Publication: An information maximization based blind source separation approach for dependent and independent sources
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Abstract
We introduce a new information maximization (infomax) approach for the blind source separation problem. The proposed framework provides an information-theoretic perspective for determinant maximization-based structured matrix factorization methods such as nonnegative and polytopic matrix factorization. For this purpose, we use an alternative joint entropy measure based on the log-determinant of covariance, which we refer to as log-determinant (LD) entropy. The corresponding (LD) mutual information between two vectors reflects a level of their correlation. We pose the infomax BSS criterion as the maximization of the LD-mutual information between the input and output of the separator under the constraint that the output vectors lie in a presumed domain set. In contrast to the ICA infomax approach, the proposed information maximization approach can separate both dependent and independent sources. Furthermore, we can provide a finite sample guarantee for the perfect separation condition in the noiseless case.
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IEEE
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Acoustics, Computer science, Artificial intelligence, Electrical and electronics engineering
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2022 IEEE International Conference On Acoustics, Speech and Signal Processing (Icassp)
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DOI
10.1109/ICASSP43922.2022.9746099