Multi-view People Tracking via Hierarchical Trajectory Composition

Yuanlu Xu, Xiaobai Liu, Yang Liu, Song-Chun Zhu
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引用次数: 121

Abstract

This paper presents a hierarchical composition approach for multi-view object tracking. The key idea is to adaptively exploit multiple cues in both 2D and 3D, e.g., ground occupancy consistency, appearance similarity, motion coherence etc., which are mutually complementary while tracking the humans of interests over time. While feature online selection has been extensively studied in the past literature, it remains unclear how to effectively schedule these cues for the tracking purpose especially when encountering various challenges, e.g. occlusions, conjunctions, and appearance variations. To do so, we propose a hierarchical composition model and re-formulate multi-view multi-object tracking as a problem of compositional structure optimization. We setup a set of composition criteria, each of which corresponds to one particular cue. The hierarchical composition process is pursued by exploiting different criteria, which impose constraints between a graph node and its offsprings in the hierarchy. We learn the composition criteria using MLE on annotated data and efficiently construct the hierarchical graph by an iterative greedy pursuit algorithm. In the experiments, we demonstrate superior performance of our approach on three public datasets, one of which is newly created by us to test various challenges in multi-view multi-object tracking.
基于分层轨迹合成的多视角人物跟踪
提出了一种用于多视图目标跟踪的分层组合方法。关键思想是自适应地利用2D和3D中的多个线索,例如,地面占用一致性,外观相似性,运动一致性等,这些线索在跟踪感兴趣的人类时是相互补充的。虽然在过去的文献中对特征在线选择进行了广泛的研究,但如何有效地安排这些线索用于跟踪目的仍然不清楚,特别是在遇到各种挑战时,例如闭塞,连词和外观变化。为此,我们提出了一种分层组合模型,并将多视图多目标跟踪问题重新表述为组合结构优化问题。我们设置了一组组合标准,每个标准对应于一个特定的线索。通过利用不同的标准来实现分层组合过程,这些标准在层次结构中的图节点及其后代之间施加约束。我们在标注数据上使用MLE学习组合准则,并通过迭代贪婪追踪算法高效地构建层次图。在实验中,我们证明了我们的方法在三个公共数据集上的优越性能,其中一个是我们新创建的,用于测试多视图多目标跟踪中的各种挑战。
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