This application claims the benefit and priority to and is a U.S. National Phase of PCT International Application Number PCT/DK2007/050142, filed on Oct. 5, 2007, designating the United States of America and published in the English language, which is an International Application of and claims the benefit of priority to European Patent Application No. EP 06124745.8, filed on Nov. 24, 2006. The disclosures of the above-referenced applications are hereby expressly incorporated by reference in their entireties.
The present invention is related to the processing of signals from microphone devices, and in particular to noise reduction techniques in such devices. The invention is concerned with identification of a desired signal in a mix of an undesired noise signal and a desired signal, and the improvement of the signal quality by reducing the influence on the desired signal by the undesired noise levels. The new invention is a method and corresponding devices that are capable of attenuating noise components in microphone signals.
The masking properties of the human ear as well as the statistical properties of speech makes it possible to reduce the subjective level of noise in microphone signals by the way of time-variant filtering. When the statistics of the noise signal is stationary it is possible to perform noise reduction by the way of time-variant filtering in devices that encompasses a single microphone only. One of the earliest to describe such a method for noise reduction was Boll, [1]. Boll called his method “Spectral Subtraction” as he measured the power spectrum of the noise and reduced the spectral power of the output signal by an amount equal to the measured noise power. Many have later treated the subject of single microphone noise reduction, for example Ephraim and Malah, [2].
Single microphone noise reduction techniques suffer from two limitations, the first being the need for stationary noise statistics and the second being that they require the signal to noise ratio of the microphone input to exceed a certain minimal value. If a device includes two or more microphones it is possible to use the increased amount of information at hand to improve noise reduction performance. Past work, for example [3], [4], [5], [6], [7], [8] has shown that a relief from the need for stationary noise statistics is possible.
Known techniques include the use of a time delay signal [5], a measurement of angle of incidence [7] and a measurement of microphone level difference [3], [6], [7] to control the frequency response of the device. A method has been described [8] where the frequency is controlled by the quotient of the absolute values of the outputs of two different linear beamformers.
Current methods for noise reduction by the way of time-variant filtering using one or two microphones suffer from the limitation that a certain signal to noise ratio is required of the acoustic signal in order for the methods to work.
Hence it is an object of the present invention to provide a new and improved signal processing technique for filtering signals from microphone devices which is not subject to the above mentioned limitation, but which can provide noise filtering and noise reduction at low signal to noise ratios.
The above mentioned object is achieved in a first aspect of the present invention by providing a signal processing device for processing microphone signals from at least two microphones. The processing device comprises a combination of a first beamformer for processing the microphone signals and providing a first beamformed signal, and a power estimator for processing the microphone signals and the first beamformed signal from the first beamformer in order to generate in frequency bands a first statistical estimate of the energy of a first part of an incident sound field. A gain controller processes the first statistical estimate in order to generate in frequency bands a first gain signal, and an audio processor processes an input to the signal processing device in dependence of said generated first gain signal.
The new invention enables noise reduction at signal to noise ratios much lower than methods known to this inventor can do. It enables noise reduction under severe conditions for which current methods fails. Furthermore the new invention is able to apply a more accurate gain than current methods, whence it will exhibit an improved audio quality. The new invention is applicable to devices such as hearing aids, headsets, mobile telephones etc.
In one embodiment of signal processing device according to the invention a signal multiplier device is included for multiplying, in frequency bands, the first beamformed signal with a second signal generated on the basis of said microphone signals. The power estimator is adapted to process the result of the multiplication in order to generate said first statistical estimate of the energy of said first part of an incident sound field.
In a further embodiment of the signal processing device according to the invention a second beamformer is included for processing the microphone signals, the output of which is the second signal. The second beamformer could in some embodiments be an adaptive beamformer.
In yet another embodiment of the signal processing device according to the invention a non-linear element is included and arranged to perform a nonlinear operation on said first beamformed signal. The power estimator is then arranged to process the output of the non-linear element in order to generate the first statistical estimate of the energy of said first part of an incident sound field.
In still another embodiment of the signal processing device according to the invention a signal filter is provided which is arranged to perform signal filtering in dependence of said generated first statistical estimate.
In a further embodiment of the signal processing device according to the invention the power estimator is adapted to generate, in frequency bands, a second statistical energy estimate related to the total energy of the incident sound field. The first gain signal is generated in function of said first and second statistical estimates.
In a still further embodiment of the signal processing device according to the invention a second beamformer is provided for processing the signals from the microphones, and the power estimator is adapted to generate, in frequency bands, a second statistical estimate of the energy of the output of the second beamformer. The first gain signal is generated in function of said first and second statistical estimates.
In yet a further embodiment of the signal processing device according to the invention the power estimator is adapted to generate, in frequency bands, a second statistical estimate of the energy of an input received through a transmission channel and wherein said first gain signal is generated in function of said first and second statistical estimates.
In a still further embodiment of the signal processing device according to the invention the power estimator is adapted to generate, in frequency bands, a second statistical estimate of the energy of a second part of the incident sound field. The first gain signal is generated in function of a weighted sum of first and second statistical estimates.
In a further embodiment of the signal processing device according to the invention a multiplier device is used which operates in the logarithmic domain.
An embodiment of the signal processing device according to the invention transforms the first statistical estimate to a lower frequency resolution prior to generating said first gain signal.
In a further embodiment of the signal processing device according to the invention the power estimator is adapted to generate, in frequency bands, a second statistical estimate of the energy of a second part of the sound field. In some situations the main contributor to the first part of the sound field is a wind generated noise source, while in some situations a wind generated noise source is the main contributor to the second part of the sound field.
In yet an embodiment of the signal processing device according to the invention the first gain signal is generated in function of a weighted sum of first and second statistical energy estimates.
In yet still another embodiment of the signal processing device according to the invention wherein the main contribution to said first part of the sound field is a wind generated noise, at least one further beamformer is provided for processing the signals from the microphones for providing a second beamformed signal. The power estimator may thus process the second beamformed signal in addition to the first beamformed signal and the microphone signals in order to generate, in frequency bands, a second statistical estimate of the energy of the energy of a second part of the sound field.
In some embodiments of the signal processing device according to the invention the power estimator is adapted to generate, in frequency bands, a second statistical estimate of the total energy of the sound field, while the first gain signal is generated as a function of said first and second statistical estimates.
