Color Separation Technique of Jacquard Fabric and the Improved Method Thereof

Article Preview

Abstract:

Three traditional color separation methods such as automatic color separation of fabric CAD, self-defined primary color separation and spot color separation are analyzed by comparison , the advantages and disadvantages of color separation based on cluster analysis are discussed by tests . On this basis, an improved fabric color separation method is put forward based on genetic fuzzy clustering algorithm, and the experimental results show that the fidelity of fabric patterns after color separation using this improved method is superior to that after color separation using traditional color separation method.

You might also be interested in these eBooks

Info:

Periodical:

Advanced Materials Research (Volumes 291-294)

Pages:

3050-3055

Citation:

Online since:

July 2011

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2011 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Wang Qiufen, Shi Guosheng and Liang Daolei, A Color Separating Method of Colored Photographic Woven Fabrics, Journal of Zhejiang Institute of Science and Technology, Vol. 21, Issue 2, June, (2004)

Google Scholar

[2] MaLingzhou. Research&Implementation of the System for Computer Aided Innovative Fabric Design and Manuafature. Dissertation Submitted to Zhejiang University for the Degree of Doctor Philosophy. Feb,2005.

Google Scholar

[3] Liang Daolei, Huang Guoxing and Jin Jian, The Application of ClusteringAnalysis in Color Separation of the Color Woven Photograph, Computer Science, (2006)

Google Scholar

[4] Zhou Ming and Sun Shudong. Genetic Algorithms: Theories and Applications [M]. Beijing: National Defence Industrial Press, (2002)

Google Scholar

[5] Cao Xiedong. Fuzzy Information Processing and Application [M]. Beijing: Science Press, (2003)

Google Scholar

[6] Zhang Wenxiu and Liang Yi. Mathematical Foundation of Genetic Algorithms [M]. Xi'an: Xi'an Jiaotong University Press, (2001)

Google Scholar

[7] Zhang Yujin. Image Segmentation [M]. Beijing: Science Press, (2001)

Google Scholar

[8] Zhou Xuguo. Topographic Map Segmentation based on Genetic Fuzzy C - Means Clustering Algorithm, Computer and Digital Engineering, Vol. 33 (2005)

Google Scholar