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Automatic Transition Detection of Segmented Motion Clips Using PCA-based GMM Method

机译:基于PCA的GMM方法对运动片段的自动过渡检测

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In this work, we record a dancer's rhythmic movement with background music. The captured motion sequences are then segmented into dozens of motion clips, to construct a motion database consisting of sets of labeled motion clips. Many of these motion clips contain short and rapid transition from one main dancing motion to another, which causes unnatural, awkward movements when they are connected in different orders than the original sequence. In this paper, we describe our approach for automatically detecting the transition parts in the segmented motion clips. For each motion clip, we model the motion data using the Gaussian Mixture Model (GMM) and use the resulting distribution cluster map to improve the efficiency and convergence of the clustering, Principal Component Analysis (PCA) has been applied to the motion data prior to performing GMM. Experiments and comparative analysis show that this PCA-based GMM method effectively performs transition detection on the segmented motion clips.
机译:在这项工作中,我们用背景音乐录制舞者的节奏动作。然后将捕获的运动序列分割为数十个运动剪辑,以构建由标记运动剪辑集组成的运动数据库。这些动作剪辑中有许多包含从一种主要的跳舞动作到另一种主要的跳舞动作的快速且短暂的过渡,当它们以与原始序列不同的顺序连接时,会导致不自然,笨拙的动作。在本文中,我们描述了一种用于自动检测分段运动剪辑中过渡部分的方法。对于每个运动剪辑,我们使用高斯混合模型(GMM)对运动数据进行建模,并使用生成的分布聚类图来提高聚类的效率和收敛性,在此之前,已对运动数据应用了主成分分析(PCA)。执行GMM。实验和对比分析表明,这种基于PCA的GMM方法可以有效地对分割后的运动剪辑执行过渡检测。

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