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Agile But Safe: Learning Collision-Free High-Speed Legged Locomotion

About

Legged robots navigating cluttered environments must be jointly agile for efficient task execution and safe to avoid collisions with obstacles or humans. Existing studies either develop conservative controllers (< 1.0 m/s) to ensure safety, or focus on agility without considering potentially fatal collisions. This paper introduces Agile But Safe (ABS), a learning-based control framework that enables agile and collision-free locomotion for quadrupedal robots. ABS involves an agile policy to execute agile motor skills amidst obstacles and a recovery policy to prevent failures, collaboratively achieving high-speed and collision-free navigation. The policy switch in ABS is governed by a learned control-theoretic reach-avoid value network, which also guides the recovery policy as an objective function, thereby safeguarding the robot in a closed loop. The training process involves the learning of the agile policy, the reach-avoid value network, the recovery policy, and an exteroception representation network, all in simulation. These trained modules can be directly deployed in the real world with onboard sensing and computation, leading to high-speed and collision-free navigation in confined indoor and outdoor spaces with both static and dynamic obstacles.

Tairan He, Chong Zhang, Wenli Xiao, Guanqi He, Changliu Liu, Guanya Shi• 2024

Related benchmarks

TaskDatasetResultRank
Goal-reaching NavigationSimulation 60° (CW) Goal Sequence
Final Success Rate18
16
Goal-reaching NavigationSimulation 120° (Zigzag) Goal Sequence
Final Success Rate (%)83.2
16
Goal-reaching NavigationSimulation Goal Sequence 90° (CCW)
FR (%)0.4
16
Goal-reaching NavigationSimulation Goal Sequence 150° (Zigzag)
Failure Rate (FR)13.9
16
Obstacle Avoidance NavigationIsaac Gym Navigation Medium
Success Rate75.33
7
Obstacle Avoidance NavigationIsaac Gym Navigation Easy
Success Rate95
7
Obstacle Avoidance NavigationIsaac Gym Navigation Hard
Success Rate (SR)45.33
7
Robot navigationS-Blend Track
Success Rate (SR)80
6
Robot navigationCluttered Room
Success Rate (SR)70
6
Robot navigationDynamic Obstacle
Success Rate60
6
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