T. Senst, Rubén Heras Evangelio, I. Keller, T. Sikora
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引用次数: 9
摘要
在基于运动的视频分析中,选择要跟踪的区域或点集是一项关键任务,它在准确性和计算效率方面具有重要的性能影响。在视频监控应用中,计算效率是一个不可避免的要求。建立良好的方法,例如Good Features to Track,根据外观特征(如转角)选择要跟踪的点,从而忽略所选点所表现出的运动。在本文中,我们提出了一种兴趣点选择方法,该方法考虑了先前跟踪点的运动,以约束所需点轨迹的数量。通过定义轨迹之间的成对时间关联,并在最小生成树中表示它们,我们实现了非常有效的聚类。通过反馈初始化和移除跟踪点来调整分配给每个运动簇的轨迹数量。与KLT跟踪器相比,我们节省了高达65%的跟踪点,因此在不降低准确性的同时提高了效率。
Clustering Motion for Real-Time Optical Flow Based Tracking
The selection of regions or sets of points to track is a key task in motion-based video analysis, which has significant performance effects in terms of accuracy and computational efficiency. Computational efficiency is an unavoidable requirement in video surveillance applications. Well established methods, e.g. Good Features to Track, select points to be tracked based on appearance features such as cornerness and therefore neglecting the motion exhibited by the selected points. In this paper, we propose an interest point selection method that takes into account the motion of previously tracked points in order to constrain the number of point trajectories needed. By defining pair-wise temporal affinities between trajectories and representing them in a minimum spanning tree, we achieve a very efficient clustering. The number of trajectories assigned to each motion cluster is adapted by initializing and removing tracked points by means of feed-back. Compared to the KLT tracker, we save up to 65% of the points to track, therefore gaining in efficiency while not scarifying accuracy.