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Dance Movement Recognition Based on Feature Expression and Attribute Mining

机译:基于特征表达和属性挖掘的舞蹈运动识别

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摘要

There are complex posture changes in dance movements, which lead to the low accuracy of dance movement recognition. And none of the current motion recognition uses the dancer’s attributes. The attribute feature of dancer is the important high-level semantic information in the action recognition. Therefore, a dance movement recognition algorithm based on feature expression and attribute mining is designed to learn the complicated and changeable dancer movements. Firstly, the original image information is compressed by the time-domain fusion module, and the information of action and attitude can be expressed completely. Then, a two-way feature extraction network is designed, which extracts the details of the actions along the way and takes the sequence image as the input of the network. Then, in order to enhance the expression ability of attribute features, a multibranch spatial channel attention integration module (MBSC) based on an attention mechanism is designed to extract the features of each attribute. Finally, using the semantic inference and information transfer function of the graph convolution network, the relationship between attribute features and dancer features can be mined and deduced, and more expressive action features can be obtained; thus, high-performance dance motion recognition is realized. The test and analysis results on the data set show that the algorithm can recognize the dance movement and improve the accuracy of the dance movement recognition effectively, thus realizing the movement correction function of the dancer.
机译:舞蹈运动中有复杂的姿势变化,这导致舞蹈运动识别的精度低。并且没有任何当前的运动识别使用舞者的属性。舞者的属性特征是动作识别中的重要高级语义信息。因此,基于特征表达和属性挖掘的舞蹈运动识别算法旨在学习复杂且更可变的舞者运动。首先,通过时域融合模块压缩原始图像信息,并且可以完全表达动作和姿态的信息。然后,设计了双向特征提取网络,其沿方式提取动作的细节,并将序列图像作为网络的输入。然后,为了增强属性特征的表达能力,基于注意机制的多刺渠道注意力集成模块(MBSC)旨在提取每个属性的特征。最后,使用图形卷积网络的语义推理和信息传递函数,可以挖掘和推断属性特征和舞者特征之间的关系,并且可以获得更具表现力的动作特征;因此,实现了高性能舞蹈运动识别。数据集的测试和分析结果表明,该算法可以有效地识别舞蹈运动,提高舞蹈运动识别的准确性,从而实现舞者的运动校正功能。

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  • 作者

    Xianfeng Zhai;

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  • 年度 2021
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  • 原文格式 PDF
  • 正文语种 eng
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