降阶运动学的无数据学习

Nicholas Sharp, Cristian Romero, Alec Jacobson, E. Vouga, P. Kry, D. Levin, J. Solomon
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引用次数: 2

摘要

从弹性体到运动连杆的物理系统都是在高维构型空间上定义的,而它们典型的低能构型集中在低维的子空间上。这项工作解决了自动识别这样的子空间的挑战:给定一个高维系统的能量函数作为输入,我们生成一个低维地图,其图像参数化了不同但低能量的配置子流形。唯一需要的额外输入是一个种子配置,用于系统初始化我们的过程;不需要轨迹数据集。我们将子空间表示为将低维潜在向量映射到完整构型空间的神经网络,并提出了一种训练方案来将网络参数拟合到任何感兴趣的系统。这个公式在非常普遍的物理系统范围内是有效的;我们的实验不仅证明了非线性和非常低维的弹性体和布子空间,而且还证明了更一般的系统,如碰撞刚体和连杆。我们简要地探讨了建立在这个公式上的应用,包括操作、潜在插值和采样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Free Learning of Reduced-Order Kinematics
Physical systems ranging from elastic bodies to kinematic linkages are defined on high-dimensional configuration spaces, yet their typical low-energy configurations are concentrated on much lower-dimensional subspaces. This work addresses the challenge of identifying such subspaces automatically: given as input an energy function for a high-dimensional system, we produce a low-dimensional map whose image parameterizes a diverse yet low-energy submanifold of configurations. The only additional input needed is a single seed configuration for the system to initialize our procedure; no dataset of trajectories is required. We represent subspaces as neural networks that map a low-dimensional latent vector to the full configuration space, and propose a training scheme to fit network parameters to any system of interest. This formulation is effective across a very general range of physical systems; our experiments demonstrate not only nonlinear and very low-dimensional elastic body and cloth subspaces, but also more general systems like colliding rigid bodies and linkages. We briefly explore applications built on this formulation, including manipulation, latent interpolation, and sampling.
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