Learning Riemannian Stable Dynamical Systems via Diffeomorphisms

Jiechao Zhang, H. Mohammadi, L. Rozo
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引用次数: 2

Abstract

Dexterous and autonomous robots should be capable of executing elaborated dynamical motions skillfully. Learning techniques may be leveraged to build models of such dynamic skills. To accomplish this, the learning model needs to encode a stable vector field that resembles the desired motion dynamics. This is challenging as the robot state does not evolve on a Euclidean space, and therefore the stability guarantees and vector field encoding need to account for the geometry arising from, for example, the orientation representation. To tackle this problem, we propose learning Riemannian stable dynamical systems (RSDS) from demonstrations, allowing us to account for different geometric constraints resulting from the dynamical system state representation. Our approach provides Lyapunov-stability guarantees on Riemannian manifolds that are enforced on the desired motion dynamics via diffeomorphisms built on neural manifold ODEs. We show that our Riemannian approach makes it possible to learn stable dynamical systems displaying complicated vector fields on both illustrative examples and real-world manipulation tasks, where Euclidean approximations fail.
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通过微分同态学习黎曼稳定动力系统
灵巧和自主的机器人应该能够熟练地执行复杂的动态运动。可以利用学习技术来构建这种动态技能的模型。为了实现这一点,学习模型需要编码一个稳定的向量场,该向量场与期望的运动动力学相似。这是具有挑战性的,因为机器人的状态不是在欧几里得空间中进化的,因此稳定性保证和向量场编码需要考虑到由几何产生的,例如,方向表示。为了解决这个问题,我们建议从演示中学习黎曼稳定动力系统(RSDS),使我们能够解释由动力系统状态表示产生的不同几何约束。我们的方法提供了黎曼流形的李雅普诺夫稳定性保证,这些保证是通过建立在神经流形ode上的微分同态来实现的。我们表明,我们的黎曼方法可以学习稳定的动态系统,在举例说明和现实世界的操作任务中显示复杂的向量场,其中欧几里得近似失败。
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