral differencing and adaptive estimate are not used in the open-loop case.)
In the closed-loop case, a mixed version of the signal plus noise is received by a microphone located inside the ear cup. In this case, we need to remove the signal (which is known since we have an electrical version of it). This is done using spectral differencing or adaptive estimation techniques.
Desired Signal Activity Detector (DSAD)
The DSAD 410 employs techniques well-known in the art to sample the spectrum of the signal when the desired signal is not present (i.e. during pauses or breaks in the desired signal). This ensures that the algorithm does not consider the desired signal (or in the case of a headset application with a shared microphone, the transmitted speech) to be part of the environmental noise.
In embodiments using a closed-loop implementation, when the DSAD 410 indicates that there is no desired signal-of-interest present, the noise spectral image is updated, thereby minimizing contamination of the resultant spectrum by the signal-of-interest. In other embodiments using an open-loop implementation, the DSAD 410 may optionally monitor the environmental noise signal to ensure that transmitted speech or other signals-of-interest do not contaminate the noise spectrum that is supplied as an input to the psychoacoustic model.
In a closed-loop implementation, if the noise spectrum has not been updated for some predetermined time period, the output audio may optionally mute for a brief period of time so that the noise spectrum can be updated without the desired signal being present. Using the DSAD in combination with timed updates (when necessary) ensures that noise spectrum is always current and that it is never contaminated with the desired signal spectrum.
Adaptive Noise Estimation
In a preferred embodiment of the invention, adaptive noise estimation is used that employs techniques that are well-known in the art to estimate the environmental noise, but in the context of an oversampled WOLA sub-band filterbank a technology described in the co-pending patent application, which is filed on the same day by the present applicant entitled “Subband Adaptive Processing in an Oversampled Filterbank” Canadian Patent Application, serial 2,354,808, U.S. application Ser. No. 10/214,057, the disclosure of which is incorporated herein by reference, may also be used.
Adaptive noise estimation requires no breaks in the desired signal-of-interest to estimate the noise. The noise is continuously estimated using the correlation between the contaminated signal derived from the microphone 520 and the desired electrical input signal 501 (the signal-of-interest). The output of the adaptive correlator 525 contains primarily the signal components that are uncorrelated between the desired signal 501 and the desired signal plus noise 520.
Noise Estimation by Spectral Differencing
Spectral differencing takes the difference between a filtered or unfiltered version of the transform domain representation of the signal-of-interest and the transform domain representation of the environmental noise signal. This subtraction can be done in bands or groups of bands. This estimation method is especially advantageous in closed-loop implementations (see below) where the environmental noise signal also contains the signal-of-interest because of the acoustic summation of the environmental noise and SIE processed signal-of-interest.
Filtering the signal-of-interest can be employed to derive a more accurate estimate. Where the filter has a frequency response equivalent or approximately equivalent to the frequency response of the output stage (SIE equalization, amplifiers loudspeaker and acoustics) and microphone, then the subtraction in the transform domain provides an excellent approximation to the uncontaminated (with the signal-of-interest) environmental noise. This filtering may optionally include calibration to null-out transducer or other differences and may be done using one of off-line or on-line line techniques.
Like adaptive estimation, spectral differencing requires no breaks in the desired signal to estimate the noise—the noise is continuously estimated using the spectral difference between the two signals.
a shows a further embodiment in which N sub-bands are combined into K channels, and a further function, related to an estimation of the headset performance characteristics is introduced. Those components duplicating the functions in
Psychoacoustic Processing
Four different strategies for the psychoacoustic model 635, and combinations thereof can be employed to calculate the gains that are applied to the transformed signal domain. The gains are computed to ensure that the processed version of the desired signal is always audible over the environmental noise and that it is always comfortable for the listener. In all cases the LDL gives the upper limit of the dynamic range.
1) The lower limit of the dynamic range is set by the energy of the environmental noise within a frequency band or combination of bands.
2) The lower limit of the dynamic range is set by the level of the environmental noise within a frequency band or combination of bands, multiplied by a factor (X) between 0 and 1, which is adjustable. This factor controls the amount to which the apparatus amplifies low-level signals-of-interest. A lower X results in more dynamic range being available for the signal-of-interest and improves signal quality. Too low an X will mean that at low-levels, the signal-of-interest is masked by the environmental noise.
3) The lower limit of the dynamic range is determined by a complex psychoacoustic model which considers the level, spectral content and spectral nature of both the signal-of-interest and environmental noise to calculate the minimum audible and intelligible level within the noise, as is well known in the art.
4) The lower limit of the dynamic range is set by subtracting the SNR of the signal-of-interest from the energy of the noise within a channel.
In a preferred embodiment, the LDL is calculated using an on-line estimate of the perceived signal loudness based on signal level, with critical bands, frequency content, signal duration or other relevant psychoacoustic parameters.
