RoadAtlas: Intelligent Platform for Automated Road Defect Detection and
Asset Management
- URL: http://arxiv.org/abs/2109.03385v2
- Date: Thu, 9 Sep 2021 00:31:44 GMT
- Title: RoadAtlas: Intelligent Platform for Automated Road Defect Detection and
Asset Management
- Authors: Zhuoxiao Chen, Yiyun Zhang, Yadan Luo, Zijian Wang, Jinjiang Zhong,
Anthony Southon
- Abstract summary: RoadAtlas is a novel end-to-end integrated system that can support road defect detection, road marking parsing, and a web-based dashboard for presenting and inputting data by users.
- Score: 8.441428233111843
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the rapid development of intelligent detection algorithms based on deep
learning, much progress has been made in automatic road defect recognition and
road marking parsing. This can effectively address the issue of an expensive
and time-consuming process for professional inspectors to review the street
manually. Towards this goal, we present RoadAtlas, a novel end-to-end
integrated system that can support 1) road defect detection, 2) road marking
parsing, 3) a web-based dashboard for presenting and inputting data by users,
and 4) a backend containing a well-structured database and developed APIs.
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