一种新的机载视频中车辆检测与跟踪算法

M. Abdelwahab, M. Abdelwahab
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引用次数: 16

摘要

机载视频中多飞行器的实时检测和跟踪一直是一个具有挑战性的问题。本文提出了一种机载和静止摄像机视频中同时检测、跟踪和计数车辆的实时技术。首先,通过视频帧提取特征点并进行跟踪。通过测量每个特征点周围像素的直方图随时间的变化,提出了一种去除非平稳背景点的新策略。对获得的前景特征进行聚类,并根据其运动特性分组为单独的可跟踪车辆。在机载和固定摄像机视频上的实验结果证实了该算法的优良性能。
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A Novel Algorithm for Vehicle Detection and Tracking in Airborne Videos
Real time detection and tracking of multi vehicles in airborne videos is still a challenging problem due to the camera motion and low resolution. In this paper, a real time technique for simultaneously detecting, tracking and counting vehicles in airborne and stationary camera videos is proposed. First, feature points are extracted and tracked through video frames. A new strategy is used for removing the non-stationary background points by measuring the changes in the histogram of the pixels around each feature point with time. The obtained foreground features are clustered and grouped into separate trackable vehicles based on their motion properties. Experimental results performed on videos representing airborne and fixed cameras confirm the excellent properties of the proposed algorithm.
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