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Learn2Dance: Learning Statistical Music-to-Dance Mappings for Choreography Synthesis

机译:Learn2Dance:学习统计音乐到舞蹈的映射以进行编排合成

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摘要

We propose a novel framework for learning many-to-many statistical mappings from musical measures to dance figures towards generating plausible music-driven dance choreographies. We obtain music-to-dance mappings through use of four statistical models: 1) musical measure models, representing a many-to-one relation, each of which associates different melody patterns to a given dance figure via a hidden Markov model (HMM); 2) exchangeable figures model, which captures the diversity in a dance performance through a one-to-many relation, extracted by unsupervised clustering of musical measure segments based on melodic similarity; 3) figure transition model, which captures the intrinsic dependencies of dance figure sequences via an $n$-gram model; 4) dance figure models, capturing the variations in the way particular dance figures are performed, by modeling the motion trajectory of each dance figure via an HMM. Based on the first three of these statistical mappings, we define a discrete HMM and synthesize alternative dance figure sequences by employing a modified Viterbi algorithm. The motion parameters of the dance figures in the synthesized choreography are then computed using the dance figure models. Finally, the generated motion parameters are animated synchronously with the musical audio using a 3-D character model. Objective and subjective evaluation results demonstrate that the proposed framework is able to produce compelling music-driven choreographies.
机译:我们提出了一个新颖的框架,用于学习从乐器到舞蹈人物的多对多统计映射,以生成合理的音乐驱动的舞蹈编排。我们通过使用四个统计模型获得音乐到舞蹈的映射:1)音乐测量模型,表示多对一关系,每个模型都通过隐藏的马尔可夫模型(HMM)将不同的旋律模式关联到给定的舞者; 2)可交换人物模型,该模型通过一对多的关系捕获舞蹈表演中的多样性,该关系是通过基于旋律相似性的无节拍音乐片段的聚类提取的; 3)人物过渡模型,通过$ n $ -gram模型捕获舞蹈人物序列的内在依赖性; 4)舞者模型,通过HMM对每个舞者的运动轨迹进行建模,捕获特定舞者执行方式的变化。基于这些统计映射的前三个,我们定义了离散的HMM并通过使用改进的Viterbi算法来合成替代舞蹈人物序列。然后,使用舞蹈人物模型计算合成编舞中的舞蹈人物的运动参数。最后,使用3-D角色模型将生成的运动参数与音乐音频同步进行动画处理。客观和主观的评估结果表明,提出的框架能够产生引人注目的音乐驱动的编舞。

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