Blind Deconvolution of Timely-correlated Sources by Homomorphic Filtering in Fourier Space
نویسندگان
چکیده
An approach to multi-channel blind deconvolution is developed, which uses an adaptive filter that performs blind source separation in the Fourier space. The approach keeps (during the learning process) the same permutation and provides appropriate scaling of components for all frequency bins in the frequency space. Experiments verify a proper blind deconvolution of convolution mixtures of sources.
منابع مشابه
Blind Source Deconvolution by Homomorphic Filtering in Fourier Space
An approach to multi-channel blind deconvolution is developed, which uses an adaptive filter that performs blind source separation in the Fourier space. The approach keeps (during the learning process) the same permutation and provides appropriate scaling of components for all frequency bins in the frequency space. Experiments verify a proper blind deconvolution of convolution mixtures of sources.
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تاریخ انتشار 2003