JCP 2014 Vol.9(9): 2082-2090 ISSN: 1796-203X
doi: 10.4304/jcp.9.9.2082-2090
doi: 10.4304/jcp.9.9.2082-2090
A Single-Channel ICA-R Method for Speech Signal Denoising combining EMD and Wavelet
Yangyang Qi1, Fuqiang Yao2, and Miao Yu2
1Institute of Communication Engineering, PLA Univ. of Sci.&Tech, Nanjing, China
2Nanjing Telecommunication Technology Research Institute, Nanjing, China
Abstract—According to the problem of speech signal denoising, we propose a novel method in this paper, which combines empirical mode decomposition (EMD), wavelet threshold denoising and independent component analysis with reference (ICA-R). Because there is only one mixed recording, it is a single-channel independent component analysis (SCICA) problem in fact, which is hard to solve by traditional ICA methods. EMD is exploited to expand the single-channel received signal into several intrinsic mode functions (IMFs) in advance, therefore traditional ICA of multi-dimension becomes applicable. First, the received signal is segmented to reduce the processing delay. Secondly, wavelet thresholding is applied to the noise-dominated IMFs. Finally, fast ICA-R is introduced to extract the object speech component from the processed IMFs, whose reference signal is constructed by assembling the high-order IMFs. The simulations are carried out under different noise levels and the performance of the proposed method is compared with EMD, wavelet thresholding, EMD-wavelet and EMD-ICA approaches. Simulation results indicate that the proposed method exhibit superior denoising performance especially when signal-to-noise ratio is low, with a half shorter running time.
Index Terms—speech signal denoising, EMD, wavelet, independent component analysis; SCICA; fast ICA-R
2Nanjing Telecommunication Technology Research Institute, Nanjing, China
Abstract—According to the problem of speech signal denoising, we propose a novel method in this paper, which combines empirical mode decomposition (EMD), wavelet threshold denoising and independent component analysis with reference (ICA-R). Because there is only one mixed recording, it is a single-channel independent component analysis (SCICA) problem in fact, which is hard to solve by traditional ICA methods. EMD is exploited to expand the single-channel received signal into several intrinsic mode functions (IMFs) in advance, therefore traditional ICA of multi-dimension becomes applicable. First, the received signal is segmented to reduce the processing delay. Secondly, wavelet thresholding is applied to the noise-dominated IMFs. Finally, fast ICA-R is introduced to extract the object speech component from the processed IMFs, whose reference signal is constructed by assembling the high-order IMFs. The simulations are carried out under different noise levels and the performance of the proposed method is compared with EMD, wavelet thresholding, EMD-wavelet and EMD-ICA approaches. Simulation results indicate that the proposed method exhibit superior denoising performance especially when signal-to-noise ratio is low, with a half shorter running time.
Index Terms—speech signal denoising, EMD, wavelet, independent component analysis; SCICA; fast ICA-R
Cite: Yangyang Qi, Fuqiang Yao, and Miao Yu, "A Single-Channel ICA-R Method for Speech Signal Denoising combining EMD and Wavelet," Journal of Computers vol. 9, no. 9, pp. 2082-2090, 2014.
General Information
ISSN: 1796-203X
Abbreviated Title: J.Comput.
Frequency: Bimonthly
Abbreviated Title: J.Comput.
Frequency: Bimonthly
Editor-in-Chief: Prof. Liansheng Tan
Executive Editor: Ms. Nina Lee
Abstracting/ Indexing: DBLP, EBSCO, ProQuest, INSPEC, ULRICH's Periodicals Directory, WorldCat,etc
E-mail: jcp@iap.org
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