Multi-Band Compressor
In a preferred embodiment, a component of the psychoacoustic model is a multi-band dynamic range compressor. Dynamic range compression to a smaller effective dynamic range is accomplished by the use of one of several well-known level mapping algorithms. These can be employed with the support of look-up tables or other well-known means to supply the shape of the compression Input vs. Gain Function, otherwise the gains can be directly calculated based on a mathematical formula. Examples of possible level-mapping algorithms are:
1) Straight-Line Compression—where the Input/Gain Function is a straight line as illustrated in
For all level-mapping algorithms, a psychoacoustic model calculates a level to minimize the distortion in a given (sub-band or) channel, by determining what sounds are audible within noise. This information leads to an objective estimation of the quality of the desired signal, enabling the calculation of near-optimal compression parameters. Other level mapping schemes are also possible.
It is often the case that the incoming signal-of-interest is not entirely noise-free. Instead of using compression on the entire dynamic range in his case, it is advantageous to expand (increase dynamic range) for the low-levels of the signal where the noise exists. This is perceived as making the noise quieter in the signal-of-interest and tends to render it inaudible. Where the noise floor of the signal-of-interest is known, the dynamic range re-mapping, previously described with reference to
In order to deliver high perceptual fidelity in all environments, spectral tilt constraints can be implemented. These constraints prevent the invention from over-processing the sound to the point where the output audio is equalized in such a way that it is objectionable or quality is reduced in spectrally shaped noise environments. In a preferred embodiment, the constraints are implemented by enforcing a maximum gain difference between the various channels in the compressor. When processing used in the invention attempts to exceed the maximum gain difference thresholds, a compromise is made in the channels tending to require more extreme adjustment or adaptation, and more or less gain is applied to satisfy the constraints. Other constraints that use more complex means, such as objective measures of speech quality are also possible.
Each individual is unique, and therefore each individual can determine and set his or her own LDL, desired listening level, and growth of loudness. By a process of personalization, key characteristics of the psychoacoustical operation are adjusted for the individual user (in a manner not unlike adjustments to a heating aid). In a preferred embodiment, these parameters are stored using non-volatile memory as part of the psychoacoustic model.
User SIE Level Adjustment
Users of SIE may want to adjust the sensitivity of the signal-processing algorithm. Users adjusting this control, which can be thought of as an advanced volume control, are typically adjusting the level because tow-level sounds are inaudible (not because high-level sounds are in audible) In a preferred embodiment the parameter “X” described above (in Psychoacoustic Processing) may be made user adjustable to control the sensitivity of the SIE algorithm. Other, more advanced embodiments, where the level adjustment provides a parametric input to the psychoacoustic processing block arc possible and are dependent on the specific type of psychoacoustic processing that is employed.
Combination with Active Noise Cancellation
Many headsets today incorporate Active Noise Cancellation (ANC). ANC technology is used to improve signal intelligibility in noisy environments by generating anti-noise that actively cancels the environmental noise. However, ANC is typically only effective for low frequencies because of well-known constraints of feedback systems. By combining the SIE invention with ANC the audio quality and perceptibility is enhanced to a level that cannot be achieved by either method alone
In a further embodiment a combination of STE and ANC processing is implemented using an oversampled WOLA filterbank as a pre-equalizer to an ANC system. The ANC system may be implemented using analog or digital signal processing of a combination of these two. This ANC processing is well-known in the art and is therefore not described. The WOLA measures the pre-equalized residual noise in the ear canal (closed loop ANC) or the outside environmental noise (open loop ANC) and uses the resultant spectral information as input to a psychoacoustic model that provides dynamic range parameters for the pre-equalizer.
Binaural Operation
When used in a stereo audio system (e.g., binaural headset or in headphones). joint-channel processing extensions for SIE wan be incorporated. Two cases are considered:
Having only one noise measurement for the SIE algorithm is important since a stereo compressor scheme (possibly with independent noise measurements) may lead to undesired independent channel adjustment and a consequent reduction in perceived audio quality. When there is only one measure of the environmental noise for the user, both right and left sides of the SIE processing scheme use the same information. In the case of a stereo signal-of-interest, two SIE processing apparatus use the same environmental noise level to control the subsequent processing of each audio stream.
In one embodiment shown in
The feedback path comprising 1025. 1030, 1035 and 1015 (or 1056, 1060, 1062 and 1050) implements the combination an ANC system combined with SIE as described previously.
Shared Noise Microphone
A further embodiment of the SIE invention is used in an open-loop configuration (typically used in telecommunications headset), shown in
In other embodiments, algorithms to restore the transmitted signal can also be incorporated with open-loop microphone-sharing SIE system of
In an alternative embodiment (not shown in
Note that front end processing techniques such as DSAD, adaptive noise estimation or spectral differencing noise estimation can be used in any open-loop configuration. Other front-end processing (like directional processing) allows some separation of the speech from noise thereby improving performance.
Other features and aspects of the present invention, and the advantages associated therewith are described below:
1) Signal intelligibility is improved. At the same time, signal fidelity and quality are maintained, and perceived quality can improve in noisy environments.
2) The use of psychoacoustic models and high-fidelity, constrained dynamic range adaptation means that the utility of the dynamic range is maximized (where dynamic range is the level difference between the minimum signal level that is audible above the noise and the maximum allowable signal level). This results in excellent signal quality and fidelity.
