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Repeatable Local Coordinate Frames for 3D Human Motion Tracking: from Rigid to Non-Rigid

机译:用于3D人体运动跟踪的可重复局部坐标框架:从刚性到非刚性

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Local coordinate frame (LCF) is a key component deployed in most 3D descriptors for invariant representations of 3D surfaces. This paper addresses the problem of attaching a LCF to non-rigidly deforming objects, in particular humanoid surfaces, with the application of recovering correspondences between the template model and input data for 3D human motion tracking. We facilitate this by extending two current LCF paradigms for rigid surface matching to the non-rigid case. Such an adaptation is motivated by the assumption that interpolating locally rigid movements often amounts to smooth globally non-rigid deformations. Both approaches leverage spatial distributions, based on signed distance and principal component analysis, respectively. Furthermore, we advocate a new strategy that incorporates multiple LCF candidates. This way we relax the requirement of perfectly repeatable LCFs, and yet still achieve improved data-model associations. Ground truth for non-rigid LCFs are synthetically generated by interpolating locally-rigidly transformed LCFs. Therefore, the proposed methods can be evaluated extensively in terms of repeatability of LCFs, robustness on estimating correspondences, and accuracy of final tracking results. All the experiments demonstrate the benefits of the proposed methods with respect to the state-of-the-art.
机译:本地坐标帧(LCF)是在大多数3D描述符中部署的关键组件,用于3D曲面的不变表示。本文地址附加LCF到非刚性变形的对象,特别是人型的表面,以回收所述模板模型和输入数据为三维人体运动跟踪之间的对应关系的应用的问题。我们通过将两个当前LCF范例扩展到刚性表面与非刚性壳体匹配来促进这一点。这种自适应是通过假设在局部刚性运动中透气地延伸到平滑全球非刚性变形的假设。两种方法都分别接近利用空间分布,分别是符号距离和主成分分析。此外,我们倡导融合多个LCF候选人的新策略。这样,我们可以放松完全可重复的LCF的要求,但仍然实现了改进的数据模型关联。通过插值局部刚性变换的LCF来综合产生非刚性LCF的原始真理。因此,可以在LCFS的可重复性方面,估计对应关系的鲁棒性以及最终跟踪结果的准确性来广泛评估所提出的方法。所有实验展示了所提出的方法关于最先进的方法的益处。

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