Paper
28 July 2023 Traffic sign reflectivity detection method based on driver's visual recognition
Jiayuan Chen, Yiping Wu, Jian Rong, Yi Wang, Jing Tang
Author Affiliations +
Proceedings Volume 12716, Third International Conference on Digital Signal and Computer Communications (DSCC 2023); 1271603 (2023) https://doi.org/10.1117/12.2685702
Event: Third International Conference on Digital Signal and Computer Communications (DSCC 2023), 2023, Xi'an, China
Abstract
Traffic signs are one of the main carriers of road information, the reflectivity of traffic signs at night directly affects the driver's access to road information. Fast and accurate traffic sign reflectivity detection method is conducive to the efficient operation of road maintenance operations to protect the lives of motorists. This paper proposed a novel method for detecting the reflectivity of traffic signs, which proposed the concept of sign’s luminance value. By collecting photos of traffic signs on the road at night through the detection vehicle, using Yolov4 algorithm and Deeplabv3 algorithm for sign target detection and image segmentation respectively, then the signs were converted into grayscale images after grayscale processing, and the difference between the grayscale value of the sign and its background was calculated to obtain the luminance value of the sign, and the luminance value was used to represent the reflective performance of the sign. This method was used to conduct the actual test experiment of road traffic sign reflectivity, and compared with the sign reflectivity results obtained by the traditional retroreflective coefficient detection method. Through data analysis, it was found that the test results of this method have significant correlation with the test results of the traditional method. The traffic sign reflectivity detection method proposed in this paper obtains more accurate detection results and avoids the disadvantages of the traditional retroreflective coefficient detection method, such as complicated operation, high instrument requirements, low detection efficiency, and failure to consider the impact of the actual installation position of the sign on the driver's visual recognition, and is more suitable for engineering practice.
© (2023) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jiayuan Chen, Yiping Wu, Jian Rong, Yi Wang, and Jing Tang "Traffic sign reflectivity detection method based on driver's visual recognition", Proc. SPIE 12716, Third International Conference on Digital Signal and Computer Communications (DSCC 2023), 1271603 (28 July 2023); https://doi.org/10.1117/12.2685702
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KEYWORDS
Retroreflectors

Roads

Image processing

Visualization

Equipment

Engineering

Inspection

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