3) The design can be implemented using ultra low-power, sub-miniature technology that is suitable for incorporation directly into a headset or other low-power, portable audio applications (see U.S. Pat. No. 6,240,192 Schneider & Brennan, Apparatus for and method of filtering in a digital hearing aid, including an application specific integrated circuit and a programmable digital signal processor). Implementations using oversampled filterbanks (see U.S. Pat. No. 6,236,731 Schneider & Brennan, Filterbank structure and method for filtering and separating an information signal into different bands, particularly for audio signal in hearing aids) provide a high-fidelity, ultra low-power solution that are ideal for portable, low-power audio applications.
4) When combined with a closed-loop, active noise cancellation (ANC) system, advantage can be taken of the fact that they both require means to measure the undesired noise at a point close to the output transducer. As a result the same microphone (located near the output transducer) can be used for both the measurement of the signal to generate the “anti-noise” and to provide the residual level measurement from which to compute the input level estimate required for the signal intelligibility enhancement (SIE) processing. This combined approach works better than either method alone because ANC is limited to providing benefit at low frequencies (because of design considerations) and the signal intelligibility enhancement provides benefit at higher frequencies. Using the same microphone reduces costs and simplifies the system. In many listening situations, low-frequency noise dominates. Here, the use of ANC at low frequencies to reduce the noise increases the available dynamic range, which results in improved fidelity relative to either method (ANC or SIE) being used alone.
5) In cases where the signal-of-interest contains noise, the signal-of-interest can be processed, using a psychoacoustic model and/or low-level expansion, such that the level of the noise is effectively below the acoustic signal level (or the residual signal level if ANC is being applied). When this is properly implemented, the listener perceives less noise.
6) Single-microphone noise reduction techniques can be incorporated into the signal-of-interest channel as described in the PCT/Canadian Patent Application PCT/CA98/00331 Brennan, Robert, Method and Apparatus for Noise Reduction, Particularly in Hearing Aids. This provides a signal for the listener that is more audible (relative to the environmental noise) and less tiring to listen to for extended periods of time because the processed signal-of-interest contains less noise.
7) When used with a Desired Signal Activity Detector (DSAD), an implementation is able to differentiate between a signal-of-interest and the environmental noise (interference). This ensures that the estimate of the noise signal does not become contaminated with the signal-of-interest, allowing voice communications to be clearer with higher intelligibility.
8) In an alternative embodiment of the invention, an adaptive filter is used to correlate the contaminated signal (signal+noise) with the uncontaminated electrical signal so that an estimate of the noise can be derived. This provides a more reliable estimate of the noise signal that is contaminating the signal-of-interest. Employing this technique provides improved signal fidelity.
9) In an alternative embodiment of the invention, a spectral differencing technique is used to estimate the spectral content of the environmental noise. This provides a more reliable estimate of the noise signal that is contaminating the signal-of-interesting. This processing also improves signal fidelity.
10) With a multi-band implementation of the compressor component (ranges of frequency are treated independently as opposed to compressing the entire spectrum uniformly) more accurate mapping in the residual dynamic range can be made and the overall perceived audio quality is improved as described in Schneider & Brennan, A Compression Strategy for a Digital Hearing Aid, Proc ICASSP 1997, Munich, Germany Treating frequency bands independently of one another allows for greater freedom to produce high-fidelity compression. Furthermore, constraining the relative compression levels of the frequency ranges so a predetermined maximum amount of frequency shaping may occur, maintains the signal quality across a wide range of noise environments. This ensures that frequency localized noise sources are better handled.
11) Using a multi-band and/or adaptive level measurement of the noise allows an implementation to smoothly handle any changes of noise environment. It also protects against undesirable distortion, which would otherwise be caused by drastic changes in the environmental noise. See Schneider. Todd A. An Adaptive Dynamic Range Controller. MASc Thesis, University of Waterloo, Waterloo, Ontario, Canada, 1991, and Schneider & Brennan, A Compression Strategy for a Digital Hearing Aid, Proc. ICASSP 1997, Munich, Germany.
12) A safety system is implicitly incorporated into the invention. The signal processing does not amplify desired sounds above the user's Loudness Discomfort Level (LDL). This is a safety feature designed to help protect the user's hearing in very high noise environments. It, along with the other adjustments provided by the invention, provide the opportunity to personalize an implementation to a specific user.
While the present invention has been described with reference to specific, embodiments, the description is illustrative of the invention and is not to be construed as limiting the invention. Various modifications may occur to those skilled in the art without departing from the true spirit and scope of the invention as defined by the appended claims.
Number | Date | Country | Kind |
---|---|---|---|
2354755 | Aug 2001 | CA | national |
Number | Name | Date | Kind |
---|---|---|---|
5388185 | Terry et al. | Feb 1995 | A |
6236731 | Brennan et al. | May 2001 | B1 |
6240192 | Brennan et al. | May 2001 | B1 |
Number | Date | Country |
---|---|---|
PCTCA9800331 | Oct 1998 | WO |
PCTCA0000434 | Nov 2000 | WO |
Number | Date | Country | |
---|---|---|---|
20030198357 A1 | Oct 2003 | US |