2014 IEEE Workshop on Statistical Signal Processing (SSP) 2014
DOI: 10.1109/ssp.2014.6884679
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Learning a hierarchical dictionary for single-channel speech separation

Abstract: 1This paper presents a novel algorithm for learning a hierarchical dictionary in the short-time Fourier (STFT) domain, which can improve the performance of dictionary learning (DL) based single-channel speech separation (SCSS). The goal of SCSS is to separate the underlying clean speeches from a signal mixture, which was often achieved by learning a pair of discriminative subdictionaries and sparsely coding the mixture speech signal over the dictionary pair. The case of 2 source speech signals is considered in… Show more

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References 13 publications
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