ROAISYFeb 16, 2024

Pedipulate: Enabling Manipulation Skills using a Quadruped Robot's Leg

arXiv:2402.10837v158 citationsh-index: 17ICRA
Originality Highly original
AI Analysis

This addresses the need for simpler, more versatile legged robots in applications like maintenance and exploration by reducing mechanical complexity.

The paper tackled the problem of enabling legged robots to manipulate objects without dedicated arms by training a reinforcement learning policy for pedipulation, demonstrating tasks like door opening and load carrying of over 2.0 kg with robustness to disturbances.

Legged robots have the potential to become vital in maintenance, home support, and exploration scenarios. In order to interact with and manipulate their environments, most legged robots are equipped with a dedicated robot arm, which means additional mass and mechanical complexity compared to standard legged robots. In this work, we explore pedipulation - using the legs of a legged robot for manipulation. By training a reinforcement learning policy that tracks position targets for one foot, we enable a dedicated pedipulation controller that is robust to disturbances, has a large workspace through whole-body behaviors, and can reach far-away targets with gait emergence, enabling loco-pedipulation. By deploying our controller on a quadrupedal robot using teleoperation, we demonstrate various real-world tasks such as door opening, sample collection, and pushing obstacles. We demonstrate load carrying of more than 2.0 kg at the foot. Additionally, the controller is robust to interaction forces at the foot, disturbances at the base, and slippery contact surfaces. Videos of the experiments are available at https://sites.google.com/leggedrobotics.com/pedipulate.

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