Title :
Automatic Fastener Classification and Defect Detection in Vision-Based Railway Inspection Systems
Author :
Hao Feng ; Zhiguo Jiang ; Fengying Xie ; Ping Yang ; Jun Shi ; Long Chen
Author_Institution :
Image Process. Center, Beijing Univ. of Aeronaut. & Astronaut., Beijing, China
Abstract :
The detection of fastener defects is an important task in railway inspection systems, and it is frequently performed to ensure the safety of train traffic. Traditional inspection is usually operated by trained workers who walk along railway lines to search for potential risks. However, the manual inspection is very slow, costly, and dangerous. This paper proposes an automatic visual inspection system for detecting partially worn and completely missing fasteners using probabilistic topic model. Specifically, our method is able to simultaneously model diverse types of fasteners with different orientations and illumination conditions using unlabeled data. To assess the damages, the test fasteners are compared with the trained models and automatically ranked into three levels based on the likelihood probability. The experimental results demonstrate the effectiveness of this method.
Keywords :
automatic optical inspection; computer vision; condition monitoring; fasteners; fault diagnosis; mechanical engineering computing; pattern classification; probability; railways; automatic fastener classification; defect detection; likelihood probability; probabilistic topic model; train traffic. safety; vision-based railway inspection systems; Computational modeling; Fasteners; Inspection; Lighting; Probabilistic logic; Rail transportation; Visualization; Fastener; latent Dirichlet allocation (LDA); railway; structure modeling; visual inspection;
Journal_Title :
Instrumentation and Measurement, IEEE Transactions on
DOI :
10.1109/TIM.2013.2283741