The present invention is related to methods to adjust parameters of a transfer function of a hearing device as well as to a hearing device.
Automatic classification of acoustic environment (or acoustic scene) is an essential part of an intelligent hearing device. In the hearing device, the acoustic scene is identified using features of the sound signals collected from that particular acoustic scene. Therewith, parameters and algorithms defining the input/output behavior of the hearing device are adjusted accordingly to maximize the hearing performance. A number of methods of acoustic classification for hearing devices have been described in US-2002/0 037 087 A1 or US-2002/0 090 098 A1. The fundamental method used in scene classification is the so-called pattern recognition (or classification), which range from simple rule-based clustering algorithms to neural networks, and to sophisticated statistical tools such as hidden Markov models (HMM). Further information regarding these known techniques can be found in one of the following publications, for example:
Pattern recognition methods are useful in automating the acoustic scene classification task. However, all pattern recognition methods rely on some form of prior association of labeled acoustic scenes and resulting feature vectors extracted from the audio signals belonging to these acoustic scenes. For instance in a rule-based clustering algorithm, it is necessary to set proper thresholds for feature comparisons to differentiate one acoustic scene from other acoustic scenes. These thresholds on feature values are obtained observing a set of audio signals for their characteristics associated with certain acoustic scenes. Another example is an HMM-(Hidden Markov Model) classifier: one adjusts the parameters of a HMM for each acoustic scene one would like to recognize using a set of training data. Then in the actual processing stage, each HMM structure processes the observation sequence and produces a probability score indicating the probability of the respective acoustic scene. The process of associating observations with labeled acoustic scenes is called training of the classifier. Once the classifier has been trained using a training data set (training audio), it can process signals that might be outside the training set. The success of the classifier depends on how well the training data can represent arbitrary data outside the training data.
An objective of the present invention is to provide a method that has an improved reliability when classifying or estimating a momentary acoustic scene.
A method to adjust parameters of a transfer function of a hearing device is disclosed, the method comprising the steps of extracting features of an input signal fed to the hearing device, classifying the extracted features into one of several possible classes, selecting a class corresponding to a best estimate of a momentary acoustic scene, adjusting at least some of the parameters of the transfer function in accordance with the selected class representing the best estimated momentary acoustic scene, and training the hearing device to improve classification of the extracted feature or the best estimate of the momentary acoustic scene, respectively, during regular operation of the hearing device.
Alternatively, a method to adjust parameters of a transfer function of a hearing device is disclosed, the method comprising the steps of extracting features of an input signal fed to the hearing device, classifying the extracted features into one of several possible classes, selecting a class corresponding to a best estimate of a momentary acoustic scene, adjusting at least some of the parameters of the transfer function in accordance with the selected class representing the best estimated momentary acoustic scene, surveying a control input to the hearing device, activating a training phase as soon as the control input is being activated, training the hearing device during a training phase by improving the best estimate of the momentary acoustic scene, whereas the hearing device is regularly operated during the training phase.
Furthermore, a hearing device is disclosed, comprising at least one microphone to generate at least one input signal a main processing unit to which the at least one input signal is fed, a receiver operationally connected to the main processing unit, means for extracting features of the at least one input signal, means for classifying the extracted features into one of several possible classes, means for selecting a class corresponding to a best estimate of a momentary acoustic scene, means for adjusting at least some of the parameters of a transfer function between the at least one microphone and the receiver in accordance with the best estimated momentary acoustic scene, and training means to improve the best estimate of the momentary acoustic scene during regular operation.
Alternatively to the above-described, a hearing device is disclosed, comprising at least one microphone to generate at least one input signal a main processing unit to which the at least one input signal is fed, a receiver operationally connected to the main processing unit, means for extracting features of the at least one input signal, means for classifying the extracted features into one of several possible classes, means for selecting a class corresponding to a best estimate of a momentary acoustic scene, means for adjusting at least some of the parameters of a transfer function between the at least one microphone and the receiver in accordance with the best estimated momentary acoustic scene, means for surveying a control input, means for activating a training phase as soon as the control input is being activated, training means for training the hearing device during a training phase by improving the best estimate of the momentary acoustic scene, whereas the main processing unit and the training means are operated simultaneously.
The present invention has one or several of the following advantages: By training the hearing device to improve the best estimate of the momentary acoustic scene during regular operation of the hearing device, a significant and increasing amount of data is presented to the hearing device. As a result, the hearing device does not only improve its behavior when new data is presented lying outside of known training data, but the hearing device is also better and faster adapted to most common acoustic scenes, with which the hearing device user is confronted. In other words, the acoustic scenes which are most often present for a particular hearing device user will be classified rather quickly with a high probability that the result is correct. Thereby, an initial training data set (as used in state of the art training) can be rather small since the operation and robustness of the classifier in the hearing device will be improved in the course of time.
The present invention will be further described by referring to drawings showing exemplified embodiments of the present invention. It is shown in:
a and 6B a hearing device user confronted with different sound sources in order to illustrate a fourth embodiment of the present invention.
In order to extract certain features from the input signals i1(t) to ik(t)—or in case of a digital hearing device I1(n) to Ik(n)—, the main processing unit 2 is operationally connected to the feature extraction unit 4, in which the features f1, f2 to fi are generated that are fed to the classifier unit 5 as well as to the trainer unit 6. The features f1, f2 to fi are classified in the classifier unit 5 in order to estimate the momentary acoustic scene, which is used to adjust the transfer function G in the main processing unit 2. Therefore, the classifier unit 5 is operationally connected to the main processing unit 2. According to the present invention, the trainer unit 6 is used to improve the estimation of the momentary acoustic scene and is therefore also operationally connected to the classifier unit 5. The operation of the trainer unit 6 is further described below.