In further example embodiments of the signal processing device according to the invention a multitude of beamformers is provided for processing the signals from the microphones. The power estimator then can utilize the output signals from several beamformers when generating, in frequency bands, a statistical estimate of energy.
In further example embodiments of the signal processing device according to the invention a non-linear element is provided for performing a non-linear operation on the first beamformed signal. The non-linear operation can be approximated with raising to a power smaller than two. The power estimator analyzes the result of the non-linear operation and when in addition utilizing a microphone signal input, it produces, in frequency bands, the first statistical estimate of the energy of the first part of an incident sound field.
In yet further example embodiments of the signal processing device according to the invention a signal multiplier device is included for multiplying, in frequency bands, the result of said non-linear operation with a second signal generated on the basis of said signal from the microphones. The power estimator processes the results of the multiplication and the non-linear operation in order to generate, in frequency bands, the first statistical estimate of the energy of the first part of an incident sound field.
In still further example embodiments of the signal processing device according to the invention an absolute value extracting device is included for estimating the absolute value of said first beamformed signal. The power estimator analyzes the result of the absolute value extraction in order to produce, in frequency bands, the first statistical estimate of the energy of the first part of an incident sound field.
In yet still further example embodiments of the signal processing device according to the invention the first statistical estimate of energy is an estimate the energy of the sound waves that are impinging to the device that have angles of incidence within a limited region of the incidence space.
In further example embodiments of the signal processing device according to the invention the first statistical estimate of energy is an estimate the energy of the sound waves that are impinging to the device with wave gradients within a limited region of the incidence space.
The above mentioned object is also achieved in a second aspect of the present invention by providing a method for processing signals from at least two microphones in dependence of a first sound field. The method includes processing of the microphone signals to provide a first beamformed signal and the processing the microphone signals together with the beamformed signal in order to generate in frequency bands a first statistical estimate of the energy of a first part of said sound field. The method also includes processing the generated first statistical estimate in order to generate in frequency bands a first gain signal in dependence of said first statistical estimate. Then, an input signal to the signal processing device is processed in dependence of said generated first gain signal.
In further embodiments of the method according to the second aspect of the invention the first beamformed signal is multiplied with another signal generated on the basis of the microphone signals, and the microphone signals are processed together with the beamformed signal in order to generate, in frequency bands, a first statistical estimate of the energy of a first part of an incident sound field. The multiplied signal is then processed further.
In further embodiments of the method according to the second aspect of the invention a non-linear operation which can be approximated with raising to a power smaller than two on said first beamformed signal is performed, and the result of said non-linear operation is processed together with the microphone signals in order to produce, in frequency bands, the first statistical estimate of the energy of the first part of an incident sound field.
The above mentioned object is also achieved in a third aspect of the invention by providing a method for processing signals from at least two microphones in dependence on a first sound field including processing the microphone signals to provide at least two beamformed signals. The microphone signals are processed together with the beamformed signals in order to generate in frequency bands at least two statistical estimates of the energy of sources of wind noise in said first sound field. The generated statistical estimates are processed in order to generate in frequency bands a first gain signal, whereby the gain signal thus depending on said statistical estimates. Subsequently an input signal to the signal processing device is processed in dependence of said generated first gain signal.
In further embodiments of the method according to the third aspect of the invention the microphone signals are processed together with the beamformed signals in order to generate, in frequency bands, a statistical estimate of the total energy of the sound field. The generated statistical estimates of energy of sources of wind noise and of the total sound field are processed in order to generate, in frequency bands, the first gain signal in dependence of said statistical estimates of energy of sources of wind noise and of the total sound field.
The invention is below described in further detail with references to the appended drawings, briefly described in the following:
Initially, it will be useful to define a few conventions used throughout the following description. The description will use single letters, letter combination or words to name signals, variables and constants. The description will use the name in lower case to refer the time domain representation of a signal while it will use the name in upper case to refer to a frequency domain representation of the same signal. The notation x* signifies the complex conjugate of x.
Most of the signal processing described in this document is assumed to be performed on blocks of samples. The document though does not go in detail with regard to block sizes, rates, principles etc. The notation SIG(f,t) is used to refer to a signal processed block-wise and in frequency bands.
The notation SIG(f,t) may refer to a frequency domain (or narrowband filter bank) analysis of the time domain signal sig(t), but it may also indicate that the signal SIG is present in the device as a frequency domain (or narrowband filterbank) signal. If the latter is the case the time domain equivalent sig(t) may or may not be present in the device also.
Gradient: Throughout the document the word gradient is used to designate the numerical value of the gradient of a wave. The numerical value of the gradient is the projection of the vector wave gradient onto the direction of incidence of the wave or the microphone axis.
In the forward signal path the signals from two (or more) microphones 121,122 are passed through an optional beamformer 30 that may provide noise reduction in addition to the reduction that is provided by the time-variant filter 50. The beamformer 30 could also be called a forward beamformer. Following the forward beamformer 30 the forward signal is passed to the time-variant filter 50. In some embodiments the signal from the microphones 121,122 may be passed directly from the microphones 121,122 to the time-variant filter 50. The output signal of the time-variant filter 50 is passed to an audio processor 20 that is responsible for the main audio processing. The output of the audio processor 20 can be provided as an output either to a loudspeaker 120 or to a transmitter 110 for transmission to external devices (not shown).
The signals from the microphones 121,122 are also transferred to a power estimator 10. The power estimator 10 is arranged in the control path for the time-variant filter 50. The signals from the microphones 121,122 analyzed in the power estimator block 10 in order to generate statistical estimates M and MF. In some preferred embodiments the statistical estimates M and MF are estimatetes of power, whence the name power estimator, but in other preferred embodiments they will be other statistical estimates of energy such as estimates of the mean of the absolute value, 1st, 2nd or 3rd order moments or cumulants, etc. The statistical estimates M are estimates of the energy of parts of the sound field. M will contain at least a first component signal but may in embodiments contain any number of component signals equal to or larger than 1, each component signal divided in frequency bands. Each component signal will be a statistical estimate of the energy of the group of waves that impinges to the device with incidence characteristics confined to a given limited range of the incidence space. The incidence characteristics that are used to partition or group the waves may include angle of incidence, wave gradient, wave curvature or wave dispersion or a combination of those characteristics. 2 different component signals of M may be estimates of energy of different parts of the sound where the parts may or may not be overlapping but they may also be different estimates of energy of the same part of the sound field.
