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Autori principali: Marticorena, Nicolas, Fischer, Tobias, Haviland, Jesse, Suenderhauf, Niko
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.16206
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author Marticorena, Nicolas
Fischer, Tobias
Haviland, Jesse
Suenderhauf, Niko
author_facet Marticorena, Nicolas
Fischer, Tobias
Haviland, Jesse
Suenderhauf, Niko
contents Mobile manipulator robots operating in complex domestic and industrial environments must effectively coordinate their base and arm motions while avoiding obstacles. While current reactive control methods gracefully achieve this coordination, they rely on simplified and idealised geometric representations of the environment to avoid collisions. This limits their performance in cluttered environments. To address this problem, we introduce RMMI, a reactive control framework that leverages the ability of neural Signed Distance Fields (SDFs) to provide a continuous and differentiable representation of the environment's geometry. RMMI formulates a quadratic program that optimises jointly for robot base and arm motion, maximises the manipulability, and avoids collisions through a set of inequality constraints. These constraints are constructed by querying the SDF for the distance and direction to the closest obstacle for a large number of sampling points on the robot. We evaluate RMMI both in simulation and in a set of real-world experiments. For reaching in cluttered environments, we observe a 25% increase in success rate. For additional details, code, and experiment videos, please visit https://rmmi.github.io/.
format Preprint
id arxiv_https___arxiv_org_abs_2408_16206
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle RMMI: Reactive Mobile Manipulation using an Implicit Neural Map
Marticorena, Nicolas
Fischer, Tobias
Haviland, Jesse
Suenderhauf, Niko
Robotics
Mobile manipulator robots operating in complex domestic and industrial environments must effectively coordinate their base and arm motions while avoiding obstacles. While current reactive control methods gracefully achieve this coordination, they rely on simplified and idealised geometric representations of the environment to avoid collisions. This limits their performance in cluttered environments. To address this problem, we introduce RMMI, a reactive control framework that leverages the ability of neural Signed Distance Fields (SDFs) to provide a continuous and differentiable representation of the environment's geometry. RMMI formulates a quadratic program that optimises jointly for robot base and arm motion, maximises the manipulability, and avoids collisions through a set of inequality constraints. These constraints are constructed by querying the SDF for the distance and direction to the closest obstacle for a large number of sampling points on the robot. We evaluate RMMI both in simulation and in a set of real-world experiments. For reaching in cluttered environments, we observe a 25% increase in success rate. For additional details, code, and experiment videos, please visit https://rmmi.github.io/.
title RMMI: Reactive Mobile Manipulation using an Implicit Neural Map
topic Robotics
url https://arxiv.org/abs/2408.16206