论文标题
欧几内亚流量:学习稳定动力学系统的差异减少
Euclideanizing Flows: Diffeomorphic Reduction for Learning Stable Dynamical Systems
论文作者
论文摘要
机器人任务通常需要与复杂的几何结构进行动作。我们提出了一种通过利用人类运动的规律性特性(例如稳定性,平稳性和有限性。复杂的运动被编码为稳定动力学系统的推出,在通过差异性定义的坐标变化下,该系统等同于一个简单的手工指定的动态系统。作为使用差异性的直接结果,手动指定的动力系统的稳定性直接延续到学习的动力学系统。受密度估计的最新作品的启发,我们建议将差异性表示为简单参数化差异性的组成。施加了其他结构,以提供生成动作的平稳性的保证。通过对现实世界机器人系统收集的既定基准的验证以及对既定的基准进行验证的验证,证明了这种方法的功效。
Robotic tasks often require motions with complex geometric structures. We present an approach to learn such motions from a limited number of human demonstrations by exploiting the regularity properties of human motions e.g. stability, smoothness, and boundedness. The complex motions are encoded as rollouts of a stable dynamical system, which, under a change of coordinates defined by a diffeomorphism, is equivalent to a simple, hand-specified dynamical system. As an immediate result of using diffeomorphisms, the stability property of the hand-specified dynamical system directly carry over to the learned dynamical system. Inspired by recent works in density estimation, we propose to represent the diffeomorphism as a composition of simple parameterized diffeomorphisms. Additional structure is imposed to provide guarantees on the smoothness of the generated motions. The efficacy of this approach is demonstrated through validation on an established benchmark as well demonstrations collected on a real-world robotic system.