基于速度的多变化点推理人体运动行为无监督分割

Lisa Senger, M. Schröer, J. H. Metzen, E. Kirchner
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引用次数: 18

摘要

为了将复杂的人类行为转移到机器人身上,需要能够检测中心运动模式的分割方法,这些模式可以组合起来产生广泛的行为。我们提出了一种以全自动方式将人类运动分割成行为构建块的算法,称为基于速度的多变化点推理(vMCI)。基于点对点手臂运动的钟形速度模式特征,该算法使用贝叶斯推理来推断分段边界。可以处理不同的片段长度和运动执行中的变化。此外,不需要事先知道运动所组成的段数。在人体运动的合成数据和动作捕捉数据上进行了实验,比较了vMCI与其他无监督分割技术的差异。结果表明,即使在有噪声的数据和具有平滑过渡的演示中,vMCI也能检测到段的边界。
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Velocity-Based Multiple Change-Point Inference for Unsupervised Segmentation of Human Movement Behavior
In order to transfer complex human behavior to a robot, segmentation methods are needed which are able to detect central movement patterns that can be combined to generate a wide range of behaviors. We propose an algorithm that segments human movements into behavior building blocks in a fully automatic way, called velocity-based Multiple Change-point Inference (vMCI). Based on characteristic bell-shaped velocity patterns that can be found in point-to-point arm movements, the algorithm infers segment borders using Bayesian inference. Different segment lengths and variations in the movement execution can be handled. Moreover, the number of segments the movement is composed of need not be known in advance. Several experiments are performed on synthetic and motion capturing data of human movements to compare vMCI with other techniques for unsupervised segmentation. The results show that vMCI is able to detect segment borders even in noisy data and in demonstrations with smooth transitions between segments.
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