The estimates MF are statistical estimates of the total energy of the sound field as can be observed at the output of one of the microphones or at the output of the forward beamformer 30. There may be any number of estimates MF each divided into frequency bands. Two different component signals of MF may be different estimates of energy of the sound field as seen at the same microphone or beamformer output but they may also be estimates of energy of different microphone or beamformer outputs.
The said power estimates M and MF being output from the power estimator 10 is passed on to a gain calculator 40 that generates a frequency and time dependent gain G which in the embodiment on
The time-variant filter 50 may be implemented in various ways. It could be straight IIR (Infinite Impulse Response) or FIR (Finite Impulse Response) implementations or combinations thereof, it could be implemented via uniform filter-banks, FFT (Fast Fourier Transform) based convolution, windowed-FFT/IFFT (Fast Fourier Transform/Inverse Fast Fourier Transform)or wavelet filter-banks among others.
The new invention may be used in a variety of applications such as hearing aids, headsets, directional microphone devices, telephone handsets, mobile telephones, video cameras etc.
The receiver/transmitter 100,110 may operate as part of a transmission channel with audio-processing functions 20 included. In addition, the output of the power estimator 10 may also be connected to an RX-gain control unit 60. The RX gain control unit 60 uses the input from the power estimator 10 and a signal input rx from the receiver 100 to calculate a gain function GRX for a RX-time-variant filter 130 arranged to process the receiver signal rx before passing a processed signal yrx to the audio processor 20. The purpose of the blocks 60 and 130 could include adapting the output level of the rx signal as presented to the loudspeaker 120 in function of the level of energy of a part of the incoming sound wave. One or both of the RX gain control 60 and the RX time variant filter 130 may in some embodiments be embedded within the audio processor 20.
Signals shown on
Some implementations may contain provisions for analog to digital conversion and possibly for digital to analog conversion. Such conversions are not shown explicitly on the figures, but their application will be apparent for a person skilled in the art.
In the implementation of
As in
The optional forward beamformer 30 or 31A,31B may be implemented as an adaptive beamformer. The adaptive beamformer aims at reducing noise from disturbing noise sources maximally possible with linear beamforming. The adaptive beamformer works by moving the directional zero(s) of its directivity.
A two-microphone beamformer only implements a single directional zero therefore a two-microphone works best when only a single disturbance is present in the sound field. The two-microphone adaptive beamformer may track the location of the single disturbance ideally placing its directional zero at the location of the disturbance.
The beamformer BPRI 73 on
Through the cross-correlator 90 and the adaption control 80 the control signal H is adapted such that the correlation between X and BX is at a minimum. The adaptation is preferably performed in the frequency domain. Equation (1) below shows a possible implementation of the adaptation process. In equation (1) Tad is the update interval, μad is a constant controlling the adaptation speed, CC is a statistical estimate of the crosscorrelation of X and BX and PBX is a statistical estimate of the power of BX.
The resulting effect is that the adaptive beamformer acts as to filter away components that are common to the BB and BX signals as well as any components that are found only in the BX signal. As the beamformer BREV 74 is designed such that the target signal is not present in the BX the result will be that adaptive beamformer filters disturbing noise optimally while it does not alter the target signal input content.
The Optimal Gain
The part of the system of
Y(f,t)=G(f,t)·X(f,t) (2)
For the description of the optimal gain it will first be assumed that the optional forward beamformer 30 is not present. Later the implications of the presence of the optional forward beamformer 30 will be discussed. When the optional forward beamformer 30 is not present the signal x will be as in equation (3) below:
X(f,t)=MIC1(f,t) (3)
A model for the input to the system is then considered where the input consists of a mixture of wanted signal components and unwanted signal components. The sum of the wanted signal components will be denoted s in the time domain and S in the frequency domain and called target signal or simply signal. The sum of the unwanted signal components will be denoted n or N and called noise signal or simply noise. The input can then be modelled as the sum of target signal and noise components as follows.
MIC1(f,t)=S(f,t)+N(f,t) (4)
The ideal output of the time-variant filter 50 would be the following.
Yideal(f,t)=S(f,t) (5)
With a single microphone input to the time-variant filter 50 it is not physically possible to achieve this by filtering only. The gain Gopt shown in equation (6) is the best possible causal gain.
When Gopt is applied the power spectrum of Y will equal that of the wanted signal S.
PS, PN, PX and PMIC1 denotes the powers of S, N, X and MIC1 respectively. In practice there would of course exist discrepancies due to block size and overlap and various system delays. Nevertheless if a reasonably accurate estimate Gopt would be applied the power spectrum of y would closely approximate that of s. In terms of listening experience this would mean that for good signal to noise ratios (PS>>PN) the difference between s and y would be a minor phase distortion. In terms of speech communication the difference would hardly be perceptible. As the signal to noise ratio degrades and the signal and noise powers become comparable the amount of phase distortion will increase. But even when the phase distortion may indeed be perceptible the speech quality can still be sufficient to ensure intelligibility. In practice it will be desirable to replace the optimal gain of (6) above with that of the equation (9) below.
This will render an optimal y power as in equation 10 below.
PY opt(f,t)=AS2·PS(f,t)+AN2·PN(f,t) if x=mic1 (10)
This corresponds to the application of the gain AS to the wanted signal and the gain AN to the noise. In an even more general formulation of the optimal gain, see equation (11) below, account is taken for the situation where the input can be modelled as the sum of I different sources Si with powers Pi.
This will lead will lead to the following power of y:
Ai, AS and AN in the equations above could of course also be chosen as functions of frequency and/or time.
If the case is now considered where the optional forward beamformer 30 is present in the device then the option exists to keep the definition of the optimal gain as of equation (9) or (11) above. In this case the amount of noise reduction of the total system will be the sum of that of the forward beamformer 30 plus that of the time-variant filter 50. That this is the case can be appreciated when comparing the implementations of
It is also possible to modify the definition of the optimal gain to that of eqs. (13) or (14) below. If one of these is used then the total noise reduction of the system is that given by the definition itself. Thus, given the use of the optional forward beamformer 30, the use of definitions (13) or (14) possibly implies a lower total amount of noise reduction. But on the other hand the sound quality is possibly improved as the time-variant filter 50 need not work as aggressively as when the definitions of eqs. (9) or (11) are used.
Note that when the optional forward beamformer 30 is used then eqs. (10) and (12) only hold when the definitions of eqs. (13) or (14), respectively, are used.
