基于上下文的跟踪器切换框架

A. Tyagi, J.W. Davis
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引用次数: 9

摘要

我们提出了一个强大的框架,用于在拥挤的室外环境中跟踪由多个摄像机监控的人,目标是实时性能。由于没有单一的算法是完美的,在所有情况下的目标跟踪任务,我们采取另一种方法。我们的算法通过评估场景的当前状态/上下文动态地在几个可用的跟踪器之间切换。做出切换决策的自主代理被分配给场景中的每个对象。新代理的初始化和各种跟踪算法之间的切换是完全自动化的。与单个方法相比,不同跟踪器之间的协作在计算和可靠性方面都提高了性能。在多相机数据集上对跟踪器切换框架进行了评估,并给出了定性和定量结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Context-Based Tracker Switching Framework
We present a robust framework for tracking people in crowded outdoor environments monitored by multiple cameras with a goal of real-time performance. Since no single algorithm is perfect for the task of object tracking in all cases, we instead take an alternate approach. Our algorithm dynamically switches between several available trackers on-the-fly by evaluating the current state/context of the scene. Autonomous agents that make the switching decisions are assigned to each object in the scene. Initialization of new agents and the handoff between various tracking algorithms are completely automated. The collaboration between different trackers is shown to improve performance compared to the individual methods in terms of both computation and reliability. The tracker switching framework is evaluated on a multi-camera dataset and both qualitative and quantitative results are presented.
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