The successful transfer of a learned controller from simulation to the real world for a legged robot requires not only the ability to identify the system, but also accurate estimation of the robot's state. In this paper, we propose a novel algorithm that can infer not only information about the parameters of the dynamic system, but also estimate important information about the robot's state from previous observations. We integrate our algorithm with Adversarial Motion Priors and achieve a robust, agile, and natural gait in both simulation and on a Unitree A1 quadruped robot in the real world. Empirical results demonstrate that our proposed algorithm enables traversing challenging terrains with lower power consumption compared to the baselines. Both qualitative and quantitative results are presented in this paper.
翻译:成功地将从仿真环境中学习的控制器转移到真实世界的多足机器人中,不仅需要识别系统,还需要准确估计机器人的状态。本文提出了一种新的算法,它不仅可以推断动态系统的参数信息,还可以从以前的观察中估计机器人状态的重要信息。我们将我们的算法与Adversarial Motion Priors集成起来,在模拟和Unitree A1四足机器人的真实世界中实现了强健,敏捷和自然的步态。实证结果表明,与基线相比,我们提出的算法使得机器人能够穿越具有挑战性的地形,并且能够在更低的功耗下完成行走。本文呈现了定性和定量的结果。