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3D hypothesis clustering for cross-view matching in multi-person motion capture

机译:三维假设聚类用于多人运动捕获中的跨视图匹配

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We present a multiview method for markerless motion capture of multiple people. The main challenge in this problem is to determine cross-view correspondences for the 2D joints in the presence of noise. We propose a 3D hypothesis clustering technique to solve this problem. The core idea is to transform joint matching in 2D space into a clustering problem in a 3D hypothesis space. In this way, evidence from photometric appearance, multiview geometry, and bone length can be integrated to solve the clustering problem efficiently and robustly. Each cluster encodes a set of matched 2D joints for the same person across different views, from which the 3D joints can be effectively inferred. We then assemble the inferred 3D joints to form full-body skeletons for all persons in a bottom–up way. Our experiments demonstrate the robustness of our approach even in challenging cases with heavy occlusion, closely interacting people, and few cameras. We have evaluated our method on many datasets, and our results show that it has significantly lower estimation errors than many state-of-the-art methods.
机译:我们为多个人的无价值运动捕获提供了一种多视图方法。该问题的主要挑战是确定在存在噪声的情况下对2D关节的巧克力观点。我们提出了一种3D假设聚类技术来解决这个问题。核心思想是将2D空间中的关节匹配转换为3D假设空间中的聚类问题。以这种方式,可以集成来自光度外观,多视图几何和骨长的证据以有效且鲁棒地解决聚类问题。每个群集在不同视图中对同一个人进行对同一个人的一组匹配的2D关节,可以从中能够有效推断3D关节。然后,我们将推断的3D关节组装成以自下而上的方式为所有人组成全身骨架。我们的实验表明,即使在具有重闭塞,密切互动的人和少数摄像机的挑战性案件中,我们的方法也表现出稳健性。我们在许多数据集中评估了我们的方法,我们的结果表明它具有比许多最先进的方法更低的估计误差。

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