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http://dx.doi.org/10.5370/KIEE.2017.66.6.988

A Study on Cantilever Deformation Inspection Method Using Image Processing  

Han, Seung-Hun (Technology Research Department, KORAIL)
Cho, Min-Soo (Technology Research Department, KORAIL)
Yu, Young-Ki (Technology Development Department, 2iSYS Co., Ltd.)
Lee, Byeong-Gon (KORAIL)
Publication Information
The Transactions of The Korean Institute of Electrical Engineers / v.66, no.6, 2017 , pp. 988-994 More about this Journal
Abstract
The risk of facilities in catenary is increasing because the railway section extension and high-speed train service. And visual check of workforce is not enough time to maintain the extensive railway facilities. Accordingly, The technical development trend of maintenance of railway facilities can be seen by automation and application of IT technology, especially the mechanization work and the information technology are spreading in the maintenance work of the train line solved by manpower. In this paper, we describe the method by obtaining the cantilever image using acquisition device and pole inspection system in high speed vehicle, to check the variation of the cantilever component using image processing.
Keywords
Railway; Image processing; Inspection system; MLP; Cantilever;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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