基于多层注意机制的语音分离模型

M. Li, Tian Lan, Chuan Peng, Yuxin Qian, Qiao Liu
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引用次数: 3

摘要

语音分离是语音处理的前端应用。它的目的是在多说话人的环境中分离语音。神经网络方法在语音分离方面表现出良好的性能,但现有的方法大多是对说话人的全部语音进行分离。根据听觉选择理论,我们知道在多说话人的情况下,人们每次只能关注一个说话人。受此启发,我们利用注意机制引入说话人信息,并提出多层结构,使所提模型能够提取更完整的分离语音。在TSP和THCHS-30数据集上的实验表明,我们的模型在短时客观可理解度(STOI)和语音质量感知评价(PESQ)方面优于基线模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-layer Attention Mechanism Based Speech Separation Model
Speech separation is the front-end of speech processing applications. Its purpose is to separate the speech in a multi-speaker environment. The neural network methods show good performance in speech separation, but most of the existing methods try to separate all the speaker speech. From the theory of auditory selection, we know that people can only focus on one speaker each time in multi-speaker conditions. Inspired by this, we use the attention mechanism to introduce the speaker information and propose a multi-layer structure so that the proposed model can extract a more complete separation speech. The experiments tested on the TSP and THCHS-30 datasets show that our model is superior to the baseline models in Short-Time Objective Intelligibility(STOI) and Perceptual Evaluation of Speech Quality(PESQ).
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