‘Mean Contrast’ Texture Feature Model of Nature Environmental Protection Fabric

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Abstract:

Aiming at lack of mature texture feature model of natural green fabric image, this paper presents a new “Mean Contrast” texture feature model, which can express better on the type of collecting and narrow-long and some irregular defects. First, three-dimensional model of texture characteristics is established, various natural green fabrics are tested in experiments using the contrast feature, and then “Mean Contrast” feature is proposed, so that characteristic value of fabric texture can be converged. Finally, experimental results show that the “mean contrast” feature is so simple and effective that better show a variety of fabric texture variation, and has the numerical convergence. So it provides a contrasting texture feature model for continue related to fabric quality inspection.

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Periodical:

Advanced Materials Research (Volumes 113-116)

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943-946

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Online since:

June 2010

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© 2010 Trans Tech Publications Ltd. All Rights Reserved

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