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Dynamic Gated Recurrent Neural Network for Compute-efficient Speech Enhancement

Longbiao Cheng, Ashutosh Pandey, Buye Xu, Tobi Delbrück, Shih‐Chii Liu

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Abstract

This paper introduces a new Dynamic Gated Recurrent Neural Network (DG-RNN) for compute-efficient speech enhancement models running on resource-constrained hardware platforms. It leverages the slow evolution characteristic of RNN hidden states over steps, and updates only a selected set of neurons at each step by adding a newly proposed select gate to the RNN model. This select gate allows the computation cost of the conventional RNN to be reduced during network inference. As a realization of the DG-RNN, we further propose the Dynamic Gated Recurrent Unit (D-GRU) which does not require additional parameters. Test results obtained from several state-of-the-art compute-efficient RNN-based speech enhancement architectures using the DNS challenge dataset, show that the D-GRU based model variants maintain similar speech intelligibility and quality metrics comparable to the baseline GRU based models even with an average 50% reduction in GRU computes.

Topics & Concepts

Recurrent neural networkComputer scienceInferenceSpeech enhancementReduction (mathematics)ComputationSpeech recognitionSpeech synthesisRealization (probability)Artificial intelligenceArtificial neural networkAlgorithmNoise reductionMathematicsStatisticsGeometrySpeech and Audio ProcessingSpeech Recognition and SynthesisIndoor and Outdoor Localization Technologies
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