Speech Perception Improvement Algorithm Based on a Dual-Path Long Short-Term Memory Network

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Abstract

Current deep learning-based speech enhancement methods focus on enhancing the time–frequency representation of the signal. However, conventional methods can lead to speech damage due to resolution mismatch problems that emphasize only specific information in the time or frequency domain. To address these challenges, this paper introduces a speech enhancement model designed with a dual-path structure that identifies key speech characteristics in both the time and time–frequency domains. Specifically, the time path aims to model semantic features hidden in the waveform, while the time–frequency path attempts to compensate for the spectral details via a spectral extension block. These two paths enhance temporal and spectral features via mask functions modeled as LSTM, respectively, offering a comprehensive approach to speech enhancement. Experimental results show that the proposed dual-path LSTM network consistently outperforms conventional single-domain speech enhancement methods in terms of speech quality and intelligibility.

Original languageEnglish
Article number1325
JournalBioengineering
Volume10
Issue number11
DOIs
StatePublished - Nov 2023

Keywords

  • dual-path network
  • encoder–decoder structure
  • LSTM
  • mel-filter banks
  • merge algorithm
  • spectral extension block
  • speech enhancement
  • STFT

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