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MANIPULATION

Learning Multi-Agent Loco-Manipulation for Long-Horizon Quadrupedal Pushing

Yuming Feng, Chuye Hong, Yaru Niu, Shiqi Liu, Yuxiang Yang, Zhao Ding

Year
2025
Citations
4

Abstract

Recently, quadrupedal locomotion has achieved significant success, but their manipulation capabilities, particularly in handling large objects, remain limited, restricting their usefulness in demanding real-world applications such as search and rescue, construction, industrial automation, and room or-ganization. This paper tackles the task of obstacle-aware, long-horizon pushing by multiple quadrupedal robots. We propose a hierarchical multi-agent reinforcement learning framework with three levels of control. The high-level controller integrates an RRT planner and a centralized adaptive policy to generate subgoals, while the mid-level controller uses a decentralized goal-conditioned policy to guide the robots toward these sub-goals. A pre-trained low-level locomotion policy executes the movement commands. We evaluate our method against several baselines in simulation, demonstrating significant improvements over baseline approaches, with 36.0% higher success rates and 24.5% reduction in completion time than the best baseline. Our framework successfully enables long-horizon, obstacle-aware manipulation tasks like Push-Cuboid and Push-Ton Gol robots in the real world.

Keywords

QuadrupedalismComputer scienceHorizonArtificial intelligenceControl theory (sociology)MathematicsGeologyControl (management)Geometry

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