2021
DOI: 10.48550/arxiv.2111.08635
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Single-channel speech separation using Soft-minimum Permutation Invariant Training

Abstract: The goal of speech separation is to extract multiple speech sources from a single microphone recording. Recently, with the advancement of deep learning and availability of large datasets, speech separation has been formulated as a supervised learning problem. These approaches aim to learn discriminative patterns of speech, speakers, and background noise using a supervised learning algorithm, typically a deep neural network. A long-lasting problem in supervised speech separation is finding the correct label for… Show more

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References 29 publications
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