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Searching-and-averaging method of underdetermined blind speech signal separation in time domain 被引量:6

Searching-and-averaging method of underdetermined blind speech signal separation in time domain
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摘要 Underdetermined blind signal separation (BSS) (with fewer observed mixtures than sources) is discussed. A novel searching-and-averaging method in time domain (SAMTD) is proposed. It can solve a kind of problems that are very hard to solve by using sparse representation in frequency domain. Bypassing the disadvantages of traditional clustering (e.g., K-means or potential-function clustering), the durative- sparsity of a speech signal in time domain is used. To recover the mixing matrix, our method deletes those samples, which are not in the same or inverse direction of the basis vectors. To recover the sources, an improved geometric approach to overcomplete ICA (Independent Component Analysis) is presented. Several speech signal experiments demonstrate the good performance of the proposed method. Underdetermined blind signal separation (BSS) (with fewer observed mixtures than sources) is discussed. A novel searching-and-averaging method in time domain (SAMTD) is proposed. It can solve a kind of problems that are very hard to solve by using sparse representation in frequency domain. Bypassing the disadvantages of traditional clustering (e.g., K-means or potential-function clustering), the durative- sparsity of a speech signal in time domain is used. To recover the mixing matrix, our method deletes those samples, which are not in the same or inverse direction of the basis vectors. To recover the sources, an improved geometric approach to overcomplete ICA (Independent Component Analysis) is presented. Several speech signal experiments demonstrate the good performance of the proposed method.
出处 《Science in China(Series F)》 2007年第5期771-782,共12页 中国科学(F辑英文版)
基金 Supported by the National Natural Science Foundation of China (Grant Nos. U0635001, 60505005 and 60674033) the Natural Science Fund of Guangdong Province (Grant Nos. 04205783 and 05006508) the Specialized Prophasic Basic Research Projects of the Ministry of Science and Technology of China (Grant No. 2005CCA04100)
关键词 underdetermined blind signal separation sparse representation searching-and-averaging method overcomplete independent component analysis underdetermined blind signal separation, sparse representation, searching-and-averaging method, overcomplete independent component analysis
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参考文献10

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同被引文献25

  • 1肖明,谢胜利.线性非奇异盲信号混叠的分离矩阵个数[J].华南理工大学学报(自然科学版),2004,32(10):41-45. 被引量:3
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  • 4Theis F J,Lange W E,Puntonet C G.A Geometric Algorithm for Overcomplete Linear ICA[J].Neuro Computing,2004,56(18):381-398.
  • 5Li Yuanqing,Amari S,Cichocki A,et al.Underdetermined Blind Source Separation Based on Sparse Representation[J].IEEE Transactions on Signal Processing,2006,54(2):423-437.
  • 6Takigawa I,Kudo M,Toyarna J.Performance Analysis of Minimum l1-norm Solution for Underdetermined Source Separation[J].IEEE Transactions on Signal Processing,2004,52(3):582-591.
  • 7Xiao Ming,Xie Shengli,Fu Yuli.A Statistically Sparse Decomposition Principle for Underdetermined Blind Source Separation[C] //Proc.of 2005 International Symposium on Intelligent Signal Processing and Communication Systems.Guangzhou,China:[s.n.] ,2005.
  • 8Peng Dezhong,Xiang Yong.Underdetermined Blind Source Separation Based on Relaxed Sparsity Condition of Sources[J].IEEE Transactions on Signal Processing,2009,57(2):809-814.
  • 9Donoho D L,Elad M.Maximal sparsity representation via minimization[J].Proceedings of the National Academy of Sciences,2003,100(5):2197-2202.
  • 10Zibulevsky M,Pearlmutter B A.Blind source separation by sparse decomposition in a signal dictionary[J].Neural Computation,2001,13(4):863-882.

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