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Inplace Gated Convolutional Recurrent Neural Network For Dual-channel Speech Enhancement (2107.11968v1)

Published 26 Jul 2021 in eess.AS

Abstract: For dual-channel speech enhancement, it is a promising idea to design an end-to-end model based on the traditional array signal processing guideline and the manifold space of multi-channel signals. We found that the idea above can be effectively implemented by the classical convolutional recurrent neural networks (CRN) architecture. We propose a very compact in place gated convolutional recurrent neural network (inplace GCRN) for end-to-end multi-channel speech enhancement, which utilizes inplace-convolution for frequency pattern extraction and reconstruction. The inplace characteristics efficiently preserve spatial cues in each frequency bin for channel-wise long short-term memory neural networks (LSTM) tracing the spatial source. In addition, we come up with a new spectrum recovery method by predict amplitude mask, mapping, and phase, which effectively improves the speech quality.

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Authors (2)
  1. Xueliang Zhang (39 papers)
  2. Jinjiang liu (5 papers)
Citations (15)

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