Computerized color separation system for printed fabrics by using backward-propagation neural network |
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Authors: | Chung-Feng Jeffrey Kuo Te-Li Su Yi-Jen Huang |
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Affiliation: | (1) Department of Polymer Engineering, National Taiwan University of Science and Technology, 106 Taipei, Taiwan, Republic of China |
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Abstract: | Textile production must be coupled with hi-tech assistant system to save cost of labor, material, time. Therefore color quality control is one very important step in any textiles, however excellent the fabric material itself is, if it lacks good color, then it may still result in dull sale. Therefore, this paper proposes a printed fabrics computerized color separation system based on backward-propagation neural network, whose primary function is to separate rich color of printed fabrics pattern so as to reduce time-consuming manual color separation color matching of current players. What it adopted was RGB color space, expressed in red, green, and blue. Analyze color features of printed fabrics, use gene algorithm to find sub-image with same color distribution as original image of printed fabrics yet smaller area, for later color separation algorithm use. In terms of color separation algorithm, this paper relied on supervised backward-propagation neural network to conduct color separation of printed fabrics RGB sub-image, and utilized PANTONE® standard color ticket to do color matching, so as to realize accurate color separation. |
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Keywords: | Computerized color separation Printed fabric Genetic algorithm Back-propagation neural network RGB color space |
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