基于refinenet的复合度量损失训练语音增强

Chuan Peng, Tian Lan, Yuxin Qian, M. Li, Qiao Liu
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引用次数: 0

摘要

语音增强是一项提高退化语音的质量和可理解性的任务。近年来的研究表明,与前馈神经网络(FNN)和递归神经网络(RNN)相比,具有编码器-解码器结构的卷积神经网络(CNN)可以在更少的参数下获得更好的性能。这启发我们基于最先进的编码器-解码器架构RefineNet构建CNN模型,其有效性已被证明用于高分辨率语义分割。在这项工作中,RefineNet被用于利用多级时频特征来生成高级特征。此外,一些研究担心评估指标与训练损失之间的不一致可能导致无法通过训练获得最优模型。因此,我们将度量作为损失,并将它们组合起来。此外,还合成了包含相位信息的波形MSE损失,以补偿使用带噪相位重建增强语音的损失。实验表明,该模型在低信噪比的情况下具有较高的清晰度和高质量,优于基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RefineNet-Based Speech Enhancement with Composite Metric Loss Training
Speech enhancement is a task to improve the quality and intelligibility of degraded speech. Recent work shows convolutional neural network (CNN) with encoder-decoder architecture can achieve better performance with fewer parameters than the feed-forward neural network (FNN) and recurrent neural network (RNN). It inspires us to build a CNN model based on state-of-the-art encoder-decoder architecture, RefineNet, whose effectiveness has been proved for high-resolution semantic segmentation. In this work, RefineNet is used to exploit multi-level time-frequency features for generating high-level features. Furthermore, some works concern that the inconsistency between evaluation metrics and training loss may result in failing to obtain the optimal model by training. Therefore, we take metrics as loss and composite them. Furthermore, the waveform MSE loss, which contains phase information, is also composited to compensate for using noisy phase to reconstruct enhanced speech. Experiments show our model achieves high quality and intelligibility and outperform baselines, especially at a low signal-to-noise ratio.
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