Robust speech separation using two-stage independent component analysis

Author(s):  
P. Aarabi ◽  
S. Mavandadi
2012 ◽  
Vol 22 (6) ◽  
pp. 1126-1136 ◽  
Author(s):  
Iván Durán-Díaz ◽  
Sergio Cruces ◽  
María Auxiliadora Sarmiento-Vega ◽  
Pablo Aguilera-Bonet

2020 ◽  
Vol 10 (7) ◽  
pp. 2593
Author(s):  
Ke Zhang ◽  
Yangjie Wei ◽  
Dan Wu ◽  
Yi Wang

Voice signals acquired by a microphone array often include considerable noise and mutual interference, seriously degrading the accuracy and speed of speech separation. Traditional beamforming is simple to implement, but its source interference suppression is not adequate. In contrast, independent component analysis (ICA) can improve separation, but imposes an iterative and time-consuming process to calculate the separation matrix. As a supporting method, principle component analysis (PCA) contributes to reduce the dimension, retrieve fast results, and disregard false sound sources. Considering the sparsity of frequency components in a mixed signal, we propose an adaptive fast speech separation algorithm based on multiple sound source localization as preprocessing to select between beamforming and frequency domain ICA according to different mixing conditions per frequency bin. First, a fast positioning algorithm allows calculating the maximum number of components per frequency bin of a mixed speech signal to prevent the occurrence of false sound sources. Then, PCA reduces the dimension to adaptively adjust the weight of beamforming and ICA for speech separation. Subsequently, the ICA separation matrix is initialized based on the sound source localization to notably reduce the iteration time and mitigate permutation ambiguity. Simulation and experimental results verify the effectiveness and speedup of the proposed algorithm.


This Paper is an attempt to develop the Independent Component Analysis (ICA) based source separation implementation on the speech signals. The blind source separation technique which work on the basis of the Gaussian process is developed and the performance is analyzed. Blind source separation is the process in which the source separation of the main signal and the noise is separated without any reference available. Matlab based implementation is carried out and the results are obtained. The results thus obtained are satisfactory.


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