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http://dx.doi.org/10.17703/IJACT.2022.10.2.300

Detecting Jaywalking Using the YOLOv5 Model  

Kim, Hyun-Tae (Department of Computer Engineering, Honam University)
Lee, Sang-Hyun (Department of Computer Engineering, Honam University)
Publication Information
International Journal of Advanced Culture Technology / v.10, no.2, 2022 , pp. 300-306 More about this Journal
Abstract
Currently, Korea is building traffic infrastructure using Intelligent Transport Systems (ITS), but the pedestrian traffic accident rate is very high. The purpose of this paper is to prevent the risk of traffic accidents by jaywalking pedestrians. The development of this study aims to detect pedestrians who trespass using the public data set provided by the Artificial Intelligence Hub (AIHub). The data set uses training data: 673,150 pieces and validation data: 131,385 pieces, and the types include snow, rain, fog, etc., and there is a total of 7 types including passenger cars, small buses, large buses, trucks, large trailers, motorcycles, and pedestrians. has a class format of Learning is carried out using YOLOv5 as an implementation model, and as an object detection and edge detection method of an input image, a canny edge model is applied to classify and visualize human objects within the detected road boundary range. In this study, it was designed and implemented to detect pedestrians using the deep learning-based YOLOv5 model. As the final result, the mAP 0.5 showed a real-time detection rate of 61% and 114.9 fps at 338 epochs using the YOLOv5 model.
Keywords
YOLOv5 Model; Object Detection; Canny Edge; Hough Transform; Trespassing;
Citations & Related Records
Times Cited By KSCI : 2  (Citation Analysis)
연도 인용수 순위
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