Real-time tracking of single people and groups simultaneously by contextual graph-based reasoning dealing complex occlusions

P. Foggia, G. Percannella, A. Saggese, M. Vento
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引用次数: 17

Abstract

In this paper we present a real-time tracking algorithm able to follow simultaneously single objects and groups of objects. The proposed method is an improvement of the approach that we recently proposed in [1], able to exploit the history of moving objects by means of a Finite State Automaton. The main novelty of the proposed method refers to the strategy used to associate the evidence at the current frame to the objects tracked in the previous one. This strategy is able to take into account only the possible feasible combinations by means of an efficient and robust graph-based approach, which exploit the spatio-temporal continuity of moving objects. The method has been compared over a standard dataset with the participants to the international PETS 2010 contest, confirming good efficiency and generality.
通过基于上下文图的推理处理复杂咬合,同时实时跟踪单个人和群体
本文提出了一种能够同时跟踪单个目标和组目标的实时跟踪算法。所提出的方法是我们最近在[1]中提出的方法的改进,能够通过有限状态自动机来利用运动对象的历史。该方法的主要新颖之处在于,它将当前帧的证据与前一帧跟踪的对象关联起来。该策略利用运动物体的时空连续性,通过一种高效、鲁棒的基于图的方法,只考虑可能的可行组合。将该方法与2010年国际PETS竞赛的参与者在标准数据集上进行了比较,证实了该方法具有良好的效率和通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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