Speech Separation based on As3-2mix Hybrid Strategy Combined Training Convolutional Time Domain Neural Network

Pengxu Wang, Haijun Zhang
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Abstract

In recent years, time-domain speech separation methods have made great progress. The existing time-domain speech separation methods have shown good separation performance on wsj-2mix datasets. However, the performance of these models on Chinese speech datasets has not been studied in detail. To solve this problem, this paper makes a speech separation dataset based on aishell-3 open-source hi-fi Mandarin speech corpus, which we call as3-2mix. As3-2mix not only considers the original features of mixed speech, but also adopts two mixing strategies: same-sex mixing and opposite sex mixing. Based on as3-2mix dataset and different training strategies, we evaluate the generalization ability of convolutional time-domain neural network, and analyze the separated speech through PESQ, STOI, SDRi and SI-SNRi. The experimental results show that our PESQ reaches 2.48 and 2.26 on as3mm1-2mix and as3ff1-2mix datasets respectively, while our STOI reaches 2.46, 0.89 and 0.83 on as3mm1-2mix, as3ff1-2mix and as3fm1-2mix datasets respectively, it is higher than other methods on the same type of dataset. Although the performance of SDRi and SI-SNRi in Chinese dataset is not as good as that in English dataset, they still achieved 13.56dB and 13.21dB good scores, which also shows that different languages may affect some characteristics of speech and then affect the separation effect to a certain extent. Finally, when analyzing the speech amplitude, we find that the speech with large amplitude is conducive to improve PESQ and STOI, and the speech with small amplitude is conducive to improve the SDRi and SI-SNRi.
基于As3-2mix混合策略结合训练卷积时域神经网络的语音分离
近年来,时域语音分离方法取得了很大的进展。现有的时域语音分离方法在wsj-2mix数据集上表现出了良好的分离性能。然而,这些模型在中文语音数据集上的性能尚未得到详细的研究。为了解决这一问题,本文基于ahell -3开源高保真普通话语音语料库制作了一个语音分离数据集,我们称之为as3-2mix。As3-2mix不仅考虑了混合语音的原始特征,还采用了同性混合和异性混合两种混合策略。基于as3-2mix数据集和不同的训练策略,评估了卷积时域神经网络的泛化能力,并通过PESQ、STOI、SDRi和SI-SNRi对分离语音进行了分析。实验结果表明,在as3mm1-2mix和as3ff1-2mix数据集上,我们的PESQ分别达到2.48和2.26,而在as3mm1-2mix、as3ff1-2mix和as3fm1-2mix数据集上,我们的STOI分别达到2.46、0.89和0.83,在同类型数据集上高于其他方法。虽然SDRi和SI-SNRi在中文数据集中的表现不如英文数据集中,但它们仍然取得了13.56dB和13.21dB的好成绩,这也说明不同的语言可能会影响语音的一些特征,从而在一定程度上影响分离效果。最后,在对语音振幅进行分析时,我们发现振幅较大的语音有利于提高PESQ和STOI,而振幅较小的语音有利于提高SDRi和SI-SNRi。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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