Spatial Processing Front-End For Distant ASR Exploiting Self-Attention Channel Combinator

We present a novel multi-channel front-end based on channel shortening with theWeighted Prediction Error (WPE) method followed by a fixed MVDR beamformer used in combination with a recently proposed self-attention-based channel combination (SACC) scheme, for tackling the distant ASR problem. We show...

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Hauptverfasser: Sharma, Dushyant, Gong, Rong, Fosburgh, James, Kruchinin, Stanislav Yu, Naylor, Patrick A, Milanovic, Ljubomir
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Gong, Rong
Fosburgh, James
Kruchinin, Stanislav Yu
Naylor, Patrick A
Milanovic, Ljubomir
description We present a novel multi-channel front-end based on channel shortening with theWeighted Prediction Error (WPE) method followed by a fixed MVDR beamformer used in combination with a recently proposed self-attention-based channel combination (SACC) scheme, for tackling the distant ASR problem. We show that the proposed system used as part of a ContextNet based end-to-end (E2E) ASR system outperforms leading ASR systems as demonstrated by a 21.6% reduction in relative WER on a multi-channel LibriSpeech playback dataset. We also show how dereverberation prior to beamforming is beneficial and compare the WPE method with a modified neural channel shortening approach. An analysis of the non-intrusive estimate of the signal C50 confirms that the 8 channel WPE method provides significant dereverberation of the signals (13.6 dB improvement). We also show how the weights of the SACC system allow the extraction of accurate spatial information which can be beneficial for other speech processing applications like diarization.
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title Spatial Processing Front-End For Distant ASR Exploiting Self-Attention Channel Combinator
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