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Unsupervised dance figure analysis from video for dancing Avatar animation

机译:跳舞头像动画跳舞的视频舞蹈图分析

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This paper presents a framework for unsupervised video analysis in the context of dance performances, where gestures and 3D movements of a dancer are characterized by repetition of a set of unknown dance figures. The system is trained in an unsupervised manner using Hidden Markov Models (HMMs) to automatically segment multi-view video recordings of a dancer into recurring elementary temporal body motion patterns to identify the dance figures. That is, a parallel HMM structure is employed to automatically determine the number and the temporal boundaries of different dance figures in a given dance video. The success of the analysis framework has been evaluated by visualizing these dance figures on a dancing avatar animated by the computed 3D analysis parameters. Experimental results demonstrate that the proposed framework enables synthetic agents and/or robots to learn dance figures from video automatically.
机译:本文在舞蹈表演的背景下提出了一个无监督视频分析的框架,其中舞者的手势和3D运动的特征在于重复一套未知的舞蹈图。该系统以无监督的方式使用隐马尔可夫模型(HMMS)培训,以自动将舞者的多视图视频记录自动分割成重复的基本时颞体运动模式以识别舞蹈图。也就是说,采用平行的HMM结构来自动确定不同舞蹈图中的不同舞蹈图的数量和时间边界。通过在由计算的3D分析参数上的跳舞的头像上可视化这些舞蹈图来评估分析框架的成功。实验结果表明,所提出的框架使合成代理和/或机器人能够自动从视频中学习舞蹈图。

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