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Quaternion Neural Networks for Multi-channel Distant Speech Recognition (2005.08566v2)

Published 18 May 2020 in eess.AS, cs.LG, cs.SD, and stat.ML

Abstract: Despite the significant progress in automatic speech recognition (ASR), distant ASR remains challenging due to noise and reverberation. A common approach to mitigate this issue consists of equipping the recording devices with multiple microphones that capture the acoustic scene from different perspectives. These multi-channel audio recordings contain specific internal relations between each signal. In this paper, we propose to capture these inter- and intra- structural dependencies with quaternion neural networks, which can jointly process multiple signals as whole quaternion entities. The quaternion algebra replaces the standard dot product with the Hamilton one, thus offering a simple and elegant way to model dependencies between elements. The quaternion layers are then coupled with a recurrent neural network, which can learn long-term dependencies in the time domain. We show that a quaternion long-short term memory neural network (QLSTM), trained on the concatenated multi-channel speech signals, outperforms equivalent real-valued LSTM on two different tasks of multi-channel distant speech recognition.

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Authors (5)
  1. Xinchi Qiu (26 papers)
  2. Titouan Parcollet (49 papers)
  3. Mirco Ravanelli (72 papers)
  4. Nicholas Lane (14 papers)
  5. Mohamed Morchid (12 papers)
Citations (15)

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