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http://dx.doi.org/10.14400/JDC.2018.16.3.303

Development of Bolt Tap Shape Inspection System Using Computer Vision Technology  

Park, Yang-Jae (Dept.of Computer Engineering, Gachon University)
Publication Information
Journal of Digital Convergence / v.16, no.3, 2018 , pp. 303-309 More about this Journal
Abstract
Computer vision technology is a component inspection to obtain a video image from the camera to the machine to perform the capabilities of the human eye with a field of artificial intelligence, and then analyzed by the algorithm to determine to determine the good and bad of production parts It is widely applied. Shape inspection method was used as how to identify the location of the start point and the end point of the search range, measure the height to the line scan method, in such a manner as to determine the presence or absence of the bolt tabs average brightness of the inspection area in a circular scan type value And the degree of similarity was calculated. The total time it takes to test in the test performance tests of two types of bolts tab enables test 300 min, and demonstrated the accuracy and efficiency of the inspection on the production line represented a complete inspection accuracy.
Keywords
Computer; Machine Vision; Shape Inspection; Pattern Recognition; Bolt Inspection; Nut Inspection;
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Times Cited By KSCI : 5  (Citation Analysis)
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