A Whole-Body Pose Taxonomy for Loco-Manipulation Tasks
J\'ulia Borr\`as, Tamim Asfour

TL;DR
This paper introduces a comprehensive taxonomy of 46 whole-body poses for humanoid robots, aiding in understanding and classifying balance configurations to improve autonomous loco-manipulation capabilities.
Contribution
It adapts grasping taxonomy principles to humanoid balance, creating a structured classification of poses and motion primitives for multi-contact stability enhancement.
Findings
Identified 46 support poses for humanoid robots.
Applied segmentation techniques to distinguish locomotion and manipulation.
Preliminary results demonstrate pose classification benefits.
Abstract
Exploiting interaction with the environment is a promising and powerful way to enhance stability of humanoid robots and robustness while executing locomotion and manipulation tasks. Recently some works have started to show advances in this direction considering humanoid locomotion with multi-contacts, but to be able to fully develop such abilities in a more autonomous way, we need to first understand and classify the variety of possible poses a humanoid robot can achieve to balance. To this end, we propose the adaptation of a successful idea widely used in the field of robot grasping to the field of humanoid balance with multi-contacts: a whole-body pose taxonomy classifying the set of whole-body robot configurations that use the environment to enhance stability. We have revised criteria of classification used to develop grasping taxonomies, focusing on structuring and simplifying the…
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Taxonomy
TopicsRobotic Locomotion and Control · Robot Manipulation and Learning · Prosthetics and Rehabilitation Robotics
