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Automatic Labanotation Generation from Motion-Captured Data Based on Hidden Markov Models

机译:基于隐马尔可夫模型的运动捕捉数据自动标注

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Labanotation is a powerful tool for the recording and archiving of traditional dances. In this paper, we propose a Hidden Markov Model based method to automatically generate Labanotation from motion-captured data by recognizing each category of body movements that corresponds to a Labanotation symbol. The body movements across frames are modeled with Hidden Markov state and each state is modeled with a mixture of Gaussian models. Furthermore, we extract better features from motion-captured data that are more conducive to modeling movement segments with Hidden Markov Models. Therefore, our model is able to generate much more reliable Labanotation records than previous works. In our experiments, We achieve an accuracy of about 90% for the generated notations in the support column of Labanotation.
机译:Labanotation是用于录制和存档传统舞蹈的强大工具。在本文中,我们提出了一种基于隐马尔可夫模型的方法,该方法通过识别与Labanotation符号相对应的身体运动的每个类别,从运动捕获的数据中自动生成Labanotation。跨框架的身体运动使用“隐马尔可夫”状态建模,每个状态都使用高斯模型混合建模。此外,我们从运动捕获的数据中提取了更好的特征,这些特征更有助于使用隐马尔可夫模型对运动段进行建模。因此,我们的模型能够比以前的工作生成更可靠的Labanotation记录。在我们的实验中,对于Labanotation的支持列中生成的符号,我们实现了约90%的精度。

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