A good motion retargeting cannot be reached without reasonable consideration of source-target differences on both the skeleton and shape geometry levels. In this work, we propose a novel Residual RETargeting network (R2ET) structure, which relies on two neural modification modules, to adjust the source motions to fit the target skeletons and shapes progressively. In particular, a skeleton-aware module is introduced to preserve the source motion semantics. A shape-aware module is designed to perceive the geometries of target characters to reduce interpenetration and contact-missing. Driven by our explored distance-based losses that explicitly model the motion semantics and geometry, these two modules can learn residual motion modifications on the source motion to generate plausible retargeted motion in a single inference without post-processing. To balance these two modifications, we further present a balancing gate to conduct linear interpolation between them. Extensive experiments on the public dataset Mixamo demonstrate that our R2ET achieves the state-of-the-art performance, and provides a good balance between the preservation of motion semantics as well as the attenuation of interpenetration and contact-missing. Code is available at https://github.com/Kebii/R2ET.
翻译:不合理考虑骨骼和形状几何水平上的源目标差异,就无法达成良好的运动再定向。在这项工作中,我们提议建立一个新颖的残余再定位网络(R2ET)结构,依靠两个神经修改模块,调整源动议,以适应目标骨骼和形状的逐步适应。特别是,引入了一个骨骼感知模块,以保全源运动语义。一个形状感知模块的设计,以观察目标字符的地理差异,以减少互穿和接触中断。由于我们探索的远距损失,明确模拟运动语义和几何测量,这两个模块可以学习来源运动的剩余运动修改,以便在不经过后处理的单一推断中产生可信的定向运动。为了平衡这两个修改,我们进一步展示了在它们之间进行线性内插的平衡门。关于公共数据集Mixamo的广泛实验表明,我们的R2ET实现了状态-艺术性能,并在保护运动语义结构之间保持一个良好的平衡,因为可调控/网络化。</s>