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Spatio-Temporal Context for Robust Multitarget Tracking

机译:时空上下文进行鲁棒的多目标跟踪

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In multitarget tracking, the main challenge is to maintain the correct identity of targets even under occlusions or when differences between the targets are small. The paper proposes a new approach to this problem by incorporating the context information. The context of a target in an image sequence has two components: the spatial context including the local background and nearby targets and the temporal context including all appearances of the targets that have been seen previously. The paper considers both aspects. We propose a new model for multitarget tracking based on the classification of each target against its spatial context. The tracker searches a region similar to the target while avoiding nearby targets. The temporal context is included by integrating the entire history of target appearance based on probabilistic principal component analysis (PPCA). We have developed a new incremental scheme that can learn the full set of PPCA parameters accurately online. The experiments show robust tracking performance under the condition of severe clutter, occlusions, and pose changes
机译:在多目标跟踪中,主要挑战是即使在遮挡下或目标之间的差异较小时也要保持目标的正确身份。本文提出了一种新的方法,通过合并上下文信息来解决此问题。图像序列中目标的上下文具有两个组成部分:包括本地背景和附近目标的空间上下文,以及包括先前已看到的所有目标外观的时间上下文。本文考虑了这两个方面。我们针对每个目标针对其空间上下文的分类,提出了一种用于多目标跟踪的新模型。跟踪器搜索与目标相似的区域,同时避开附近的目标。通过基于概率主成分分析(PPCA)整合目标出现的整个历史记录来包含时间上下文。我们开发了一种新的增量方案,可以在线准确地学习全套PPCA参数。实验表明,在严重的杂波,遮挡和姿势变化的情况下,跟踪性能稳定可靠

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