GenLoco: Generalized Locomotion Controllers for Quadrupedal Robots

  Рет қаралды 3,897

Hybrid Robotics

Hybrid Robotics

Жыл бұрын

Recent years have seen a surge in commercially-available and affordable
quadrupedal robots, with many of these platforms being actively used in research and industry. As the availability of legged robots grows, so does the need for controllers that enable these robots to perform useful skills. However, most learning-based frameworks for controller development focus on training robot-specific controllers, a process that needs to be repeated for every new robot. In this work, we introduce a framework for training generalized locomotion (GenLoco) controllers for quadrupedal robots. Our framework synthesizes general-purpose locomotion controllers that can be deployed on a large variety of quadrupedal robots with similar morphologies. We present a simple but effective morphology randomization method that procedurally generates a diverse set of simulated robots for training. We show that by training a controller on this large set of simulated robots, our models acquire more general control strategies that can be directly transferred to novel simulated and real-world robots with diverse morphologies, which were not observed during training. (Code and pretrained policies: github.com/HybridRobotics/Gen..., Paper: arxiv.org/abs/2209.05309)

Пікірлер: 2
@royale9985
@royale9985 Жыл бұрын
Amazing work! Question about randomization when training the policies. Are joint torque limits also randomized or are they assumed to be able to use any magnitude of torque? Just curious if the resulting general policy could approach more hand created controllers if more physical constraints were also applied in the random morphology training? Thanks!
@user-yo3zy7pj8q
@user-yo3zy7pj8q 5 ай бұрын
Awesome. I just have a small question though. The mini cheetah using policy trained with mini cheetah fails when deployed in the real robot. Was this failed policy trained without any sim to real methods?(ex dynamics randomization) It just does not seem right that a robot-specific policy trained with appropriate sim to real methods fail entirely
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