Identification of Signals
The new invention utilizes spatial information of the acoustic field in order to divide the incoming signal in I classes or groups which could be for example the two classes; target signal and noise. The acoustic field will consist of a number, possibly an infinity, of waves. Each of these waves will be characterized by a direction of propagation, amplitude, shape and damping. For the purpose of this document it will be assumed that the physical dimensions of the microphone assembly are small. In this case a simplification can be made in which a numerical gradient parameter summarizes the combined effects of wave shape and damping.
Given this simplification the acoustic field as seen by the acoustic system can be assigned a power density function defined in a reference point. The position of the acoustic inlet of microphone 121 could be chosen as a reference point. In spherical coordinates the power density will be denoted E(f,t,ψ,θ,γ). ψ and θ are the angular coordinates and γ is the numerical gradient parameter. γ=0 indicates a plane wave, γ<0 indicates a “normal spherical wave”, i.e. one in which the sound pressure decrease along the path of propagation and γ>0indicates a concentrating wave, i.e. one in which the sound pressure increase along the path of propagation. The relation between the power density and the power of the sound pressure at the position of microphone 121 is given by equation (15) below. E{ } denotes expectation not to be confused with E( )—the energy density.
For the simple physical implementation using only two microphones 121,122 observations made by the system must be symmetric around the axis passing through the position of the acoustic inlet of the two microphones 121,122, the system is not able “to see” the angle ψ. Therefore a simplified power density Ed(f,t,θ, γ) may be defined by equation (16) below.
Ed relates to E as in equation (17) below.
If it is assumed that the system will only be subject to plane acoustic waves (far-field waves) the power density may be further simplified in the general and the two-microphone case as shown by eqs. (18) and (19) below. Note however that the physics of the acoustic system itself may disturb plane waves to such a degree that they cannot be considered plane in the vicinity of the system. Note also that while the two-microphone implementation will never be able to sense the angle ψ it will still be able to sense the gradient along the axis of the two-microphone inlets.
PMIC1
More useful definitions of E0 and Ed0 would be as given by eqs. (22) and (23) below, ε being a small constant allowing for some curvature of the (quasi-)plane wave.
Having defined the power densities it is now possible to define or identify the total powers of the input signal source classes or groups. To do this the space is divided into regions bounded by [γmax, γmin], [θmax, θmin] and [ψmax, ψmin]. The space is divided in non-overlapping regions that unite to the full space. Each region is assigned to a single source class or group, the number of source classes or groups being I. Equation (24) below shows the general definition.
The general source class power definition may appear as fairly abstract. The concept will now be illustrated by examples.
Consider a hearing aid application where it is only desirable to estimate target signal and noise powers. In order to define those it is necessary to define a target direction and align that in the (ψ,θ,γ) space. For a hearing aid the target direction would be that of sounds impinging from the normal viewing direction of the user. This target direction is most sensibly assigned ψ=0 and θ=0. With these assumptions the signal and noise powers can be defined as in the following. θc is the cut-off angle, i.e. signals impinging from within +/−θc is treated as wanted signal, the rest is treated as noise.
Of course the “order of definition” could have been reversed as shown in the following.
Consider next the application of a headset or a close-talking microphone device. For this application the target direction is best chosen as the direction from mouth to device, this direction is assigned ψ=0 and θ=0. For this application the signal can again be divided into 2 components, wanted signal and noise.
In practice γ0 could be set to −infinity.
In yet another example a hearing aid is considered. With this hearing aid application it is the objective to divide the input in 3 source classes: S1 with power P1 is the wanted “external” signal, S2 with power P2 is the users own voice while S3 with power P3 is the unwanted noise.
In general the present invention is useful in several applications, in particular hearing aids, where it is favourable to know the power of the input signals divided into the classes or groups: a) near field signals from within a certain beam, b) far field signals from within a certain beam and c) the rest. The equations (32) to (34) above apply to such cases.
Power Estimators
The output X of the forward beamformer 30 is shown in the example embodiment on
Nonlinear Spatial Filter and Measurement Filter
The nonlinear spatial filters 201,202 serve the purpose of generating the power signals Pi of equation (24). The nonlinear spatial filters 201,202 could alternatively be named non-linear beamformers. Equation (24) can be rewritten as equation (25) below. E{ } denotes expectation (not to confuse with the power density E( )).
Thus, ideal spatial filters applied to the spatial power density would allow the integration that yields the individual Pi, to run over the “full space” in stead of over a region. The power density E is an abstract concept; it is not physically present as a signal in the system. But the microphone signals are present and it is possible to apply beamforming to them.
The signal density e (e being a frequency domain variable, its time domain representation will not be used or analyzed in this document) of MIC1 can be introduced such that E is the magnitude squared of e as in equation (36) below.
E(f,t,ψ,θ,γ)=|e(f,t,ψ,θ,γ)|2 (36)
Using this density the beamformer output can be formulated as in equation (37) below.
As the circuit of
The general linear beamformer output can then be written as in equation (39) below.
Having introduced the linear beamformer a possible expression for the output of the non-linear beamformers 201-202 of
As an example, the non-linear element βi,1 could comprise an absolute value extracting device that estimates the absolute value of the beamformed signal Vi,1. Thus the power estimator 10 would analyze the result of said absolute value extraction in order to produce, in frequency bands, a statistical estimate of the energy of a part of an incident sound field.
The example implementations of
Yet a further possible implementation of the nonlinear spatial filter is shown on
In the implementation shown on
An analysis of the outputs Pi of the implementation of
Pi(f,t)=|S1(f,t)·Bi,1(ψ1,θ1,γ1)·(S1(f,t)·Bi,2(ψ1,θ1,γ1))*| (43)
This can be rewritten as in equation (44):
Pi(f,t)=|S12(f,t)|·|Bi,1(ψ1,θ1,γ1)Bi,2(ψ1,θ1,γ1)| (44)
The result is the product of the power of S1 and a nonlinear beamformer gain. If another wave S2 is added to the analysis the results will be as in equation (45) below.
If it is assumed that S1 and S2 are uncorrelated the mixing terms (involving S1 times S2) of Pi will be attenuated by the measurement filter 401-402 of
If further waves are added to the analysis it will be seen that, provided the waves are mutually uncorrelated and that the measurement filters average over a sufficiently long period, the mixing terms will be attenuated in the Mi output such that the output will be sum of estimates of moments of the individual waves as in equation (47) below.
