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Entropy-based motion extraction for motion capture animation

机译:用于运动捕捉动画的基于熵的运动提取

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摘要

In this paper, we present a new segmentation solution for extracting motion patterns from motion capture data by searching for critical keyposes in the motion sequence. A rank is established for critical keyposes that identifies the significance of the directional change in motion data. The method is based on entropy metrics, specifically the mutual information measure. Displacement histograms between frames are evaluated and the mutual information metric is employed in order to calculate the inter-frame dependency. The most significant keypose identifies the largest directional change in the motion data. This will have the lowest mutual information level from all the candidate keyposes. Less significant keyposes are then listed with higher mutual information levels. The results show that the method has higher sensitivity in the directional change than methods based on the magnitude of the velocity alone. This method is intended to provide a summary of a motion clip by ranked keyposes, which is highly useful in motion browsing and motion retrieve database system.
机译:在本文中,我们提出了一种新的分割解决方案,可通过在运动序列中搜索关键的关键姿势从运动捕获数据中提取运动模式。为关键关键帧建立一个等级,该等级标识运动数据中方向变化的重要性。该方法基于熵度量,特别是互信息度量。评估帧之间的位移直方图,并采用相互信息度量以计算帧间相关性。最重要的姿势是运动数据中最大的方向变化。从所有候选关键姿势中,这将具有最低的互信息级别。重要性较低的关键主题随后会以较高的相互信息级别列出。结果表明,与仅基于速度大小的方法相比,该方法在方向变化上具有更高的灵敏度。此方法旨在按排名关键点提供运动剪辑的摘要,这在运动浏览和运动检索数据库系统中非常有用。

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