Data safety prediction using YOLOv7+G3HN for traffic roads

Lek Ming Lim, Lu Yang, Ahmad Sufril Azlan Mohamed, Majid Khan Majahar Ali
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Abstract

Pulau Pinang has introduced several measures to enhance traffic safety and promote sustainability, including the installation of CCTV systems and the implementation of smart solutions and green technology as part of the Penang 2030 vision, aligning with the Sustainable Development Goals (SDGs). However, despite these efforts, road accidents persist due to non-optimised detection models, incomplete data from manual reporting, and technological constraints in real-time video analysis and predictive modelling. This study evaluates the effectiveness of the YOLOv7+G3HN framework for vehicle detection and near-miss analysis, with a focus on the influence of video quality on detection performance. The research aims to understand how high- and low-quality video inputs affect the accuracy and computational efficiency of detection algorithms. High[1]quality videos resulted in significantly faster computation times for vehicle detection than low-quality videos, highlighting the importance of video resolution in optimising detection processes. Despite the robustness of the algorithm, with no errors detected in both video qualities, higher miss detection rates in low-quality videos suggest that lower resolution may compromise detection accuracy and the effectiveness of monitoring systems. Near-miss analysis revealed that high-quality videos had a lower probability of near-miss occurrences than low-quality videos, highlighting the importance of video resolution for detection efficacy. These findings emphasise the critical role of high-resolution video inputs in enhancing detection accuracy and reliability, advocating for their implementation to optimise vehicle detection and improve road safety. Additionally, YOLOv7+G3HN outperforms YOLOv7 in both accuracy and speed. The study concludes that the YOLOv7+G3HN framework is effective for vehicle detection and near-miss analysis, provided that video quality is considered in system design and implementation.  
使用 YOLOv7+G3HN 对交通道路进行数据安全预测
作为槟城 2030 愿景的一部分,槟榔屿推出了多项措施来加强交通安全和促进可持续发展,其中包括安装闭路电视系统、实施智能解决方案和绿色技术,这与可持续发展目标(SDGs)是一致的。然而,尽管做出了这些努力,由于未优化检测模型、人工报告数据不完整以及实时视频分析和预测建模的技术限制,道路交通事故依然存在。本研究评估了 YOLOv7+G3HN 框架在车辆检测和险情分析方面的有效性,重点关注视频质量对检测性能的影响。研究旨在了解高质量和低质量视频输入如何影响检测算法的准确性和计算效率。高[1]质量视频导致车辆检测的计算时间明显快于低质量视频,突出了视频分辨率在优化检测过程中的重要性。尽管该算法具有鲁棒性,在两种质量的视频中均未检测到错误,但低质量视频中较高的漏检率表明,较低的分辨率可能会影响检测精度和监控系统的有效性。近失误分析表明,高质量视频的近失误发生概率低于低质量视频,这凸显了视频分辨率对检测效果的重要性。这些研究结果强调了高分辨率视频输入在提高检测准确性和可靠性方面的关键作用,并主张采用高分辨率视频输入来优化车辆检测和改善道路安全。此外,YOLOv7+G3HN 在准确性和速度方面都优于 YOLOv7。研究得出结论,只要在系统设计和实施过程中考虑到视频质量,YOLOv7+G3HN 框架就能有效地进行车辆检测和险情分析。
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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