Predicting on-road abnormalities such as road accidents or traffic violations is a challenging task in traffic surveillance. If such predictions can be done in advance, many damages can be controlled. Here in our wok, we tried to formulate a solution for automated collision prediction in traffic surveillance videos with computer vision and deep networks. It involves object detection, tracking, trajectory estimation, and collision prediction. We propose an end-to-end collision prediction system, named as COLLIDE-PRED, that intelligently integrates the information of past and future trajectories of moving objects to predict collisions in videos. It is a pipeline that starts with object detection, which is used for object tracking, and then trajectory prediction is performed which concludes by collision detection. The probable place of collision, and the objects those may cause the collision, both can be identified correctly with COLLIDE-PRED. The proposed method is experimentally validated with a number of different videos and proves to be effective in identifying accident in advance.
翻译:预测公路事故或交通违规等道路异常现象是交通监测的一项艰巨任务。 如果能够提前作出这种预测,许多损害是可以控制的。 在此处,我们试图在计算机视觉和深网络的交通监视录像中制定一个自动碰撞预测的解决方案。它涉及物体探测、跟踪、轨迹估计和碰撞预测。我们提议了一个名为COLLLIDE-PRED的端到端碰撞预测系统,该系统将移动物体过去和今后轨迹的信息明智地整合在一起,以预测视频中的碰撞。它是一条从物体探测开始的管道,用于物体跟踪,然后进行轨迹预测,以碰撞探测为结论。可能的碰撞地点以及可能造成碰撞的物体,都可以用COLLLIDE-PRED来正确识别。拟议方法以若干不同的视频进行实验性验证,并证明在预先确定事故方面是有效的。