Pedestrian safety alarm system based on binocular distance measurement for trucks using recognition feature analysis

Tingting Bao, Ding Lin, Xumei Zhang, Zhiguo Zhou, Kejia Wang
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Abstract

As an essential part of modern smart manufacturing, road transport with large and heavy trucks has in-creased dramatically. Due to the inside wheel difference in the process of turning, there is a considerable safety hazard in the blind area of the inside wheel difference. In this paper, multiple cameras combined with deep learning algorithms are introduced to detect pedestrians in the blind area of wheel error. A scheme of vehicle-pedestrian safety alarm detection system is developed via the integration of YOLOv5 and an improved binocular distance measurement method. The system accurately measures the distance between the truck and nearby pedestrians by utilizing multiple cameras and PP Human recognition, providing real-time safety alerts. The experimental results show that this method significantly reduces distance measurement errors, improves the reliability of pedestrian detection, achieves high accuracy and real-time performance, and thus enhances the safety of trucks in complex traffic environments.

利用识别特征分析,基于双目距离测量的卡车行人安全警报系统
作为现代智能制造的重要组成部分,大型重型卡车的公路运输量急剧增加。由于转弯过程中会产生内轮差,内轮差盲区存在较大的安全隐患。本文引入多摄像头结合深度学习算法,对车轮误差盲区内的行人进行检测。通过整合 YOLOv5 和改进的双目测距方法,开发了一种车辆行人安全报警检测系统方案。该系统利用多个摄像头和 PP 人脸识别技术精确测量卡车与附近行人的距离,实时发出安全警报。实验结果表明,该方法显著降低了距离测量误差,提高了行人检测的可靠性,实现了高精度和实时性,从而增强了复杂交通环境中卡车的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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