This paper introduces a framework based on computer vision that can detect road traffic crashes (RCTs) by using the installed surveillance/CCTV camera and report them to the emergency in real-time with the exact location and time of occurrence of the accident. The framework is built of five modules. We start with the detection of vehicles by using YOLO architecture; The second module is the tracking of vehicles using MOSSE tracker, Then the third module is a new approach to detect accidents based on collision estimation. Then the fourth module for each vehicle, we detect if there is a car accident or not based on the violent flow descriptor (ViF) followed by an SVM classifier for crash prediction. Finally, in the last stage, if there is a car accident, the system will send a notification to the emergency by using a GPS module that provides us with the location, time, and date of the accident to be sent to the emergency with the help of the GSM module. The main objective is to achieve higher accuracy with fewer false alarms and to implement a simple system based on pipelining technique.
翻译:本文介绍一个基于计算机愿景的框架,它能够通过使用安装的监视/CCTV摄像机探测道路交通撞车(RCTs),并用事故发生的确切地点和时间实时向紧急情况报告。框架由五个模块组成。我们从用YOLO结构探测车辆开始;第二个模块是使用MOSSE跟踪器跟踪车辆,第三个模块是基于碰撞估计值检测事故的新方法。然后,每个车辆的第四个模块,我们检测是否发生车祸,是否以暴力流量描述器(VF)为基础,然后用SVM分类器进行碰撞预测。最后,如果发生车祸,该系统将使用全球定位系统模块向紧急情况发出通知,该模块将向我们提供事故的地点、时间和日期,并借助GSM模块将事故发送到紧急情况中。主要目标是提高准确性,减少错误警报,并采用基于管线技术的简单系统。