The invention concerns a method for detection of own voice activity to be used in connection with a communication device. According to the method at least two microphones are worn at the head and a signal processing unit is provided, which processes the signals so as to detect own voice activity.
The usefulness of own voice detection and the prior art in this field is described in DK patent application PA 2001 01461, from which PCT application WO 2003/032681 claims priority. This document also describes a number of different methods for detection of own voice.
However, it has not been proposed to base the detection of own voice on the sound field characteristics that arise from the fact that the mouth is located symmetrically with respect to the user's head. Neither has it been proposed to base the detection of own voice on a combination of a number individual detectors, each of which are error-prone, whereas the combined detector is robust.
From DK PA 2001 01461 the use of own voice detection is known, as well as a number of methods for detecting own voice. These are either based on quantities that can be derived from a single microphone signal measured e.g. at one ear of the user, that is, overall level, pitch, spectral shape, spectral comparison of auto-correlation and auto-correlation of predictor coefficients, cepstral coefficients, prosodic features, modulation metrics; or based on input from a special transducer, which picks up vibrations in the ear canal caused by vocal activity. While the latter method of own voice detection is expected to be very reliable it requires a special transducer as described, which is expected to be difficult to realise. In contradiction, the former methods are readily implemented, but it has not been demonstrated or even theoretically substantiated that these methods will perform reliable own voice detection.
From U.S. publication No.: US 2003/0027600 a microphone antenna array using voice activity detection is known. The document describes a noise reducing audio receiving system, which comprises a microphone array with a plurality of microphone elements for receiving an audio signal. An array filter is connected to the microphone array for filtering noise in accordance with select filter coefficients to develop an estimate of a speech signal. A voice activity detector is employed, but no considerations concerning far-field contra near-field are employed in the determination of voice activity.
From WO 02/098169 a method is known for detecting voiced and unvoiced speech using both acoustic and non-acoustic sensors. The detection is based upon amplitude differences between microphone signals due to the presence of a source close to the microphones.
The object of this invention is to provide a method, which performs reliable own voice detection, which is mainly based on the characteristics of the sound field produced by the user's own voice. Furthermore the invention regards obtaining reliable own voice detection by combining several individual detection schemes. The method for detection of own vice can advantageously be used in hearing aids, head sets or similar communication devices.
The invention provides a method for detection of own voice activity in a communication device wherein one or both of the following set of actions are performed,
The microphones may be either omni-directional or directional. According to the suggested method the signal processing unit in this way will act on the microphone signals so as to distinguish as well as possible between the sound from the user's mouth and sounds originating from other sources.
In a further embodiment of the method the overall signal level in the microphone signals is determined in the signal processing unit, and this characteristic is used in the assessment of whether the signal is from the users own voice. In this way knowledge of normal level of speech sounds is utilized. The usual level of the users voice is recorded, and if the signal level in a situation is much higher or much lower it is than taken as an indication that the signal is not coming from the users own voice.
According to an embodiment of the method, the characteristics, which are due to the fact that the microphones are in the acoustical near-field of the speaker's mouth are determined by a filtering process in the form of FIR filters, the filter coefficients of which are determined so as to maximize the difference in sensitivity towards sound coming from the mouth as opposed to sound coming from all directions by using a Mouth-to-Random-far-field index (abbreviated M2R) whereby the M2R obtained using only one microphone in each communication device is compared with the M2R using more than one microphone in each hearing aid in order to take into account the different source strengths pertaining to the different acoustic sources. This method takes advantage of the acoustic near field close to the mouth.
In a further embodiment of the method the characteristics, which are due to the fact that the user's mouth is placed symmetrically with respect to the user's head are determined by receiving the signals x1(n) and x2(n), from microphones positioned at each ear of the user, and compute the cross-correlation function between the two signals: Rx
The combined detector then detects own voice as being active when each of the individual characteristics of the signal are in respective ranges.
where the vector notation
w=[w10 . . . wML−1]T, x=[x1(n) . . . xM(n−L+1)]T
has been introduced. Here M denotes the number of microphones (presently M=3) and wml denotes the l th coefficient of the m th FIR filter. The filter coefficients in w should be determined so as to distinguish as well as possible between the sound from the user's mouth and sounds originating from other sources. Quantitatively, this is accomplished by means of a metric denoted ΔM2R, which is established as follows. First, Mouth-to-Random-far-field index (abbreviated M2R) is introduced. This quantity may be written as
where YMo(f) is the spectrum of the output signal y(n) due to the mouth alone, YRff(f) is the spectrum of the output signal y(n) averaged across a representative set of far-field sources and f denotes frequency. Note that the M2R is a function of frequency and is given in dB. The M2R has an undesirable dependency on the source strengths of both the far-field and mouth sources. In order to remove this dependency a reference M2Rref is introduced, which is the M2R found with the front microphone alone. Thus the actual metric becomes
ΔM2R(f)=M2R(f)−M2Rref(f).
Note that the ratio is calculated as a subtraction since all quantities are in dB, and that it is assumed that the two component M2R functions are determined with the same set of far-field and mouth sources. Each of the spectra of the output signal y(n), which goes into the calculation of ΔM2R, can be expressed as
where Wm(f) is the frequency response of the m th FIR filter, ZSm(f) is the transfer impedance from the sound source in question to the m th microphone and qs(f) is the source strength. Thus, the determination of the filter coefficients w can be formulated as the optimisation problem
where |·| indicates an average across frequency. The determination of w and the computation of ΔM2R has been carried out in a simulation, where the required transfer impedances corresponding to
where fs is the sampling frequency. By limiting WNG to be within 15 dB the simulated performance is somewhat reduced, but much improved agreement is obtained between simulation and results from measurements, as is seen from the right-hand side of
Considering an own voice detection device according to the invention,
Rx
As above, the final stage regards the application of a detection criterion to the output Rx
Number | Date | Country | Kind |
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2003 00288 | Feb 2003 | DK | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/DK2004/000077 | 2/4/2004 | WO | 00 | 5/12/2006 |
Publishing Document | Publishing Date | Country | Kind |
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WO2004/077090 | 9/10/2004 | WO | A |
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