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Bidirectional long short-term memory networks and sparse hierarchical modeling for scalable educational learning of dance choreographies

机译:双向长期内记忆网络和舞蹈教育教育学习的稀疏层次建模

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Recently, several educational game platforms have been proposed in the literature for choreographic training. However, their main limitation is that they fail to provide a quantitative assessment framework of a performing choreography against a groundtruth one. In this paper, we address this issue by proposing a machine learning framework exploiting deep learning paradigms. In particular, we introduce a long short-term memory network with the main capability of analyzing 3D captured skeleton feature joints of a dancer into predefined choreographic postures. This pose identification procedure is capable of providing a detailed (fine) evaluation score of a performing dance. In addition, the paper proposes a choreographic summarization architecture based on sparse modeling representative selection (SMRS) in order to abstractly represent the performing choreography through a set of key choreographic primitives. We have modified the SMRS algorithm in a way to extract hierarchies of key representatives. Choreographic summarization provides an efficient tool for a coarse quantitative evaluation of a dance. Moreover, hierarchical representation scheme allows for a scalable assessment of a choreography. The serious game platform supports advanced visualization toolkits using Labanotation in order to deliver the performing sequence in a formal documentation.
机译:最近,在文献中建议了一些教育游戏平台进行编舞培训。然而,它们的主要限制是,它们未能提供对Tounttruth的表演编排的定量评估框架。在本文中,我们通过提出利用深入学习范式的机器学习框架来解决这个问题。特别地,我们引入了长期的短期存储网络,其主要能力分析了舞者的3D捕获的骨架特征关节进入预定的编舞姿势。这种姿势识别程序能够提供表演舞蹈的详细(精细)评估得分。此外,本文提出了一种基于稀疏建模代表选择(SMR)的编排概括架构,以便抽象通过一组关键的编舞基元表示表演编排。我们以一种方式修改了SMRS算法,以提取关键代表的层次结构。编舞摘要提供了一种有效的舞蹈评估舞蹈的有效工具。此外,分层表示方案允许对编排的可扩展评估。严重的游戏平台支持使用Labanotation的高级可视化工具包,以便在正式​​文档中提供执行顺序。

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