Discriminative Learning for Monaural Speech Separation Using Deep Embedding Features
Fan, Cunhang1,2; Liu, Bin1; Tao, Jianhua1,2,3; Yi, Jiangyan1; Wen, Zhengqi1
2019-09
会议日期September 15–19, 2019
会议地点Graz, Austria
英文摘要

Deep clustering (DC) and utterance-level permutation invariant training (uPIT) have been demonstrated promising for speakerindependent speech separation. DC is usually formulated as two-step processes: embedding learning and embedding clustering, which results in complex separation pipelines and a huge obstacle in directly optimizing the actual separation objectives. As for uPIT, it only minimizes the chosen permutation with the lowest mean square error, doesn’t discriminate it with other permutations. In this paper, we propose a discriminative learning method for speaker-independent speech separation using deep embedding features. Firstly, a DC network is trained to extract deep embedding features, which contain each source’s information and have an advantage in discriminating each target speakers. Then these features are used as the input for uPIT to directly separate the different sources. Finally, uPIT and DC are jointly trained, which directly optimizes the actual separation objectives. Moreover, in order to maximize the distance of each permutation, the discriminative learning is applied to fine tuning the whole model. Our experiments are conducted on WSJ0-2mix dataset. Experimental results show that the proposed models achieve better performances than DC and uPIT for speaker-independent speech separation.

语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/44384]  
专题模式识别国家重点实验室_智能交互
通讯作者Tao, Jianhua
作者单位1.NLPR, Institute of Automation, Chinese Academy of Sciences
2.School of Artificial Intelligence, University of Chinese Academy of Sciences
3.CAS Center for Excellence in Brain Science and Intelligence Technology
推荐引用方式
GB/T 7714
Fan, Cunhang,Liu, Bin,Tao, Jianhua,et al. Discriminative Learning for Monaural Speech Separation Using Deep Embedding Features[C]. 见:. Graz, Austria. September 15–19, 2019.
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