基于YOLO和相关滤波的交通管理系统车辆计数

C. S. Asha, A. V. Narasimhadhan
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引用次数: 41

摘要

车辆计数是估计道路交通密度以评估智能交通系统交通状况的过程。随着摄像机在城市交通系统中的广泛应用,监控视频已成为一个中心数据来源。此外,由于手持/移动相机和大数据分析的可用性,实时交通管理系统最近变得流行起来。在这项工作中,我们提出了基于视频的车辆计数方法,用于使用手持摄像机拍摄的高速公路交通视频。视频的处理分为三个阶段:YOLO (You Only Look Once)的目标检测、相关滤波器的跟踪和计数。YOLO在目标检测领域取得了显著的效果,相关滤波器在跟踪方面取得了更高的精度和速度。因此,我们使用YOLO框架生成的边界框构建带有相关过滤器的多目标跟踪。对真实视频序列的实验分析表明,该方法能够准确地检测、跟踪和计数车辆。
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Vehicle Counting for Traffic Management System using YOLO and Correlation Filter
Vehicle counting is a process to estimate the road traffic density to assess the traffic conditions for intelligent transportation systems. With the extensive utilization of cameras in urban transport systems, the surveillance video has become a central data source. Also, real-time traffic management system has become popular recently due to the availability of handheld/mobile cameras and big-data analysis. In this work, we propose video-based vehicle counting method in a highway traffic video captured using handheld cameras. The processing of a video is achieved in three stages such as object detection by means of YOLO (You Only Look Once), tracking with correlation filter, and counting. YOLO attained remarkable outcome in the object detection area, and correlation filters achieved greater accuracy and competitive speed in tracking. Thus, we build multiple object tracking with correlation filters using the bounding boxes generated by the YOLO framework. Experimental analysis using real video sequences shows that the proposed method can detect, track and count the vehicles accurately.
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