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Accredited SCIE SCOPUS
Manhole Cover Detection from Natural Scene Based on Imaging Environment Perception
( Haoting Liu ) , ( Beibei Yan ) , ( Wei Wang ) , ( Xin Li ) , ( Zhenhui Guo )
UCI I410-ECN-0102-2021-500-000192735

A multi-rotor Unmanned Aerial Vehicle (UAV) system is developed to solve the manhole cover detection problem for the infrastructure maintenance in the suburbs of big city. The visible light sensor is employed to collect the ground image data and a series of image processing and machine learning methods are used to detect the manhole cover. First, the image enhancement technique is employed to improve the imaging effect of visible light camera. An imaging environment perception method is used to increase the computation robustness: the blind Image Quality Evaluation Metrics (IQEMs) are used to percept the imaging environment and select the images which have a high imaging definition for the following computation. Because of its excellent processing effect the adaptive Multiple Scale Retinex (MSR) is used to enhance the imaging quality. Second, the Single Shot multi-box Detector (SSD) method is utilized to identify the manhole cover for its stable processing effect. Third, the spatial coordinate of manhole cover is also estimated from the ground image. The practical applications have verified the outdoor environment adaptability of proposed algorithm and the target detection correctness of proposed system. The detection accuracy can reach 99% and the positioning accuracy is about 0.7 meters.

1. Introduction
2. Problem Formulation and System Design
3. Proposed Manhole Cover Detection Algorithm
4. Experiments and Discussions
5. Conclusion
References
[자료제공 : 네이버학술정보]
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