Pipeline Product Quality Testing Based on Adaptive SIFT Matching Technology

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Abstract:

The problem of product quality testing on the assembly line is proposed SIFT-based adaptive algorithm and Harris corner supplementation, achieved through the SIFT matching the product point of view, position, brightness, distance calibration, the product matches the partition testing strategy to ensure that the product accessories The number and quality of the normative. Experimental results show that the detected speed and robustness.

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4151-4154

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July 2011

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© 2011 Trans Tech Publications Ltd. All Rights Reserved

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