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Dance modelling, learning and recognition system of aceh traditional dance based on hidden Markov model

机译:基于隐马尔可夫模型的民族传统舞蹈舞蹈建模,学习与识别系统

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The whole dance of Likok Pulo are modeled by hidden Markov model. Dance gestures are cast as hidden discrete states and phrase as a sequence of gestures. For robustness under noisy input of Kinect sensor, an angular representation of the skeleton is designed. A pose of dance is defined by this angular skeleton representation which has been quantified based on range of movement. One unique gesture of dance is defined by sequence of pose and learned and classified by HMM model. The system was implemented using the Matlab and Simulink programming package. Six of dance's gesture classes from the phrase "Assalamualaikum" has been trained with hundreds of gesture instances recorded by the XBOX Kinect sensor which performed by three of subjects for each gesture class. The classifier system classify the input testing gesture into one of six classes of predefined gesture or one class of undefined gesture. The classifier system has an accuracy of 94.87% for single gesture.
机译:Likok Pulo的整个舞蹈都采用隐马尔可夫模型进行建模。舞蹈手势被投射为隐藏的离散状态,短语被投射为手势序列。为了在Kinect传感器的噪声输入下保持鲁棒性,设计了骨架的角度表示。舞蹈姿势是由这种角度骨骼表示法定义的,该角度骨骼表示法已根据运动范围进行了量化。一种舞蹈的独特姿势是由姿势序列定义的,并由HMM模型进行学习和分类。该系统是使用Matlab和Simulink编程包实现的。短语“ Assalamualaikum”中的六个舞蹈手势类已经过XBOX Kinect传感器记录的数百个手势实例的训练,这些实例由每个手势类的三个对象执行。分类器系统将输入的测试手势分类为六种预定义手势或一类未定义手势中的一种。分类器系统对单个手势的准确度为94.87%。

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