智能交通系统中视频监控的目标跟踪方法

A. Makhmutova, I. Anikin, Maria V. Dagaeva
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引用次数: 8

摘要

交通管理是智能交通系统的基本任务之一。它包括从道路上实时收集数据,对其进行处理,并将有用的信息传输到各种决策系统。环路检测器和各种集成到道路基础设施中的传感器可以用于自适应交通控制系统、城市安防系统等。基于视觉的技术(闭路电视摄像机)可以提供更详细的交通流量信息。它可以识别异常和交通事件,这对交警来说非常重要。这将使我们能够立即对情况做出反应,防止交通堵塞。城市视频监控系统需要智能计算机视觉算法的支持。有许多目标检测和跟踪算法可用于视频监控系统。然而,在真实环境中,我们面临着算法工作不准确的问题,例如遮挡,视频流中断。它对目标跟踪有重要影响,对车辆计数、速度检测和轨迹形成具有重要意义。本文研究了一种基于真实道路环境视频流的目标跟踪方法。我们将结果与其他跟踪算法进行了比较。
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Object Tracking Method for Videomonitoring in Intelligent Transport Systems
Traffic management is one of the fundamental tasks of intelligent transport systems (ITS). It includes real-time data collection from the roads, its processing, and transmission of useful information to various decision-making systems. Loop detectors and different kinds of integrated into road infrastructure sensors can describe traffic flow for an adaptive traffic control system, city security system, etc. Vision-based technology (CCTV camera) can provide more detailed information about the traffic flow. It can identify anomalies and traffic incidents, which is very important for traffic police. This will allow us to instantly respond to situations and prevent traffic jams. An urban video monitoring system has to be supported by smart computer vision algorithms. There are many object detection and tracking algorithms that could be used in video monitoring systems. However, we faced the problem of inaccurate work of the algorithms in a real environment with occlusions, video stream interruptions. It significantly affects on object tracking, which is important for the task of vehicle counting, speed detection, and trajectory formation. In this paper, we developed and evaluated object tracking method on video streams from real road environment. We compared the results with other tracking algorithms.
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