The invention is generally related to a method for identifying an acoustic scene, and more particularly to optimize the effectiveness of a hearing device for its user in all situations including the adaptation to varying acoustic environments or scenes.
Modern day hearing aids, when employing different hearing programs, permit their adaptation to varying acoustic environments or scenes. The hearing program can be selected either via a remote control a by means of a selector switch on the hearing device itself. For many users, however, having to switch program settings is a nuisance, or difficult, or even impossible. Nor it is always easy even for experienced wearers of hearing devices to determine at what point in time which program is most comfortable and offers optimal speech discrimination. An automatic recognition of the acoustic scene and corresponding automatic switching of the hearing program settings in the hearing device is therefore desirable.
There exist several different approaches to the automatic classification of acoustic scenes or of an acoustic input signal, respectively. All of the methods concerned involve the extraction of different features from the input signal, which may be derived from one or several microphones in the hearing device. Based on these features, a pattern recognition device employing a particular algorithm makes the determination as to the attribution of the analyzed signal to a specific acoustic scene. These various existing methods differ from one another both in terms of the features on the basis of which they define the acoustic scene (signal analysis) and with regard to the pattern recognition device, which serves to classify these features (signal identification).
From the publication of the international patent application having the publication file No. WO 01/20965 a method and a device for identifying an acoustic scene are known. Described is a single-stage process in which an acoustic input signal is processed in a feature extraction unit and, afterwards, in a classification unit, in which the extracted features are classified to generate class information. Good results are obtained by this known teaching in particular if audio-based features are also extracted. An improvement is desirable particularly in the field of hearing devices, since in this application field the classification of acoustic scenes must be very accurate. At the same time, the occurrence of several very broad sound classes, as e.g. music or noise, cause greater difficulties. It corresponds to the nature of these sound classes that they are very general and broad, i.e. their occurrence may be in manifold manner. The sound class “noised”, for examples comprises very different sounds as e.g. background noise resulting from discussions, train station noise, hair dryer noise, and the sound class “music” comprises for example pop music, classic music, single instruments, singing, etc.
Especially because of the very general nature of these sound classes, it is very difficult to obtain a good recognition rate with the aid of the known processing methods in a feature extraction unit and a following classification unit. In fact, the robustness of the recognition system can be improved by the selection of features as has been described in WO 01/20965 for the first time, namely by using auditory-based features. Nevertheless, it is very difficult to separate between different general sound classes in a clear and doubtless manner, because of the high variance of these general sound classes.
It is therefore an object of this invention to introduce a method for identifying an acoustic scene, which is more reliable and more precise compared to prior art methods.
The foregoing and other objects of the invention are achieved by processing an acoustic input signal in a multistage process in which at least two classification stages are implemented, whereas each stage preferably comprises an extraction phase and an identification phase. The present invention has the advantage to obtain a very robust and precise classification of the momentary acoustic scene. The present invention allows preventing successfully a wrong classification of, for example, pop music in the sound class of “speech in noise”. In addition, the present method allows a breakdown of a general sound class, as for example noise, in subclasses, as for example traffic noise or background noise resulting from discussions. Special situations, as for example in-the-car noise, can also be recognized. In general, room characteristics can be identified and taken into consideration correspondingly in further processing of important signal parts. Furthermore, the present invention can be used to localize sound sources, whereby the possibility is obtained to detect the occurrence of a specific sound source in a mixture of several other sound sources.
The present invention is not only directed to a method for identifying an acoustic scene, but also to a corresponding device and, in particular, to a hearing device, whereas under the term hearing device it is intended to include hearing aids as used to compensate for a hearing impairment of a person, but also all other acoustic communication systems, such as radio transceivers and the like. Furthermore, the present invention is also suitable to incorporate into implantable devices.
In the following, the invention is explained in more detail by way of an example with reference to drawings. Thereby, it is shown in:
An acoustic input signal IN, which has been recorded by a microphone, for example, is fed to the feature extraction unit F in which characteristic features are extracted.
For the extraction of features in audio signals, J. M. Kates in his article titled “Classification of Background Noises for Hearing-Aid Applications” (1995, Journal of the Acoustical Society of America 97(1), pp. 461–469) suggested an analysis of time-related sound level fluctuations and of the sound spectrum. On its part, the European Patent EP-B1-0 732 036 proposed an analysis of the amplitude histogram for obtaining the same result. Finally, the extraction of features has been investigated and implemented based on an analysis of different modulation frequencies. In this connection, reference is made to the two papers by Ostendorf et al, titled “Empirical classification of different acoustic signals and of speech by means of a modulation frequency analysis” (1997, DAGA 97, pp. 608–609), and “Classification of acoustic signals based on the analysis of modulation spectra for application in digital hearing aids” (1998, DAGA 98, pp. 402–403). A similar approach is described in an article by Edwards et al. titled (Signal-processing algorithms for a new software-based, digital hearing device” (1998, The Hearing Journal 51, pp. 44–52). Other possible features include the sound level transmission itself or the zero-crossing rate as described e.g. in the article by H. L. Hirsch, titled “Statistical Signal Characterization” (Artech House 1992). So far, the features being used for the analysis of audio signals are strictly technically-based.
Furthermore, it has been pointed out in the already mentioned publication of the International Patent Application WO 01/20965 that besides the mentioned technical features the use of auditory-based features is very advantageous.
