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An Enhanced Joint Hilbert Embedding-Based Metric to Support Mocap Data Classification with Preserved Interpretability

机译:基于嵌入的基于Hilbert嵌入的度量标准以支持具有保存的解释性的Mocap数据分类

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摘要

Motion capture (Mocap) data are widely used as time series to study human movement. Indeed, animation movies, video games, and biomechanical systems for rehabilitation are significant applications related to Mocap data. However, classifying multi-channel time series from Mocap requires coding the intrinsic dependencies (even nonlinear relationships) between human body joints. Furthermore, the same human action may have variations because the individual alters their movement and therefore the inter/intraclass variability. Here, we introduce an enhanced Hilbert embedding-based approach from a cross-covariance operator, termed EHECCO, to map the input Mocap time series to a tensor space built from both 3D skeletal joints and a principal component analysis-based projection. Obtained results demonstrate how EHECCO represents and discriminates joint probability distributions as kernel-based evaluation of input time series within a tensor reproducing kernel Hilbert space (RKHS). Our approach achieves competitive classification results for style/subject and action recognition tasks on well-known publicly available databases. Moreover, EHECCO favors the interpretation of relevant anthropometric variables correlated with players’ expertise and acted movement on a Tennis-Mocap database (also publicly available with this work). Thereby, our EHECCO-based framework provides a unified representation (through the tensor RKHS) of the Mocap time series to compute linear correlations between a coded metric from joint distributions and player properties, i.e., age, body measurements, and sport movement (action class).
机译:运动捕获(Mocap)数据被广泛用作研究人类运动的时间序列。实际上,用于康复的动画电影,视频游戏和生物力学系统是与MoCAP数据有关的重要应用。然而,分类来自Mocap的多通道时间序列需要编码人体关节之间的内在依赖性(偶数非线性关系)。此外,相同的人类动作可能具有变化,因为该个体改变了它们的运动,因此改变了它们的间际变异性。在这里,我们从跨协方差运营商(称为EHECCO)介绍基于基于希尔伯特的基于嵌入的方法,以将输入的Mocap时间序列映射到由3D骨架接头和基于主成分分析的投影构建的张量空间。获得的结果证明了EHECCO如何表示和鉴别联合概率分布作为基于内核的输入时间序列的评估,其张于张于核心Hilbert空间(RKHS)。我们的方法实现了众所周知的公知数据库的风格/主题和行动识别任务的竞争分类结果。此外,EHECCO有利于解释相关的人类测量变量与玩家专业知识相关的各种变量,并在网球管理数据库上行动运动(也公开有关这项工作)。由此,我们的EHECCO的框架提供了Mocap时间序列的统一表示(通过张量RKHS),以计算来自联合分布和玩家属性的编码度量之间的线性相关性,即年龄,身体测量和运动运动(动作类)。

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