The researchers propose a Multi-Brain Collaborative Control (MBC) system that combines the concepts of Multi-Agent Reinforcement Learning (MARL) and introduces collaboration between a Blind Policy and a Perceptive Policy for quadruped robot locomotion.
The Blind Policy relies on proprioceptive information and preset algorithms, suitable for known and structured environments but lacking adaptability in complex or unknown environments. The Perceptive Policy uses visual sensors to obtain detailed environmental information, allowing the robot to adapt to complex terrains, but its effectiveness is limited under occluded conditions or when perception fails.
The MBC system aims to address these challenges by enabling the Blind Policy and Perceptive Policy to collaborate and make decisions collectively. This approach enhances the robot's decision-making and adaptability in complex environments, particularly when the perceptual system is impaired or observational data is incomplete.
The key highlights of the research include:
The researchers conducted extensive simulations and real-world experiments to validate the effectiveness of their approach, demonstrating the quadruped robot's ability to navigate challenging terrains, including stairs, gaps, and pillars, even when the perception system is impaired.
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by Hang Liu, Yi... um arxiv.org 09-26-2024
https://arxiv.org/pdf/2409.16460.pdfTiefere Fragen