The Application of CCD Sensor in Fabric Defect

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In order to detect the fabric defects automatically, a real-time system and algorithm for the detection were developed in which the hardware part included image acquisition, signal processing and illumination device. The ring data model of defect silhouette is constructed to subsequent defects analysis. At last, examples prove that this algorithm can accomplish extraction of fabric defect silhouette preferably. The verification indicates that the design can satisfy the requirements of practical application well and make the detection flexible and convenient.

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866-869

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June 2013

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© 2013 Trans Tech Publications Ltd. All Rights Reserved

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