Style machines

M. Brand, Aaron Hertzmann
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引用次数: 769

Abstract

We approach the problem of stylistic motion synthesis by learning motion patterns from a highly varied set of motion capture sequences. Each sequence may have a distinct choreography, performed in a distinct sytle. Learning identifies common choreographic elements across sequences, the different styles in which each element is performed, and a small number of stylistic degrees of freedom which span the many variations in the dataset. The learned model can synthesize novel motion data in any interpolation or extrapolation of styles. For example, it can convert novice ballet motions into the more graceful modern dance of an expert. The model can also be driven by video, by scripts or even by noise to generate new choreography and synthesize virtual motion-capture in many styles.
风格的机器
我们通过从一组高度不同的动作捕捉序列中学习运动模式来解决风格运动合成问题。每个序列可能有不同的编排,以不同的风格表演。学习识别跨序列的常见编排元素,执行每个元素的不同风格,以及跨越数据集中许多变化的少量风格自由度。学习到的模型可以在任何形式的插值或外推中合成新的运动数据。例如,它可以将初学者的芭蕾舞动作转换成更优雅的专家级现代舞。该模型还可以由视频、脚本甚至噪音驱动,以生成新的编排和合成多种风格的虚拟动作捕捉。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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