DocumentCode
1756587
Title
Rail Component Detection, Optimization, and Assessment for Automatic Rail Track Inspection
Author
Ying Li ; Hoang Trinh ; Haas, Norman ; Otto, Charles ; Pankanti, Sharath
Author_Institution
IBM Thomas J. Watson Res. Center, Yorktown Heights, NY, USA
Volume
15
Issue
2
fYear
2014
fDate
41730
Firstpage
760
Lastpage
770
Abstract
In this paper, we present a real-time automatic vision-based rail inspection system, which performs inspections at 16 km/h with a frame rate of 20 fps. The system robustly detects important rail components such as ties, tie plates, and anchors, with high accuracy and efficiency. To achieve this goal, we first develop a set of image and video analytics and then propose a novel global optimization framework to combine evidence from multiple cameras, Global Positioning System, and distance measurement instrument to further improve the detection performance. Moreover, as the anchor is an important type of rail fastener, we have thus advanced the effort to detect anchor exceptions, which includes assessing the anchor conditions at the tie level and identifying anchor pattern exceptions at the compliance level. Quantitative analysis performed on a large video data set captured with different track and lighting conditions, as well as on a real-time field test, has demonstrated very encouraging performance on both rail component detection and anchor exception detection. Specifically, an average of 94.67% precision and 93% recall rate has been achieved for detecting all three rail components, and a 100% detection rate is achieved for compliance-level anchor exception with three false positives per hour. To our best knowledge, our system is the first to address and solve both component and exception detection problems in this rail inspection area.
Keywords
Global Positioning System; automatic optical inspection; computer vision; distance measurement; engineering computing; fasteners; optimisation; plates (structures); railway engineering; railway safety; real-time systems; video cameras; video signal processing; Global Positioning System; anchors; automatic rail track inspection; compliance-level anchor exception; distance measurement instrument; exception detection problems; image analytics; multiple cameras; rail component assessment; rail component detection; rail component optimization; rail fastener; real-time automatic vision-based rail inspection system; tie plates; ties; video analytics; video data set; Cameras; Fasteners; Image edge detection; Inspection; Optimization; Rails; Streaming media; Anchor exception detection; machine vision technology; multisensor evidence integration; rail component detection; railroad track inspection;
fLanguage
English
Journal_Title
Intelligent Transportation Systems, IEEE Transactions on
Publisher
ieee
ISSN
1524-9050
Type
jour
DOI
10.1109/TITS.2013.2287155
Filename
6662397
Link To Document