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arxiv: 2105.03643 · v3 · pith:OD7L5MBS · submitted 2021-05-08 · eess.AS · cs.SD

Latency-Controlled Neural Architecture Search for Streaming Speech Recognition

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classification eess.AS cs.SD
keywords architecturelatencyneuralcellslatency-controlledoperationproposedrecognition
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Neural architecture search (NAS) has attracted much attention and has been explored for automatic speech recognition (ASR). In this work, we focus on streaming ASR scenarios and propose the latency-controlled NAS for acoustic modeling. First, based on the vanilla neural architecture, normal cells are altered to causal cells to control the total latency of the architecture. Second, a revised operation space with a smaller receptive field is proposed to generate the final architecture with low latency. Extensive experiments show that: 1) Based on the proposed neural architecture, the neural networks with a medium latency of 550ms (millisecond) and a low latency of 190ms can be learned in the vanilla and revised operation space respectively. 2) For the low latency setting, the evaluation network can achieve more than 19\% (average on the four test sets) relative improvements compared with the hybrid CLDNN baseline, on a 10k-hour large-scale dataset.

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