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In
The embodiment generally represented in
By the feature extraction unit F1, the features tonality, spectral center of gravity (CGAV), fluctuation of the spectral center of gravity (CUSS) and spectral width and settling time are being extracted and classified in the classification unit C1, in which a HMM—(Hidden Markov Model) classifier is being used, whereby the input signal IN is classified in one of the following classes by the HMM classifier: “speech”, “speech in noise”, “noise” or “music”. This result is referred to as class information KI. The result of the first processing stage S1 is fed to the classification unit C2 of the processing S2 in which a second set of features is being extracted using the feature extracting unit F2. Thereby, the additional feature variance of the harmonic structure (pitch)—also referred to a Pitchvar in the following—is being extracted besides the features tonality, spectral center of gravity and fluctuation of the spectral gravity. On the basis of these features the result of the first processing stage S1 will be verified and, if need be, corrected. The verification is being done with the aid of a rule-based classifier in the classification unit C2. The rule-based classifier contains a few simple heuristic decisions only, which are based on the four features and which are orientated at the following reflections:
The feature tonality will be used in each class for the correction if the value of the feature completely lies outside of a valid value range of the class information KI1, which has been determined in the first classification unit C1—i.e. by the HMM classifier. It is expected that the tonality for “music” is high, for “speech” it is in the middle range, for “speech in noise” it is a little bit lower and for “noise” it is low. If, for example, an input signal IN falls into the class “speech” by the classification unit C1 then it is expected that corresponding features which have been determined in the feature extraction unit F1 have indicated to the classification unit C1 that the relevant signal part in the input signal IN is strongly fluctuating. If, on the other side, the tonality for this input signal IN is very low, the correct class information will not be “speech” with high probability but “speech in noise”. Similar considerations can be carried out for the other three features, namely for the variance of the harmonic structure (Pitchvar), the spectral center of gravity ((CGAV) and for the fluctuation of the spectral gravity (CGFS). Accordingly, the rules for the rule-based classifier which is implemented in the classification unit C2 can be formulated as follows:
For this embodiment of the present invention the recognition has even emerged as a surprise, namely that almost the same features are used in the second processing stage S2 as have been used in the first processing stage S1. Furthermore, it can be noted that the feature tonality is best suitable in order to correct an error which has been generated by the classification unit C1. After all, it can be noted that the tonality is most important for the use of the rule-based classifier.
A test of the afore described embodiment has revealed that for the simple process having two stages the hit rate improved by at least 3% compared to the single-stage process. In several cases it has been possible to improve the hit rate by 91%.
In
In continuation of the embodiment according to
In a classification system according to the present invention having several processing stages S1 to Sn a task can be assigned to each of the processing stages S1 to Sn, although it is not mandatory, as for example: a coarse classification, a fine classification, a localization of a sound source, a verification whether a certain sound source, e.g. in-the-car noise, exists, or an extraction of certain signal parts of an input signal, e.g. the elimination of echo as a result of certain room characteristics. Each of the processing stages S1 to Sn are therefore individual in the sense that, for each stage, different features are extracted and different classification methods are being used,
In a further embodiment of the present invention, it is provided to locate an individual signal in a mixture of different signal parts in a first processing stage S1, to implement a coarse classification of the located signal source in a second processing stage S2, and to implement a fine classification of the coarse classification obtained in the second processing stage S2.
Furthermore, a direction filtering can follow the localization of a sound source performed in the first processing stage, e.g. by using the Multi-Microphone Technology.
Naturally, a feature extraction unit F1, . . . , Fn can be subdivided into several classification units C1, . . . , Cn, i.e. the results of a feature extraction unit F1, . . . , Fn can be used by several classification units C1, . . . , Cn. Furthermore, it is feasible that a classification unit C1, . . . , Cn can be used in several processing stages S1 to Sn. Finally, it is possible that the class information KI1 to KIn or the revised class information KI1′ to KIn′ obtained in the different processing stages S1 to Sn are weighted differently in order to obtain a final classification.
In
The processing units P1 to Pn may also be implemented in the embodiment according to
In
It has to be noted that the feedback signals and connections of the processing units of the embodiments according to
Furthermore, it is feasible that—applying the present invention for hearing devices—the several processing stages are distributed between two hearing devices, i.e. one hearing device located at the right ear, the other hearing device located at the left ear. For this embodiment, the information exchange is provided by a wired or a wireless transmission link.
In
By the reference sign 300, a manual input unit is identified by which—for example over a wireless link as schematically represented in FIG. 7—the multistage processing unit 100, as described above, or the transfer unit 200 are affected, if need be. In the case of the hearing device 200 reference is made to WO 01/20965 again which content is herewith integrated.
As possible classification method, one of the following methods can be used for all described embodiments of the present invention:
Finally, it has to be noted that technical and/or auditory based features can be extracted in the feature extraction units F1 to Fn (
The preferred use of the present invention for identifying the acoustic scene is the selection of a hearing program in a hearing device. It is also conceivable to use the present invention for speech detection and speech analysis, respectively.
Number | Name | Date | Kind |
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5596679 | Wang | Jan 1997 | A |
5604812 | Meyer | Feb 1997 | A |
5819217 | Raman | Oct 1998 | A |
6721701 | Goss et al. | Apr 2004 | B1 |
Number | Date | Country |
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0 732 036 | Aug 1994 | EP |
0 814 636 | Jun 1996 | EP |
0 1 76321 | Oct 2001 | WO |
01 20965 | Nov 2001 | WO |
Number | Date | Country | |
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20030144838 A1 | Jul 2003 | US |