2018
DOI: 10.3390/app8010123
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Multiple Speech Source Separation Using Inter-Channel Correlation and Relaxed Sparsity

Abstract: In this work, a multiple speech source separation method using inter-channel correlation and relaxed sparsity is proposed. A B-format microphone with four spatially located channels is adopted due to the size of the microphone array to preserve the spatial parameter integrity of the original signal. Specifically, we firstly measure the proportion of overlapped components among multiple sources and find that there exist many overlapped time-frequency (TF) components with increasing source number. Then, consider… Show more

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(1 citation statement)
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“…The multiple-sound-source separation framework is proposed based on the sparsity of the speech signal. Previous studies have proved the existence of sparse and non-sparse component points of a speech signal in the TF domain [29,30]. Specifically, the sparse component points refer to the TF points which are only dominated by the direct component from one sound source.…”
Section: Multiple Sound Source Separation Frameworkmentioning
confidence: 99%
“…The multiple-sound-source separation framework is proposed based on the sparsity of the speech signal. Previous studies have proved the existence of sparse and non-sparse component points of a speech signal in the TF domain [29,30]. Specifically, the sparse component points refer to the TF points which are only dominated by the direct component from one sound source.…”
Section: Multiple Sound Source Separation Frameworkmentioning
confidence: 99%