使用人工智能 ML 和 Yolov8 算法的基于视觉的事故检测系统

Prof GAYATHRI R
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引用次数: 0

摘要

安全和秩序确实存在被意外发现的危险。在本文中,我们提出将 YOLOv8 用于基于事故的视觉,并嵌入了洞察力和机器学习 最先进的致谢问题 我们的算法传达了来自主动摄像头的实时飞行视频,以准确识别它们的分类和事故。我们展示了一种全面的方法,利用注释了碰撞图像的数据集来提高 YOLOv8 的性能。通过与现有方法的比较分析,我们证实了基于视觉的算法在速度、准确性和性能方面的独特性。我们的见解有助于改善事故管理,提供适当的规划以提高道路安全,并有可能减少事故对道路的影响。索引词条--道路事故、事故检测、计算机视觉、机器学习、深度学习、CNN 分类器、实时检测、紧急警报、智能交通系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision based Accident Detection System Using AI ML and Yolov8 Algorithms
There is a real danger of accidental discovery of safety and order. In this paper, we propose the use of YOLOv8 for accident-based vision, with embedded insights and machine learning State-of-the-art Acknowledgment Question Our algorithm communicates real-time flight video from the active camera to identify them accurately Classified and Accident. We demonstrate a comprehensive approach to improve YOLOv8 performance using data sets annotated with crash images. Through comparative analysis with existing methods, we confirm the uniqueness of our vision-based algorithm in terms of speed, accuracy, and performance. Our insights help improve accident management, provide appropriate planning to improve road safety, and potentially reduce the impact of accidents on the road. Index Terms— Road Accidents, Accident Detection, Computer Vision, Machine Learning, Deep Learning, CNN Classifier, Real- time Detection, Emergency Alerting, Intelligent Transportation Systems.
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