This application is the national phase entry of International Application No. PCT/TR2019/050763, filed on Sep. 16, 2019, which is based upon and claims priority to Turkish Patent Application No. 2018/13344, filed on Sep. 17, 2018, the entire contents of which are incorporated herein by reference.
The invention is related to a method that enables acoustic source direction of arrival estimation and acoustic source separation, via the spatial weighting of a dictionary based representation of the steered response function calculated for a certain number of directions from spherical harmonic decomposition coefficients that are either obtained from microphone array recordings of the sound field or by using other means.
Microphone arrays comprising a plurality of microphones are used to record acoustic sources to extract spatial features of sound fields. The basic advantages of using a plurality of microphones instead of using a single microphone are the ability to estimate directions of arrival of sound sources and to filter and carry out the spatial analysis of sound fields. Estimation of the direction of arrival and separation of source signals that overlap in the time-frequency domain, comprises significant technical difficulties that negatively affect operation in real time. Moreover the available methods do not perform well in enclosed environments with a high level of reverberation. In some of the existing methods that use machine learning, problems such as speed and adaptation to different microphone arrays arise.
Due to the disadvantages mentioned above and the inadequacy of the existing solutions to solve the problem, it has been deemed necessary for a development to be carried out in the related technical field.
The sound signals recorded by means of microphones in environments where a plurality of sound sources are active are called, the mixture of these sound sources. The main aim of the invention is to enable the separation of acoustic sources from their mixtures via the spatial weighting of a dictionary based representation of the steered response function calculated for a finite number of directions, using spherical harmonic decomposition coefficients that are either obtained from microphone array recordings of the sound field or by using other methods (e.g. synthesized). The template vectors present in the dictionary, used in dictionary based representations are called atoms. The algorithm disclosed in this invention is based on the use of vectors (i.e. in the linear algebraic sense) that comprise as its elements samples taken at a limited number of points of spatially band limited functions representing plane waves. These functions are calculated at pre-defined positions on the analysis surface (such as a sphere).
Atoms that can express sufficiently well the directional map obtained using the steered response function and the amplitudes of these atoms are determined. The directions of arrival of sound sources are also calculated using the same method by grouping sound source candidates using neighborhood relations. This way, directions of arrival can be obtained from the recordings of the sound sources captured by means of a microphone array. Subsequently, the direction information and/or predetermined source directions of arrival are used to separate sound sources.
One of the most basic methods used for sound source separation is called maximum directivity factor beamforming. When compared with maximum directivity factor beamforming, SIR (Signal to Interference Ratio), SDR (Signal to Distortion Ratio) and SAR (Signal to Artifacts Ratio) improvement in a range of 8-10 dB are obtained using the disclosed method in acoustic environments having a high reverberation time.
The structural and characteristic features and all of its advantages shall be explained clearly by means of the detailed description below and by referring to the figures that are attached.
The figures need not be scaled and details that are not critical for a clear understanding of the present invention may have been omitted. Apart from this, elements that are at least substantially identical or those that at least substantially have the same functions, have been shown with the same reference number.
In this detailed description, the preferred embodiments of the invention are described such that they do not have any limiting effect but have been provided to further describe the subject matter.
The invention comprises two different algorithms for the localization and the separation of sound sources. These algorithms can be used together or independently from each other. The block diagram showing the flow of the disclosed invention is shown in
The definitions that were generally expressed above, have been used as a solution embodiment with the below mentioned preferred parameters. The spherical harmonic decomposition of the sound field is obtained from recordings made with a Rigid Spherical Microphone Array. Short time Fourier transform is used as the time-frequency transform. The Legendre impulse functions whose details are given below are sampled on the sphere to generate dictionary atoms. Orthogonal Matching Pursuit algorithm is used in the representation stage and maximum directivity factor beamforming is used for calculating steered beams. Von Mises function that is defined on the sphere is used for position dependent weighting. The distribution for direction of arrival estimation is obtained by using a histogram. In the preferred embodiment, the order of time-frequency transform and spherical harmonic decomposition has been swapped which leads to equivalent results due to the linearity of the concerned operations.
Short-Time Fourier Transform: Each of the signals obtained from the microphone array is transformed into the time-frequency domain by means of a short time Fourier transform. Although any kind of window function and length can be used for this process, in the preferred embodiment a 2048 sample Hann window has been used with 50% overlap.
The Calculation of Spherical Harmonic Decomposition: In this step the spherical harmonic decomposition for each time-frequency bin is calculated as follows:
Here the M is the number of microphones, γi is the related quadrature spherical weights, the k is the time-frequency bin index that has been obtained by using short time Fourier transform, Ωi=(θi, ϕi) is the position of the microphone on the spherical surface. Spherical harmonic function, Ynm is defined as follows:
Maximum directivity beamforming: This process is also known as the plane wave decomposition. It can be calculated as follows using spherical harmonic coefficients:
Wherein Ω=(θ, ϕ) is the steering direction of the maximum directivity factor beam, jn(.), hn(2)(.), jn′(.), and hn(2)′(.) are the spherical Bessel and Hankel functions, and the first-order derivatives thereof, ra is the radius of the spherical microphone, and frequency equalization function is given as:
Plane Wave Legendre Impulse Function Definitions at the Determined Directions: Maximum directivity factor beamform for a limited number of S plane wave is defined as given below:
Wherein
is the Legendre impulse with a maximum at Ωs=(θs, ϕs). This function is sampled at a finite number of points on the sphere to obtain the atoms in the dictionary used in Orthogonal Matching Pursuit algorithm in the following step.
Orthogonal Matching Pursuit: Orthogonal matching pursuit is an iterative method used to express steered response function in a given time-frequency bin using a small number of dictionary atoms.
As such, the steered response function at the given time-frequency bin can be expressed using a suitable selection of dictionary elements. The algorithm flow is as follows:
For example the steered response function in
Forming a Directional Histogram: The histogram calculated after finding the atoms that adequately express the steered response function by means of the orthogonal pursuit algorithm, shows how frequently these atoms are used in a given period of time.
Histogram Clustering and Source Localization: Source localization is based on a clustering principle based on the neighborhood relations of the directions of local maxima points in the histogram. The neighborhood relations of the positions is side information, and the directions where the sources are located are calculated by averaging the directions that the clustered positions are facing. The outputs of this stage are the components and the directions of the sound sources in the environment. The neighborhood relations of the peaks in the histogram is shown in
Directional Weighting: The source directions that have been calculated and the linear weights corresponding to these directions are used at this stage. In the preferred embodiment of the invention, the linear weights corresponding to each atom is weighted by using Von Mises Functions with a mean in the direction of the desired sound source evaluated at the center direction of that atom. The spatial filter obtained by means of weighting by the Von Mises function is shown in
Inverse Short-Time Fourier Transform: The new time-frequency representations obtained for each of the each sound sources are transformed back into the time domain using the inverse short-time Fourier transform to obtain the separated source signals.
Number | Date | Country | Kind |
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2018/13344 | Sep 2018 | TR | national |
Filing Document | Filing Date | Country | Kind |
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PCT/TR2019/050763 | 9/16/2019 | WO |
Publishing Document | Publishing Date | Country | Kind |
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WO2020/060519 | 3/26/2020 | WO | A |
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20210225386 A1 | Jul 2021 | US |