Damage Recognition of Road Auxiliary Facilities Based on Deep Convolution Network for Segmentation and Image Region Correction

Author:

Dong Yuanshuai123,Zhang Yanhong123,Hou Yun123,Tong Xinlong123ORCID,Wu Qingquan4,Zhou Zuofeng5,Cao Yuxuan123

Affiliation:

1. China Highway Engineering Consulting Group Company Ltd., Beijing 100089, China

2. Research and Development Center on Highway Pavement Maintenance Technology, China Communications Construction Company Limited, Beijing 100089, China

3. Research and Development Center of Transport Industry of Technologies, Materials and Equipment of Highway Construction and Maintenance, Beijing 100089, China

4. Key & Core Technology Innovation Institute of The Greater Bay Area, Guangzhou, Guangdong 510535, China

5. Xi’an Institute of Optics and Precision Mechanics, CAS Industrial Development Co., Ltd., Xi’an, Shaanxi 710019, China

Abstract

The damage of road auxiliary facilities poses a major hidden danger to driving safety. It is urgent to study a method that can automatically detect the damage of the road auxiliary facilities and provide help for the maintenance of traffic safety auxiliary facilities. In the method for identifying the absence of road auxiliary facilities based on deep convolutional network for image segmentation and image region correction, the PointRend model based on the deep convolutional networks (CNN) is first used to achieve the pixel-level fine segmentation of the auxiliary facilities area, and then, the multiple images in the same image are segmented. In anti-glare panel area, on the largest outer polygon estimated by the convex hull algorithm, the optimal outer quadrilateral is determined according to the distance between the vertices, and then, the anti-glare panel area correction is completed by affine transformation and finally through the image one-dimensional projection mapping and adjacent shading. The distance correlation between the boards realizes the identification and positioning of the missing light-shielding board. The highway anti-glare panel missing recognition method based on deep convolution image segmentation and correction uses the vertex distance to quickly determine the external quadrilateral, which is suitable for estimating the shape of the area in a dynamic scene. After actual testing and verification, it can accurately and efficiently identify the disease of the anti-glare plate. Compared with traditional image segmentation methods, the method using the PointRend target segmentation model has better segmentation quality for target details, and it is more robust when dealing with background interference.

Funder

China Highway Engineering Consulting Group Company Ltd

Publisher

Hindawi Limited

Subject

Civil and Structural Engineering

Reference13 articles.

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