This leads to a general formulation of equation (48) below for the implementations where the functions β and χ are constructed for second order moment outputs.
This can be extended to the expression of equation (49) below.
An “effective beamforming response” can be expressed as in equation (50) below. The effective response is shown converted to the form that it would have when computing a 1st order moment, for easy comparison with linear beamforming. It is seen that the effective response is the geometric mean of the responses of the linear beamformers of the nonlinear spatial filter implementation.
Thus an effective beamforming response Beff can be tailored as the geometric mean of a set of linear beamformer responses. The design task can be compared to that of the task of designing a normal linear filter or that of designing a linear beamformer with a free number of microphones and free spacing. But the fact that Beff is the geometric mean of the component responses does impose a limit to the achievable stop-band attenuation.
As has been described above, for example in (39) to (41), it is possible to process the output of linear beamformers non-linearly and in this way achieve performance improvements as compared to the use of linear beamforming only. Nevertheless the performance of the non-linear spatial filter will depend upon the characteristics of the linear beamformers 34A-D of the non-linear spatial filter. To illustrate the capabilities of a linear beamformer in the case where there are two microphones, which is the most favourable in terms of various cost measures,
Note that for the case where the number of microphones is two a single zero at a specific angle θ0 and a specific gradient γ0 is possible with a linear beamformer, the response being symmetric around the axis connecting the microphones, i.e. the same response for all values of ψ.
As is described in this document the non-linear spatial filter processes the output signals from a number (at least one) of linear beamformers non-linearly or linearly to produce the signal Pi. In the following the notation “n-beamformer non-linear spatial filter” will be used to signify that the non-linear spatial filter includes n linear beamformers 34(A . . . ).
In general four types of regions must be taken into account when designing a nonlinear spatial filter: pass-band regions, stop-band regions, transition band regions and don't care regions.
In the pass band the gain should be constant over the full region. The pass-band region should cover the required span of angles of the incoming wave but it should also cover a span of gradient values of the incoming wave. The gradient span should take near field/far field requirements into account but it should also accommodate for microphone sensitivity mismatch and it should take the wave disturbance into account that occurs when the acoustic device is head-worn or even when the physical dimensions of the device is such that the device itself disturbs the sound field.
In the stop-band region the spatial filter should attenuate as much as possible. The stop-band region should also take a gradient span into account that accommodates for microphone mismatch and disturbance of the sound field due the physical dimensions of the device and the head of the user of the device.
The transitions bands are regions that are necessary between the stop and pass-bands. In the transition bands generally only an upper bound is imposed to the spatial filter response.
The don't care regions cover the parts of the (ψ,θ,γ) space where incoming waves are not expected. The use of don't care regions may be necessary to take into account as the beamformer response may be unbounded as γ approaches +−infinity.
For optimal performance it is desirable to control the stop-band, pass-band and don't care regions such that the stop-bands and pass-bands are as narrow as possible in the γ direction. For a device intended for use under free field conditions the pass and stop-band should normally be centered around γ=0. But for a head-worn device it may be advantageous to take into account a predicted disturbance of incoming plane waves by a typical head.
Furthermore for some regions in the (ψ,θ) sound incidence may be impossible. An example would be hearing aids worn more or less deep within the concha. For such hearing aids sound incidence within a region centered around θ=0° and/or a region centered around θ=180° is impossible. It would of course make sense to make these impossible regions don't care regions when designing the hearing aid spatial filter.
The example implementations above have shown that is possible to tailor the spatial response with the formulation of equation (40) and the various embodiments have been described. The examples so far have shown limited capabilities in terms of stop-band rejection.
The nodes may perform any of the following operations on its inputs:
The general nonlinear network 150 should be designed such that when the input to the system consists of a single wave S1 then the output Pi of the network 150 should be of the form of equation (51) below.
Pi(f,t)≈a+b·foo(S1(f,t))c (51)
In equation (51) a, b and c are constants and the function foo( ) is a member of the subset of equation (52) or a similar function.
An important tool in tailoring the spatial response is shown by the following example where Pi is chosen according to equation (53) below. (53) implements a generic formulation of an “inverted beamformer”. The α and β constants control the order of the P signal. Vi,1 is the output of a linear beamformer 34.
Pi(f,t)=β√{square root over (|MIC1(f,t)|α−|Vi,1(f,t)|α)}{square root over (|MIC1(f,t)|α−|Vi,1(f,t)|α)} (53)
The reason for using the term “inverted beamformer” is that the signal Pi of (53) will exhibit a directivity that is nonzero at the location of the zeroes of the directional response of the beamformer 34 producing the signal Vi,1 of (53) while the signal Pi will exhibit zeroes at the location where the magnitude of the directional response of the beamformer 34 is unity.
In an embodiment two hearing aids combine such that their respective microphones form a broadfire array consisting of two microphones, one microphone each from left and right hearing aid. A signal link between the two hearing aids is provided, this could a signal wire but the link could also be wireless, for example a Bluetooth link.
In a variation of this embodiment each hearing aid is equipped with 2 microphones in endfire configurations.
In further embodiments the processing of the general linear network is such that the signals Pi can be described by either (55) or (56) below. (55) and (56) are equivalent but in (56) the multiplication and root extraction operations are implemented in the logarithmic domain. The order Ordi of the statistical moment Mi derived from Pi is given by (57). Mi is obtained by lowpassfiltering Pi (blocks 401 or 402 etc.).
In an embodiment signal P1 is generated by the nonlinear spatial filter 201. Lowpassfilter 401 extracts the statistical estimate of energy M1 by lowpassfiltering P1. Furthermore the blocks 300 and 403 of the embodiment generates the statistical estimate MF1 of the energy of the MIC1 signal. In the block 501 the estimate of energy M2 is generated as MF1 minus M1. P1 is generated according to (56) above with J1=8, the embodiment employing eight linear beamformers 34A-34H in the nonlinear spatial filter 201. The embodiment uses two microphones with a spacing of 10 mm.
In an embodiment targeted for headset or telephone applications 2 microphones are used at a spacing of 5 mm. The target application use a compact physical design such that the microphones will placed at a distance of app. 100 mm from the opening of the mouth of the during normal use. The embodiment contains a nonlinear spatial filter 201 that generates signal P1. 4 linear beamformers 34A-34D are used and P1 is generated according to (56) above where the exponents αl,j all are set to 0.25.
