TL;DR
This paper presents a model predictive control framework using learned dynamics models for autonomous mobile manipulation of nonholonomic objects, enabling safe and collision-free handling of objects like walkers and chairs in healthcare settings.
Contribution
It introduces a probabilistic learning method for object dynamics and formulates manipulation planning as a mixed-integer convex optimization problem.
Findings
Successfully manipulated various objects in simulation and real experiments.
Achieved collision-free and accurate object repositioning.
Demonstrated robustness of learned models for safe manipulation.
Abstract
A particular type of assistive robots designed for physical interaction with objects could play an important role assisting with mobility and fall prevention in healthcare facilities. Autonomous mobile manipulation presents a hurdle prior to safely using robots in real life applications. In this article, we introduce a mobile manipulation framework based on model predictive control using learned dynamics models of objects. We focus on the specific problem of manipulating legged objects such as those commonly found in healthcare environments and personal dwellings (e.g. walkers, tables, chairs). We describe a probabilistic method for autonomous learning of an approximate dynamics model for these objects. In this method, we learn dynamic parameters using a small dataset consisting of force and motion data from interactions between the robot and object. Moreover, we account for multiple…
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