Motion indexing using coordination between essential actuators

Gutemberg Guerra-Filho
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Abstract

We address the problem of organizing a partially annotated corpus of human movement by indexing and linking similar motion segments. The motion indexing problem consists in finding all pairs of similar motion segments in the corpus. Motion indexing is an important step towards full annotation of a motion corpus and, consequently, to the discovery of robust representations to humanoid motion. We propose an approach where each human action is associated with a set of essential actuators. The set of essential actuators may range from a set with one element (single actuator) to a set containing all actuators (whole body). The novelty here in our motion indexing approach is the use of coordination between actuators to discover similar motion segments and to find a minimal set of essential actuators for each segment. This approach respects the parallel aspect of human motion where actions are performed concurrently. This allows the combinatorial use of different actions at the same time. This approach considers only a minimal set of actuators to model each action which results in performance gains. In this paper, we present the design of a non-ambiguous similarity measure, two greedy heuristics, and an optimal algorithm for the construction of coordination regions that ultimately result in similar motion segments. The heuristics support the optimality of the proposed algorithm. We empirically validate the optimality and correctness of our algorithm in our experiments.
使用基本致动器之间的协调进行运动分度
我们通过索引和链接相似的运动片段来解决组织部分注释的人类运动语料库的问题。运动索引问题包括在语料库中找到所有对相似的运动片段。运动索引是对运动语料库进行完整注释的重要一步,因此,对于发现对类人运动的鲁棒表示也是重要的一步。我们提出了一种方法,其中每个人的行为都与一组基本致动器相关联。基本致动器的集合可以从一个元件的集合(单个致动器)到包含所有致动器的集合(整体)。我们的运动索引方法的新颖之处在于使用执行器之间的协调来发现相似的运动段,并为每个段找到最小的基本执行器集。这种方法尊重人类运动的并行方面,其中动作是并发执行的。这允许在同一时间组合使用不同的操作。这种方法只考虑一组最小的致动器来对每个动作进行建模,从而提高性能。在本文中,我们提出了一种非模糊相似性度量的设计,两种贪婪启发式算法,以及一种构建协调区域的优化算法,最终导致相似的运动段。启发式算法支持算法的最优性。通过实验验证了算法的最优性和正确性。
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