ROAIMay 15

Learning Dynamic Pick-and-Place for a Legged Manipulator

arXiv:2605.1571365.9
Predicted impact top 29% in RO · last 90 daysOriginality Incremental advance
AI Analysis

For robotics researchers, this framework advances legged manipulators toward practical dynamic pick-and-place with heavier payloads and extended workspaces, outperforming prior works that handle only lightweight objects with slow, piecewise motions.

This work presents a hierarchical reinforcement learning framework for dynamic pick-and-place tasks using a legged manipulator, achieving an 86.05% success rate in simulation with payloads up to 2.3 kg and a 73.3% success rate in real-world experiments with payloads up to 1.3 kg, enabling concurrent locomotion and manipulation for dynamic execution.

Legged manipulators extend robotic capabilities beyond static manipulation by integrating agile locomotion with versatile arm control. However, achieving precise manipulation while maintaining coordinated locomotion remains a major challenge. This work presents a hierarchical reinforcement learning framework for dynamic pick-and-place tasks using a quadruped equipped with a 6-DOF robotic arm. The framework incorporates an explicit mass estimation module enabling adaptive whole-body control for objects with varying weights. In simulation, the system achieves an 86.05% success rate with payloads up to 2.3 kg. The approach is further validated through real-world experiments across six representative scenarios with controlled variations in object physical properties (size and mass) and task heights. Specifically, within a wide vertical workspace ranging from ground level to 1.1~m-high tabletops, the system demonstrates an average success rate of 73.3% for payloads up to 1.3 kg, with an average execution time of 4.06 s. Unlike prior works that handle lightweight objects and execute pick-and-place motions with slow, piecewise motions, the proposed framework exploits concurrent locomotion and manipulation for dynamic, continuous execution. These results demonstrate the potential of quadrupedal mobile manipulators for adaptive, whole-body pick-and-place with heavier payloads and extended workspaces.

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