Research of Riveting Structure Identification and Characteristic Parameter Analysis Based on SVM

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Abstract:

In order to help department to make a decision whether the equipment need maintenance, some people trained the sample of characteristic parameter for riveting structure, and set up the model to recognize target by computer vision. However, we are difficult to find the research result about the affiliation between the characteristic parameter of the riveting structure and the model. In this paper, we make the image processing first, and use SVM (Support Vector Machines) algorithm to train the sample of characteristic parameter for rivet head. Finally, we research the affiliation between the characteristic parameter for the rivet head and the mathematical model, and test the accuracy of the model.

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Periodical:

Advanced Materials Research (Volumes 1049-1050)

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1554-1557

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Online since:

October 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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