Paper title: |
Minimising Misclassifications of Over-Height Vehicles Due to Wind |
Authors: |
Bella Nguyen and Ioannis Brilakis |
Summary: |
Over-height vehicle strikes with low bridges and tunnels are an ongoing problem worldwide. While previous methods have used vision-based systems to address the over-height warning problem, such methods are sensitive to wind. In this paper, we propose a constraint-based approach to minimise the number of over-height vehicle misclassifications due to windy conditions. The dataset includes a total of 102 over-height vehicles recorded at frame rates of 25 and 30 fps. At this frame rate, we analysed sampling rates to determine the sufficient number of positive frames required to provide accurate warnings to drivers. Optical flow and KLT feature-tracker algorithm was used to detect and track feature points of motion. Motion captured within the region of interest was treated as a standard two-class binary linear classification problem with 1 indicating over-height vehicle presence and 0 indicating noise. The algorithm performed with 100% recall, 83.3% precision and false positive rate of 8.3%. |
Type: |
highlight paper |
Year of publication: |
2017 |
Keywords: |
Bridge Strike, Tunnel Strike, Over-Height Vehicle, Over-Height Vehicle Detection System, Bridge Strike Prevention |
Series: |
jc3:2017 |
Download paper: |
/pdfs/LC3_2017_paper_249.pdf |
Citation: |
Bella Nguyen and Ioannis Brilakis (2017).
Minimising Misclassifications of Over-Height Vehicles Due to Wind. Lean and Computing in Construction Congress (LC3): Volume I Ð Proceedings of the Joint Conference on Computing in Construction (JC3), July 4-7, 2017, Heraklion, Greece, pp. 69-76,
http://itc.scix.net/paper/lc3-2017-249
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