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D-patches: effective traffic sign detection with occlusion handling

Authors
Rehman, YawarRiaz, IrfanFan, XueShin, Hyunchul
Issue Date
Aug-2017
Publisher
INST ENGINEERING TECHNOLOGY-IET
Keywords
driver information systems; object detection; advanced driver assistance systems; traffic signs; full object templates; discriminative patches; d-patches; traffic sign detection framework; TSD framework; occlusion handling capability; redundant-detections; hypothesis generation scheme; true positive candidate; confidence-score; German TSD benchmark; Korean TSD dataset; KTSD dataset
Citation
IET COMPUTER VISION, v.11, no.5, pp.368 - 377
Indexed
SCIE
SCOPUS
Journal Title
IET COMPUTER VISION
Volume
11
Number
5
Start Page
368
End Page
377
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/9097
DOI
10.1049/iet-cvi.2016.0303
ISSN
1751-9632
Abstract
In advanced driver assistance systems, accurate detection of traffic signs plays an important role in extracting information about the road ahead. However, traffic signs are persistently occluded by vehicles, trees, and other structures on road. Performance of a detector decreases drastically when occlusions are encountered especially when it is trained using full object templates. Therefore, we propose a new method called discriminative patches (d-patches), which is a traffic sign detection (TSD) framework with occlusion handling capability. D-patches are those regions of an object that possess the most discriminative features than their surroundings. They are mined during training and are used for classification instead of the full object templates. Furthermore, we observe that the distribution of redundant-detections around a true-positive is different from that around a false-positive. Based on this observation, we propose a novel hypothesis generation scheme that uses a voting and penalisation mechanism to accurately select a true-positive candidate. We also introduce a new Korean TSD (KTSD) dataset with several evaluation settings to facilitate detector's evaluation under different conditions. The proposed method achieves 100% detection accuracy on German TSD benchmark and achieves 4.0% better detection accuracy, when compared with other well-known methods (under partially occluded settings), on KTSD dataset.
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COLLEGE OF ENGINEERING SCIENCES > SCHOOL OF ELECTRICAL ENGINEERING > 1. Journal Articles

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