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Energy-Based Legged Robots Terrain Traversability Modeling via Deep Inverse Reinforcement Learning

Lu Gan, Jessy W. Grizzle, Ryan M. Eustice, Maani Ghaffari

2022IEEE Robotics and Automation Letters40 citationsDOIOpen Access PDF

Abstract

This work reports ondeveloping a deep inverse reinforcement learning method for legged robots terrain traversability modeling that incorporates both exteroceptive and proprioceptive sensory data. Existing works use robot-agnostic exteroceptive environmental features or handcrafted kinematic features; instead, we propose to also learn robot-specific inertial features from proprioceptive sensory data for reward approximation in a single deep neural network. Incorporating the inertial features can improve the model fidelity and provide a reward that depends on the robot’s state during deployment. We train the reward network using the Maximum Entropy Deep Inverse Reinforcement Learning (MEDIRL) algorithm and propose simultaneously minimizing a trajectory ranking loss to deal with the suboptimality of legged robot demonstrations. The demonstrated trajectories are ranked by locomotion energy consumption, in order to learn an energy-aware reward function and a more energy-efficient policy than demonstration. We evaluate our method using a dataset collected by an MIT Mini-Cheetah robot and a Mini-Cheetah simulator. The code is publicly available. <xref ref-type="fn" rid="fn1" xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink"><sup>1</sup></xref>

Topics & Concepts

Artificial intelligenceLegged robotReinforcement learningComputer scienceTerrainRobotInverse kinematicsDeep learningArtificial neural networkSimulationGeographyCartographyRobotic Locomotion and ControlSoil Mechanics and Vehicle DynamicsWildlife-Road Interactions and Conservation
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