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DeepDance: Music-to-Dance Motion Choreography With Adversarial Learning

机译:Deaddance:具有对抗性学习的音乐与舞蹈运动舞蹈

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The creation of improvised dancing choreographies is an important research field of cross-modal analysis. A key point of this task is how to effectively create and correlate music and dance with a probabilistic one-to-many mapping, which is essential to create realistic dances of various genres. To address this issue, we propose a GAN-based cross-modal association framework, DeepDance, which correlates two different modalities (dance motion and music) together, aiming at creating the desired dance sequence in terms of the input music. Its generator is to predictively produce the dance movements best-fit to current music piece by learning from examples. In another hand, its discriminator acts as an external evaluation from the audience and judges the whole performance. The generated dance movements and the corresponding input music are considered to be well-matched if the discriminator cannot distinguish the generated movements from the training samples according to the estimated probability. By adding motion consistency constraints in our loss function, the proposed framework is able to create long realistic dance sequences. To alleviate the problem of expensive and inefficient data collection, we propose an effective approach to create a large-scale dataset, YouTube-Dance3D, from open data source. Extensive experiments on currently available music-dance datasets and our YouTube-Dance3D dataset demonstrate that our approach effectively captures the correlation between music and dance and can be used to choreograph appropriate dance sequences.
机译:即兴跳舞编舞的创造是跨模型分析的重要研究领域。这项任务的一个关键点是如何用概率一对多映射有效地创建和关联音乐和跳舞,这对于创造各种类型的逼真的舞蹈至关重要。为了解决这个问题,我们提出了一种基于GAN的跨模型协会框架,深度,它在一起将两个不同的方式(舞蹈动作和音乐)与输入音乐方面的创建所需的舞蹈序列相关联。它的发电机是通过从示例的学习来预测地预测舞蹈运动最适合当前的乐曲。在另一方面,其鉴别者是来自观众的外部评估,并判断整个性能。如果鉴别器不能根据估计概率,则所产生的舞蹈运动和相应的输入音乐被认为是充分匹配的。通过在我们的损耗函数中添加运动一致性约束,所提出的框架能够创建长期的现实舞蹈序列。为了减轻昂贵且低效的数据收集问题,我们提出了一种有效的方法来创建一个大型数据集,来自开放数据源的大规模数据集youtube-dance3d。对目前可用的音乐舞蹈数据集和我们的YouTube-Dance3D数据集进行了广泛的实验表明,我们的方法有效地捕捉了音乐与舞蹈之间的相关性,并可用于编写适当的舞蹈序列。

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