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Model-based Motion Imitation for Agile, Diverse and Generalizable Quadupedal Locomotion.

Tianyu Li, Jungdam Won, Sehoon Ha, Akshara Rai

Year
2021
Citations
2

Abstract

Robots operating in human environments need a variety of skills, like slow and fast walking, turning, and side-stepping. However, building robot controllers that can exhibit such a large range of behaviors is challenging, and unsolved. We present an approach that uses a model-based controller for imitating different animal gaits without requiring any real-world fine-tuning. Unlike previous works that learn one policy per motion, we present a unified controller which is capable of generating four different animal gaits on the A1 robot. Our framework includes a trajectory optimization procedure that improves the quality of real-world imitation. We demonstrate our results in simulation and on a real 12-DoF A1 quadruped robot. Our result shows that our approach can mimic four animal motions, and outperform baselines learned per motion.

Keywords

ImitationRobotComputer scienceTrajectoryAgile software developmentController (irrigation)Variety (cybernetics)Motion (physics)Artificial intelligenceRange (aeronautics)

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