鲁棒多帧跟踪的Caratheodory-Fejer方法

O. Camps, Hwasup Lim, M. C. Mazzaro, M. Sznaier
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引用次数: 26

摘要

大多数动态视觉应用程序的共同要求是能够在一系列帧中跟踪对象。在过去的几年里,这个问题得到了广泛的研究,导致了几种技术,例如基于无气味粒子过滤器的跟踪器,这些技术利用了(假设的)目标动力学,经验学习的噪声分布和过去位置观察的组合。虽然在许多情况下是成功的,但这些跟踪器在目标动力学中仍然容易受到遮挡和模型不确定性的影响。正如我们在本文中所展示的,这些困难可以通过将目标的动力学建模为满足某些插值条件的未知算子来解决。插值理论的结果可以通过求解一个凸优化问题来找到这个算子。如几个例子所示,将该算子与Kalman和UPF技术相结合,既可以提高鲁棒性,又可以降低计算复杂度。
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A Caratheodory-Fejer approach to robust multiframe tracking
A requirement common to most dynamic vision applications is the ability to track objects in a sequence of frames. This problem has been extensively studied in the past few years, leading to several techniques, such as unscented particle filter based trackers, that exploit a combination of the (assumed) target dynamics, empirically learned noise distributions and past position observations. While successful in many scenarios, these trackers remain fragile to occlusion and model uncertainty in the target dynamics. As we show in this paper, these difficulties can be addressed by modeling the dynamics of the target as an unknown operator that satisfies certain interpolation conditions. Results from interpolation theory can then be used to find this operator by solving a convex optimization problem. As illustrated with several examples, combining this operator with Kalman and UPF techniques leads to both robustness improvement and computational complexity reduction.
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