BLIND SPEECH SEPARATION FOR ROBOTS WITH INTELLIGENT HUMAN-MACHINE INTERACTION

被引:0
|
作者
Huang Yulei Ding Zhizhong Dai Lirong* Chen Xiaoping* (Department of Communication Engineering
机构
关键词
Blind Source Separation (BSS); Blind deconvolution; Speech signal processing; Human-machine interaction; Simultaneous diagonalization;
D O I
暂无
中图分类号
TN912.34 [语音识别与设备]; TP242 [机器人];
学科分类号
0711 ; 1111 ;
摘要
Speech recognition rate will deteriorate greatly in human-machine interaction when the speaker’s speech mixes with a bystander’s voice. This paper proposes a time-frequency approach for Blind Source Seperation (BSS) for intelligent Human-Machine Interaction(HMI). Main idea of the algorithm is to simultaneously diagonalize the correlation matrix of the pre-whitened signals at different time delays for every frequency bins in time-frequency domain. The prososed method has two merits: (1) fast convergence speed; (2) high signal to interference ratio of the separated signals. Numerical evaluations are used to compare the performance of the proposed algorithm with two other deconvolution algorithms. An efficient algorithm to resolve permutation ambiguity is also proposed in this paper. The algorithm proposed saves more than 10% of computational time with properly selected parameters and achieves good performances for both simulated convolutive mixtures and real room recorded speeches.
引用
收藏
页码:286 / 293
页数:8
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