It is expressly pointed out that all of the blocks shown in the block diagram of
Even though this invention applies to all classifiers in general, and, respectively, to all pattern recognition methods, the present invention is further explained by using a rule-based classifier or a HMM (Hidden Markov Model), respectively, which represent more or less the two ends of the spectrum of pattern recognition algorithms in the scale of complexity.
The Hidden Markov Model (HMM) is a statistical method for characterizing time-varying data sequences as a parametric random process. It involves dynamic programming principle for modeling the time evolution of a data sequence (the so-called context dependence), and hence is suitable for pattern segmentation and classification. The HMM has become a useful tool for modeling speech signals because of its pattern classification ability in the areas of speech recognition, speech enhancement, statistical language modeling, and spoken language understanding among others. Further information regarding these techniques can be obtained from one of the above referenced publications.
Acoustic scene classification is usually performed in two main steps: The first step is the extraction of feature vectors (or, simply features) from the acoustical signals such that the characteristics of the signals can be represented in a lower dimensional form. There are various features that can be extracted from audio signals including amplitude and spectral characteristics, spatial characteristics (location of sound sources, number of sound sources), onset/offset, pitch, coherence, level of reverberation, etc. These features are either monaural or binaural in a binaural hearing device (for a multi-aural hearing system, it is also possible to have multi-aural features).
In the second step, a pattern recognition algorithm identifies the class that a given feature vector belongs to, or the class that is the closest match for the feature vector.
The class that has the highest probability is the best estimate of a momentary acoustic scene. Therefore, the transfer function G of the main processing unit 2, i.e. the transfer function of the hearing device, is adjusted in order to be best suited for the detected momentary acoustic scene.
The present invention proposes to incorporate an on-the-fly training, i.e. during regular operation, of the classifier in order to improve its capability to classify the extracted features, therewith improving the selection of the most appropriate hearing program or transfer function G, respectively, of the hearing device.
In the following, several examples for the method of the present invention are described. It is pointed out that the different examples may be arbitrarily combined and that the skilled artisan may develop further embodiment without departing the concept of the present invention.
The first method of training involves the hearing device user. As the acoustic scene changes, the hearing device user sets the hearing device to training mode after setting the parameters of the hearing device such that the hearing performance is optimised. As far as the hearing device user keeps the training mode on, the hearing device trains its classifier unit 5 for the particular acoustic scene and records the settings of the hearing device for this particular acoustic scene as operational parameters.
If the acoustic scene permits, unattended training is also possible: after setting the parameters, the hearing device user takes off the hearing device and places it in the acoustic scene (e.g. in front of a CD-(compact disc) player for music training), which might provide hours of training.
This first method is depicted in
A further method according to the present invention does not necessarily involve the hearing device user. It is assumed that the classifier has already been trained, but not with a large set of data. In other words, a so-called crude classifier determines the momentary acoustic scene. When a classifier is not trained well, it is hard for it to produce definite decisions if the real life data is temporally short, such as in rapidly changing acoustic scenes. However, if the real life data is long enough, the reliability of the classifier output gets higher. This second method utilizes this idea. In this case the training mode is turned on either by the user, e.g. via the switch unit 7 (
The method is depicted in
A further embodiment of the method according to the present invention combines the example 1 and 2 as described above, in that the existing classes will be further trained, while new classes can be added to the classifier as new acoustic scenes are available.
A yet another embodiment of the method according to the present invention involves sound source separation. This is more of a training and classification of separate sound sources. For training, some involvement of the hearing device user is required for the separation of the sound source and for turning on the training mode. For separation of the sound source, instead of a sophisticated source separation algorithm or somehow marking a source, a narrow-beam forming can be used with the main beam directed towards the straight-ahead (0 degrees) direction, so that the source is separated as long as the hearing device user rotates his/her head to keep the source in straight-ahead direction. This will isolate the targeted source and as far as the training mode is on, the classifier will be trained for the targeted source. This will be quite useful, for instance, in speech sources. Speech recognition also can be incorporated into such a system.
The method is depicted in
A further embodiment of the method according to the present invention is similar to example 4, that is, a sound source is separated and the classifier is trained for that sound source. However, in this embodiment, the sound source is tracked intelligently by the beamformer even if the hearing device user does not turn towards the sound source. This requires a somewhat more sophisticated sound source separation algorithm such that a sound source can be selected and tracked. In this embodiment, one possible input from the user might be the nature of the sound source that the training is to be done for. For instance, if speech is chosen, the sound source separation algorithm looks for a dominant speech source to track. A possible algorithm to perform this task has been described in EP-1 303 166, which corresponds to U.S. patent application with Ser. No. 10/172 333.
This embodiment of the present invention is further illustrated in
A further embodiment of the method according to the present invention is an implementation of an alternative realisation of the automatic sound source tracking described in example 5. Here the sound source tracking is not done by a narrow beam of the beamformer, but by any other means, in particular by sound source marking and tracking means. These sound source marking and tracking means can include, for example, tracking an identification signal sent out by the source (e.g. an FM signal, an optical signal, etc.), or tracking a stimulus sent out by the hearing device itself and reflected by the source, as for example by providing a transponder unit in the vicinity of the corresponding sound source. These two possibilities have been described in connection to a key person communication system allowing the hearing device to identify the direction of a key person onto which the beam of the beamformer shall be directed, In this connection, reference is made to EP-1 303 166, which corresponds to U.S. patent application with Ser. No. 10/172 333.