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Neural Network Alternatives to Convolutive Audio Models for Source Separation

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arxiv 1709.07908 v1 pith:TTQKUN7J submitted 2017-09-20 cs.SD eess.AS

Neural Network Alternatives to Convolutive Audio Models for Source Separation

classification cs.SD eess.AS
keywords convolutiveneuralnetworkaudiomodelseparationactsalternative
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Convolutive Non-Negative Matrix Factorization model factorizes a given audio spectrogram using frequency templates with a temporal dimension. In this paper, we present a convolutional auto-encoder model that acts as a neural network alternative to convolutive NMF. Using the modeling flexibility granted by neural networks, we also explore the idea of using a Recurrent Neural Network in the encoder. Experimental results on speech mixtures from TIMIT dataset indicate that the convolutive architecture provides a significant improvement in separation performance in terms of BSSeval metrics.

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