Intelligent Railway Detection Algorithm Fusing Image Processing and Deep Learning for the Prevent of Unusual Events
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Jung, Ju-ho
(Dept. of Software, Korea National University of Transportation)
Kim, Da-hyeon (Dept. of Software, Korea National University of Transportation) Kim, Chul-su (Dept. of Railway Vehicle System Engineering, Korea National University of Transportation) Oh, Ryum-duck (Dept. of Software, Korea National University of Transportation) Ahn, Jun-ho (Dept. of Software, Korea National University of Transportation) |
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