Full Range Extractor
PF1(f,t)=|MIC1(f,t)|2 (58)
In yet an embodiment the full range extractor can be described by (59) below.
PF1(f,t)=|X(f,t)|2 (59)
In still an embodiment the first full range extractor can be described by (60) below.
PF1(f,t)=|MIC1(f,t)·X(f,t)| (60)
Use of Forward Beamformer or Common Spatial Filter:
The optional forward beamformer 30 could be static but may also be adaptive. An adaptive beamformer can be very effective with regards to the task of attenuating an interference caused by a single disturbance of the sound field. Therefore a single interference may be effectively removed from x while it is still present in mic1 and mic2. As the interference is effectively removed from the forward signal it would be advantageous to prevent it from influencing the gain response used for the time-variant filter 50 of
In an embodiment the first P and PF power signals are extracted according to the following. Vj are the outputs of linear beamformers acting on the microphone outputs.
In another embodiment the first P and PF power signals are extracted according to the following. Vj are the outputs of linear beamformers acting on the microphone outputs.
In another embodiment the first P and PF power signals are extracted according to the following. Vj are the outputs of linear beamformers acting on the microphone outputs.
Wind Noise
A common problem with directional microphones and beamformers are their sensitivity to wind-noise. Wind-noise is caused by edges or other physical features of the device that cause turbulence in the presence of strong wind. As the wind-noise is generated very close to the microphone inlets wind-noise is near-field.
Wind-noise can be modelled as a number of discrete noise sources all mutually uncorrelated. Wind-noise can with the new invention be dealt with by defining a source region class for each of the regions in the incidence space that correspond to source generation at the physical features on the device that may cause wind noise. Thus the optimal gain of (11) or (14) will depend on the powers of the wind-noise signals as Pi measurements in addition to the Pi measurements for the target signal and the acoustic noise of the environment.
In one embodiment a source group is defined for each microphone inlet for wind-noise generated at the respective inlet in addition to the source groups for the target signal and the environment noise. For each source group a nonlinear spatial filter is applied. The nonlinear spatial filters for the target signal and environment noise groups include spatial response zeros for incidence from each of the microphone inlets.
As described above unwanted wind-noise contribution to the Mi estimates can be dealt with by the application of spatial zeros at wind-noise positions. But it is also possible to allow the Mi estimates to contain errors due to wind-noise and correct for these errors in a postprocessing stage. This concept is described in the following.
Equation (64) provides a model for the microphone input in presence of wind-noise for a N-microphone device. Wm are the mutually uncorrelated wind-noises and Sn is the non-wind-noise acoustical signal at the positions of microphone n. NW is the number of wind-noise sources and R is the transfer response noise from the source position of the particular wind-noise source to the microphone position.
A model that only contains a single noise source for every microphone inlet will suffice for a good first order model of the wind-noise behavior. If it also assumed that the damping from one microphone inlet to the next is large then equation (64) may be further simplified to equation (65).
MICn(f,t)=Sn(f,t)+Wn(f,t) (65)
As the wind-noises are mutually uncorrelated and they also are uncorrelated with the acoustical input the expectation of the power of the microphone signals can be modelled as follows.
The model of equation (66) can be modified to that of equation (67) where κ is a factor that depends upon both S and the position of microphone n relative to microphone 1 (the reference position).
The wind-noise estimator block 420 uses the power estimates MMICn and MABxy to generate estimates MWr of the power of the individual wind-noise sources and MS of the power of the acoustical input at the reference position.
To enable wind-noise detection the beamformers 38A, 38B must be designed with particular directional responses in order to enable wind-noise detection. The following requirement will enable wind-noise detection when fulfilled. The requirement of equation (68) says that the sum of the magnitude squared of the beamformer responses of the beamformers contributing to MABxy should be constant for all angles of incidence and for all wave gradients. The term Bxy represents the set of beamformers contributing to the particular sum MABxy. qxy(f) is a function depending solely upon the frequency, not upon parameters of wave incidence.
In practice it is impossible to fulfil equation (68) for all values of the wave gradient γ. Fortunately, the simplification that the acoustical input is plane wave is permissible in many cases. This leads to the relaxed formulation of the criterion shown in equation (69).
In one embodiment two microphones and two beamformers A, B are used and a single MAB is derived. The beamformers 38A, 38B are chosen as reverse cardioids with sub-optimal delays. kw is a positive constant larger than one and τ0 is given by equation (71) where dmic is the microphone spacing and c is the speed of sound.
MAB is derived as the sum of MA and MB. MA and MB are the results of lowpass filtering PA and PB respectively. In a variation of this embodiment kw is chosen as approximately 4.
Given equations (69) or (68) and (67) above the MMIC and MAB estimates can be modelled as follows. ρxy,m is the response of beamformer sum xy for sources originating at the position where wind-noise m is generated, it must be found by an analysis of the beamformers.
Equations (72) and (73) constitute N+NXY equations with 1+N+NW unknowns. NXY is the number of sum estimates MAB, the unknown are E{S}, κn and E{Wm}. In general this set of equations will be underestimated. Fortunately it can be assumed that the external acoustical sources are all in the far-field. This assumption will cause the sound pressure level, caused by non-wind-noise sources, to be identical at all microphone inlets under the additional assumption that the microphone spacing is small.
κn(f,t)≈1 (75)
The set of equations (72), (73) and (75) can be solved for S and Wm. The solution leads to the defition of the estimates MS and MWm of the wind-noise detector 410 shown in (76) below. The result is of the following form. cmic, cab, dmic and dab are sets of frequency dependent constants.
In a two-microphone embodiment with a wind-noise detector based on two beamformers described above the wind-noise model can be written as in equation (77) below.
The solution of (77) leads to the definition of (78) for the wind and signal noise estimators. aw, bw, cw and dw are sets of constants.
In some embodiments of the invention the diameter of the microphone sound inlets are 1.5 mm and the microphone spacing is 10 mm. With these physical dimensions the wind-noise may be modelled as in equation (79) below and the wind and signal power estimates can be derived as in equation (80).
The MW and MS thus are estimates of the power (second order moments) of the wind-noise and signal components of the microphone acoustical input to the device. Note that it is possible to extend the wind-noise detector 410 to produce estimates of other statistical moments or cumulants of the acoustical input if the beamformers 38A, 38B . . . and the power blocks 37A-D of
It should be noted that the wind-noise detector of
The optional wind-noise correction block 430 of
In the presence of wind-noise the Mi estimates may contain an error component for each wind-noise source. As the wind-noises are mutually uncorrelated and uncorrelated with the external acoustical signal the error components will to the first approximation simply be additive components. Therefore the error correction can be done via the following principle.
