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Supervised Attention Multi-Scale Temporal Convolutional Network for monaural speech enhancement

Zehua Zhang, Lu Zhang, Xuyi Zhuang, Yukun Qian, Mingjiang Wang

2024EURASIP Journal on Audio Speech and Music Processing14 citationsDOIOpen Access PDF

Abstract

Abstract Speech signals are often distorted by reverberation and noise, with a widely distributed signal-to-noise ratio (SNR). To address this, our study develops robust, deep neural network (DNN)-based speech enhancement methods. We reproduce several DNN-based monaural speech enhancement methods and outline a strategy for constructing datasets. This strategy, validated through experimental reproductions, has effectively enhanced the denoising efficiency and robustness of the models. Then, we propose a causal speech enhancement system named Supervised Attention Multi-Scale Temporal Convolutional Network (SA-MSTCN). SA-MSTCN extracts the complex compressed spectrum (CCS) for input encoding and employs complex ratio masking (CRM) for output decoding. The supervised attention module, a lightweight addition to SA-MSTCN, guides feature extraction. Experiment results show that the supervised attention module effectively improves noise reduction performance with a minor increase in computational cost. The multi-scale temporal convolutional network refines the perceptual field and better reconstructs the speech signal. Overall, SA-MSTCN not only achieves state-of-the-art speech quality and intelligibility compared to other methods but also maintains stable denoising performance across various environments.

Topics & Concepts

MonauralComputer scienceSpeech recognitionScale (ratio)Speech enhancementArtificial intelligencePhysicsNoise reductionQuantum mechanicsSpeech and Audio ProcessingAdvanced Adaptive Filtering TechniquesSpeech Recognition and Synthesis