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The Performance Evaluation of Classic ICA Algorithms for Blind Separation of Fabric Defects |
College of Textile and Clothing Engineering, Soochow University, Suzhou 215000, China |
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Abstract Independent Component Analysis (ICA) is a blind source separation technique that has been broadly
used in signal and image separation. In order to verify the feasibility of ICA algorithms which will
be used for the detection of fabric defect, four kinds of classic ICA algorithms have been chosen and
compared in terms of their algorithm performances. The results of simulation experiments show that the
separation performances of these algorithms are different and FastICA algorithm has the best separation
performance than others.
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Fund:
This work was financially supported by the Priority Academic Program Development of Jiangsu
Higher Education Institutions.
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Corresponding Authors:
College of Textile and Clothing Engineering, Soochow University, Suzhou 215000, China
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Cite this article: |
Hailan Zhang,Zhonghao Cheng. The Performance Evaluation of Classic ICA Algorithms for Blind Separation of Fabric Defects[J]. Journal of Fiber Bioengineering and Informatics, 2014, 7(3): 377-386.
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