In (81) βi,m is the sensitivity of the Mi output towards the power of wind-noise source m. It is found by an analysis of the nonlinear spatial filter of the Mi path.
More than one scheme for the correction of the MFl estimates exists. The first scheme attempts to let the time-variant filter 50 of
If on the other hand the device does contain a forward beamformer 30 and it is desirable to compensate for the wind-noise sensitivity of this then MFl should reflect the wind-noise power contained in the output x of the forward beamformer 30. This can be achieved by modifying the correction gain βFi,m of (84) or by omitting the wind-noise correction step for the MFl estimates.
In one embodiment equations (72) and (73) above are used to compensate for errors of the Mi estimates. The MF1 estimates on the other hand receives no wind-noise corrections.
In one variation of this embodiment the MF1 estimate is based upon low-pass filtering of the PF1 signal defined in (59). In one embodiment the wind-noise correction block 430 generates Mi signals as given by equation (85) below as part of the M output.
Estimate Postprocessing
The optional estimate postprocessing of
Non-ideal stop-band or pass-band characteristics of the spatial filters may cause errors of the Mi and the MFl estimates. This can be explained as a spillover of energy from one input class (corresponding to a specific region in incidence space) to the estimates of energy of other classes. The corrections defined in equation (86) below attempts at minimizing the errors. These corrections will not eliminate the errors fully but can reduce them. a, b, c and d are sets of constants. The values of a, b, c and d may be frequency dependent.
An optional nonlinearity can be applied to prevent negative power estimates etc.
Note that that M″ and MF″ may replace M and MF in equations (81) and (82) in the presence of the optional wind-noise correction.
It may be desirable to post-process moment estimates to produce cumulant estimates or similar. The processing of equations (86) and (87) is capable of extraction of cumulants if the constants are adjusted accordingly and Mi contains all the relevant moment estimates of different orders. For example both 1st and 2nd order moments are required to derive the 2nd order cumulant.
The number of estimates Mi′ and MFl′ may be different from the number of estimates Mi and MFl. The reason for this is that the postprocessing stage can be used to derive additional statistical estimates. The additional estimates could be cumulants derived from moments or they could be estimates for additional regions in incidence space. The number of estimates Mi′ and MFl′ will be denoted IG and LG respectively.
In an embodiment two estimates Mi are input to the estimate postprocessing block 501. These estimates are denoted MS and MN respectively. The output of the postprocessing block 501 is the following.
In some embodiments according to the invention one estimate Mi and one estimate MFl are input to the estimate postprocessing block 501. These estimates are denoted M1 and MF1 respectively. The output of the postprocessing block 501 is the following.
Further, in some embodiments according to the invention two estimates Mi are input to the estimate postprocessing block 501. These estimates are denoted M1 and M2 respectively. M1 is an estimate of the first order moment of a particular incidence region and M2 is an estimate of the second order moment for the same region. The output of the postprocessing block 501 contains the following.
In a further embodiment one estimate Mi and one estimate MFl are input to the estimate postprocessing block 501. These two estimates are denoted M1 and MF1 respectively. The output of the postprocessing block is the following.
Gain Calculator
The gain calculator 40 receives the signals Mi and MFI that may be estimates of statistical moments, cumulants or similar. In the most basic form Mi and MFl are estimates of signal power or variance.
In the following it will be assumed that Mi′ and MFl′ are moment or cumulant or similar postprocessed estimates as needed. In (92) Mi′ and MFl′ could be replaced by Mi and MFl or Mi″ and MFl″ as required depending upon the presence of the optional wind-noise correction 430 and/or the estimate postprocessing 501.
Optionally, the gain calculator 40 may contain a pre-processing stage in which the Mi′ and MFl′ (or Mi and MFl or Mi″ and MFl″ as required) signals are transformed in order to alter the frequency resolution. If the gain calculator 40 does contain the optional preprocessing stage then the outputs Mi′″ and MFl′″ of this stage will replace Mi′ and MFl′ in (92) below.
In some embodiments the estimates Mi′ and MFl′ may be smoothed over frequencies by applying a moving average filter in the frequency domain. In yet some embodiments the signals of and Mi′″ and MFl′″ are implemented with fewer frequency bands than are Mi′ and MFl′. Sets of adjacent frequency bands of Mi′ and MFl′ are collected to single bands in Mi′″ and MF″l′. For each frequency band of Mi′″ and MFl′″ the signal value is taken as the sum of the signal values of the corresponding frequency bands of Mi′ and MFl′.
With the optionally postprocessed and/or preprocessed estimates a set of gains can be calculated from equation (92) below.
Ai,k controls the gain of the system for signals of the various regions of the space of sound incidence. Ai,k could be constant but could also be controlled by various parameters such as S/N ratios, user controls etc. In particular they may be also be frequency dependent. Ol corresponds to the order of the statistical estimates Mi and MFl.
The resulting G to be input to the time variant filter 50 of
G(f,t)=goo( . . . ,Gl(f,t), . . . ) (93)
In some embodiments of the invention a single estimate MF1′ is derived and G is calculated as in equation (94) below.
In some further embodiments a single estimate MF1′ is derived and G is calculated as in equation (95) below.
In still further embodiments according to the invention two gains G1 and G2 are calculated. The resulting G is calculated from equation (96) as follows.
G(f,t)=min(G1(f,t),G2(f,t)) (96)
In some embodiments one gain G1 is calculated. The resulting G is calculated as follows. Gmin is a constant.
G(f,t)=max(Gmin,G1(f,t)) (97)
In yet some further embodiments four estimates MFl′ are derived and two gains Gl are calculated. The resulting G is calculated as follows.
In some embodiments four estimates Mi′ are derived and two gains Gl are calculated. The resulting G is calculated as follows.
In some embodiments two microphones are used and PF1 is derived as given by equation (100) below. MF1 is derived by lowpass-filtering PF1. Wind-noise power estimates are derived as described by equation (78) and wind-noise correction 430 includes the processing given by equation (101). β1 and β2 are the square of the transfer response from wind-noise sources W1 and W2 respectively to signal X. The Estimate postprocessing includes the processing of equation (102).
