A Detecting System on Defect Area of the Strip Steel’s Surface

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Abstract:

Aiming at the phenomenon that the production line of the strip steel’s detection is fast speed and detection quantity of data is large, which are difficult for worker to detect on line, we put forward a detecting system on defect area of the strip steel’s surface. Using CCD camera regularly to collect the images of the strip steel’s surface and to reflect it back to the detecting device on defect of the strip steel’s surface, and adopting specific arithmetic to analyze and handle images, what can accurately sound a warning while it detects the defected image. It is convenient for worker to take corresponding measures right away. This system has simple structure, low cost, and high defect detection rate, which has the great promotional value.

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Periodical:

Advanced Materials Research (Volumes 1006-1007)

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743-746

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Online since:

August 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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