Vehicular Safety System using Deep Learning and Computer Vision

S. Rajkumaran, S. V, Sridevi Sridhar
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引用次数: 0

Abstract

While many technological solutions have been implemented for accident detection, not many have focused on accident prevention. Accidents have been an everlasting concern as they have caused heavy injuries and death tolls on a large scale. There has been an everlasting increase in the rate of accidents and violation of traffic laws and wrongdoers managing to escape from the legal ramifications of predominantly Hit-and-Run cases. This entails a system to alleviate the occurrence of accidents and deaths caused. Focusing on this, a viable solution that focuses on preventing such circumstances by detecting accident-causing behaviour has been proposed. If accidents take place, it ensures the victim gets their rightful compensation. The research encompasses two modules, Prevention and Recovery. The prevention module uses Deep Learning and Computer Vision to detect whether the driver is drowsy and issues an alert employing CNN. The recovery module focuses on detecting occurrences of accidents and acquiring information about the parties involved in the same. Moreover, the prototype detects drowsiness, and detects and saves the accident footage in real-time enabling information acquisition.
基于深度学习和计算机视觉的车辆安全系统
虽然已经实施了许多用于事故检测的技术解决方案,但很少有人关注事故预防。事故一直是一个令人担忧的问题,因为它们造成了大规模的严重伤亡。交通事故、违反交通法规以及肇事者设法逃避以肇事逃逸为主的法律后果的比率一直在持续上升。这需要一个系统来减轻事故的发生和造成的死亡。针对这一点,提出了一种可行的解决方案,即通过检测导致事故的行为来预防此类情况。如果发生事故,它确保受害者得到应有的赔偿。这项研究包括两个模块,预防和恢复。预防模块使用深度学习和计算机视觉来检测驾驶员是否昏昏欲睡,并使用CNN发出警报。恢复模块的重点是检测事故的发生,并获取有关事故各方的信息。此外,该原型还可以检测睡意,并实时检测和保存事故录像,从而实现信息采集。
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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