The Gain calculator calculates gain G1 according to (103). G1 is the optimal gain in the presence of wind-noise only, i.e. when disregarding other acoustical noises. AS is the gain applied to signal components and AW is the gain applied to wind-noise.
In a variation of the embodiment the processing of equations (101) and (102) are replaced with that of (104) and (105) respectively.
In some embodiments of the invention two microphones are used and the forward beamformer is also used. These embodiments use the techniques described in the “Wind noise” section to derive MW1 and MW2 that are estimates of the power of the wind noise generated at the locations of the respective microphone inlets. Furthermore MF1 is generated as an estimate of the full power of the output X of the forward beamformer 30. Furthermore the embodiment includes a first nonlinear spatial filter 201 and a measurement filter 401 that estimates a first statistical estimate M1 of the power of that part of the incoming sound field that constitute the wanted input signal. In the wind-noise correction stage 430 the following estimates are generated.
In equation (104) β1 and β2 are the squares of the gains with which the forward beamformer amplifies noise from the wind-noise sources of the two microphones, respectively. Thus M2″ is an estimate of the power of the wind noise components of X and M3″ is an estimate of the power of noise components of X that is not due to wind-noise. A gain G1 is derived as follows.
Thus AS is the signal gain, Aw is the wind-noise gain and AN is the gain for noises that are not wind-noises.
Beamformer Implementation
The new invention includes the generation of a number of different linear beamformed signals. Within the frequency domain or within filterbanks of narrow bandwidth those beamformed signals may be generated with a minimum of overhead taking the fact into account that the beamformed signals may be allowed to contain a certain portion of aliasing as they are only used for measurement purposes.
Near Field Enhancements
In general it will be very tough to design nonlinear spatial filters with the same pass-band in the (ψ,θ) domain while differing pass-bands in the (γ) domain. Therefore the following enhanced implementation may desirable when the device needs to discriminate between near and far inputs. Consider an implementation that has its pass-band of power P1, M1 controlled by ([0,2π][0,θ1],[γ1, γ2]). The implementation further derives powers P2 . . . PI that all exhibit zeros in the ([ . . . ],[0,θ1],[γ1, γ2]) region but the zeros at located at different γ values. The minimal of the estimates M2 . . . MI must be found in the path that has its zero at the γ value where the most energy is present in the sound field. Whence in a first approximation all of M1 could be attributed to that γ range.
In a further enhancement the M2 . . . MI could be further analyzed to distribute the M1 power over the full [γ1, γ2] range.
Additional Use of Power Estimates
The power (statistical moment) estimates M and MF may be useful for other purposes than the control of the time-variant filter 50 of
In an embodiment the audio processor 20 could use an estimate MNOISE of the power of the noise of the acoustic environment according to equation (108) below, where arx and brx are a set of constants.
The audio processor 20 could generate the loudspeaker output out as the sum of the rx input amplified and the signal y amplified.
YRX(f,t)=GRX(f,t)·RX(f,t) (109)
OUT(f,t)=AOUT(f,t)·(YRX(f,t)+Y(f,t)) (110)
The optional time-variant filter RX 130 of
The implementation of the RX Gain control 60 is equivalent to that of the gain calculator 40. But the purpose of the time-variant filter RX 130 is not to reduce the noise content of the rx input, it is rather to amplify the rx input in function of the ambient level of acoustic noise, in order that the acoustic level of the signal contained in the rx input exceeds that of the ambient noise in the ear of user of the device. The following text describes the part of the functioning of the RX Gain control 60 that differs from the functioning of the gain calculator 40. Note that the RX Gain controller 60 optionally takes the rx signal as input in order to optionally measure the level of this signal. The RX gain could in some embodiments of the invention be controlled as given by equation (111) below. crx is a constant.
In some embodiments of the invention the RX gain is derived as in equation (112). HRX is a frequency response that approximates the transfer response of the loudspeaker and it's coupling to the ear of the user. In (112) (and (114)) MX is an estimate of the energy of the output X of the forward beamformer 30. MX could be taken as one of the MF components directly or be a linear combination of MF components.
In some embodiment the estimate MNOISE is smoothed over frequency to allow for a coarse frequency resolution in the RX gain control 60, while in some embodiments the gain GRX is smoothed over frequency to allow for a coarse frequency resolution in the RX gain control 60.
In some embodiments of the invention the transform leading from PNOISE allow GRX is controlled in function of user input for example via a button control, while in still some embodiments the RX gain GRX is a function of an estimate of the power of the RX input as well as an estimate of the power of the noise of the acoustic environment.
In equations (111) and (112) the estimates MNOISE and HRX are second order statistical estimates of energy. The estimates could alternatively be implemented as first or third order estimates. Equations (113) and (114) show variations of the embodiments based on first order statistical estimates:
Computational Implementation
The invention describes devices and methods that require s substantial amount of computation. The blocks 10, 20, 30, 40, 50, 60 and 130 with subblocks require the execution of computations. There exist numerous possible physical implementations of these blocks. The computations are preferably performed in the digital domain.
In one embodiment the acoustic device contains at least one processing unit. At least a part of the blocks 10, 20, 30, 40, 50, 60 and 130 is implemented as program code executing on the processing unit.
In a variation of this embodiment the mentioned program code reside in read-only-memory, ROM.
In a further variation of this embodiment the mentioned program code reside in random-access-memory, RAM. The program is loaded into the RAM from non-volatile memory type when the device is powered.
In one embodiment at least a part of the blocks 10, 20, 30, 40, 50, 60 and 130 is implemented with dedicated digital logic and memory.
Number | Date | Country | Kind |
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06124745 | Nov 2006 | EP | regional |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/DK2007/050142 | 10/5/2007 | WO | 00 | 5/18/2009 |
Publishing Document | Publishing Date | Country | Kind |
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WO2008/061534 | 5/29/2008 | WO | A |
Number | Name | Date | Kind |
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6947570 | Maisano | Sep 2005 | B2 |
Number | Date | Country |
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1 065 909 | Jan 2001 | EP |
WO 9904598 | Jan 1999 | WO |
WO 9909786 | Feb 1999 | WO |
WO 0033634 | Jun 2000 | WO |
WO 03015457 | Feb 2003 | WO |
WO 03015458 | Feb 2003 | WO |
Entry |
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Number | Date | Country | |
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20100061568 A1 | Mar 2010 | US |