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Efficient and robust annotation of motion capture data

机译:高效且强大的运动捕获数据注释

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In view of increasing collections of available 3D motion capture (mocap) data, the task of automatically annotating large sets of unstructured motion data is gaining in importance. In this paper, we present an efficient approach to label mocap data according to a given set of motion categories or classes, each specified by a suitable set of positive example motions. For each class, we derive a motion template that captures the consistent and variable aspects of a motion class in an explicit matrix representation. We then present a novel annotation procedure, where the unknown motion data is segmented and annotated by locally comparing it with the available motion templates. This procedure is supported by an efficient keyframe-based preprocessing step, which also significantly improves the annotation quality by eliminating false positive matches. As a further contribution, we introduce a genetic learning algorithm to automatically learn the necessary keyframes from the given example motions. Forevaluation, we report on various experiments conducted on two freely available sets of motion capture data (CMU and HDM05).
机译:鉴于增加可用3D运动捕获(Mocap)数据的集合,自动注释大型非结构化运动数据的任务是重要的。在本文中,我们提出了一种有效的方法来标记Mocap数据,根据给定的一组运动类别或类别,每个组合由合适的正示例运动组指定。对于每个类,我们得出了一个运动模板,该运动模板在显式矩阵表示中捕获运动类的一致性和可变方面。然后,我们提出了一种新的注释程序,其中通过与可用的运动模板本地进行比较来分割和注释未知的运动数据。基于关键帧的预处理步骤支持该过程,这也通过消除错误的正匹配来显着提高注释质量。作为进一步的贡献,我们介绍了一种遗传学习算法,可以从给定的示例动作自动学习必要的关键帧。预估,我们报告了在两种可自由的运动捕获数据(CMU和HDM05)上进行的各种实验。

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