On-road obstacle detection is an important field of research that falls in the scope of intelligent transportation infrastructure systems. The use of vision-based approaches results in an accurate and cost-effective solution to such systems. In this research paper, we propose a threat detection mechanism for autonomous self-driving cars using dashcam videos to ensure the presence of any unwanted obstacle on the road that falls within its visual range. This information can assist the vehicle's program to en route safely. There are four major components, namely, YOLO to identify the objects, advanced lane detection algorithm, multi regression model to measure the distance of the object from the camera, the two-second rule for measuring the safety, and limiting speed. In addition, we have used the Car Crash Dataset(CCD) for calculating the accuracy of the model. The YOLO algorithm gives an accuracy of around 93%. The final accuracy of our proposed Threat Detection Model (TDM) is 82.65%.
翻译:公路障碍探测是属于智能运输基础设施系统范围的一个重要研究领域。使用基于愿景的方法可以准确和符合成本效益地解决这类系统。在本研究论文中,我们建议为自动自行驾驶的汽车建立一个威胁探测机制,使用破碎摄像头视频确保在其视距范围内的公路上出现任何不必要的障碍。这一信息可以帮助车辆安全地上路。有四个主要组成部分,即识别物体的YOLO,高级航道探测算法,测量物体距离的多回归模型,测量安全性和限制速度的二秒钟规则。此外,我们使用了汽车崩溃数据集(CCD)来计算模型的准确性。YOLO算法提供了大约93%的准确性。我们拟议的威胁探测模型(TDM)的最后精确度为82.65%。