G. B. Sekhar, M. Srilatha, J. Srinivasulu, M. Chowdary
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引用次数: 0
摘要
在像印度这样的发展中国家,乘坐汽车的人数日益增加,这也构成了全国交通事故数量的增加。缺乏适当监控的现行制度是每年事故率增长的主要原因。在交通繁忙的地区,如路口进行适当的监控,通过实时跟踪车辆,可能会降低大多数事故造成的死亡率。为了克服这一问题,我们需要一个系统来分析选定路口的摄像机镜头,使用You Only Look Once (YOLO v4,使用卷积神经网络(CNN)实现)计算车辆的运动和尺寸,并使用深度相关度量的Simple Online and Realtime tracking (SORT)跟踪车辆,并通过高效的计算准确地逐帧计算其速度。该系统是当前跟踪架构的临时版本,能够对车辆进行分类并计算其速度。
Vehicle Tracking and Speed Estimation Using Deep Sort
In the developing countries like India, the vehicle riders are increasing day by day, where it also constitutes to increase in the number of accidents across the country. The current system which lacks of proper surveillance is the main cause for growth of accident rate each year. Proper surveillance in heavy traffic zones such as junctions might decrease the death rate caused by the most of the accidents by tracking the vehicles in real time. To overcome this problem, we need a system that analyze a footage of camera in a selected junction calculating motion and dimensions of vehicle using You Only Look Once (YOLO v4 which is implemented using Convolution Neural Network (CNN)) and tracking vehicles using Simple Online and Realtime Tracking (SORT) with deep correlation metric and finding their speeds frame by frame accurately with efficient computations. The system is an improvised version of current tracking architectures which is capable of classifying the vehicles and calculating their speeds.