利用感知度量损失改进语音增强中的DEMUCS系统

Qinglin Hong, Chia Dai, Hui-Chun Hsu, Zong-Tai Wu, J. Hung
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引用次数: 1

摘要

本研究旨在通过修改各自的损失函数来改进源分离技术DEMUCS。DEMUCS由Facebook团队开发,基于Wave-U-Net,由卷积层编码和解码块以及中间的LSTM层组成。DEMUCS中应用的损失函数包含波域L1距离和多尺度短时傅里叶变换(STFT)损失。我们提出通过考虑感知度量分数来修正原始损失,包括感知语音质量(PESQ)和短时客观可理解性(STOI)。新的损失函数成为原始损失与STOI和PESQ的损失的加权和,希望突出增强的话语的感知质量。在VoiceBank-DEMUCS任务上进行的初步实验表明,改进损失函数的DEMUCS网络为噪声干扰的话语提供了更高的客观感知度量分数(PESQ和STOI)。这些结果表明,本文的工作有利于DEMUCS的语音增强性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging the perceptual metric loss to improve the DEMUCS system in speech enhancement
This study aims to improve the source separation technique, DEMUCS, by revising the respective loss function. DEMUCS, developed by Facebook Team, is built on the Wave-U-Net and consists of convolutional layer encoding and decoding blocks with an LSTM layer in between. The applied loss function in DEMUCS contains wave-domain L1 distance and multi-scale short-time-Fourier-transform (STFT) loss.We present to revise the original loss by considering the perceptual metric scores, including perceptual speech quality (PESQ) and short-time objective intelligibility (STOI). The new loss function becomes a weighted sum of the original loss and the losses of STOI and PESQ, hoping to highlight the perceptual quality of the enhanced utterances.According to the preliminary experiments conducted on the VoiceBank-DEMUCS task, the DEMUCS network with the modified loss function provides the noise-corrupted utterances with superior objective perceptual metric scores (PESQ and STOI). These results indicate that the presented work benefits DEMUCS in speech enhancement performance.
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