Online Body Schema Adaptation through Cost-Sensitive Active Learning
Gon\c{c}alo Cunha, Pedro Vicente, Alexandre Bernardino, Ricardo, Ribeiro, Pl\'inio Moreno

TL;DR
This paper introduces a cost-sensitive active learning method for online estimation of a humanoid robot's body schema, reducing movement and energy use while maintaining accuracy.
Contribution
It proposes a novel movement-efficient active learning approach for online kinematic parameter estimation in humanoid robots.
Findings
Reduces robot movement by about 50% during learning.
Maintains estimation accuracy comparable to standard active learning.
Effectively avoids uninformative configurations through occlusion modeling.
Abstract
Humanoid robots have complex bodies and kinematic chains with several Degrees-of-Freedom (DoF) which are difficult to model. Learning the parameters of a kinematic model can be achieved by observing the position of the robot links during prospective motions and minimising the prediction errors. This work proposes a movement efficient approach for estimating online the body-schema of a humanoid robot arm in the form of Denavit-Hartenberg (DH) parameters. A cost-sensitive active learning approach based on the A-Optimality criterion is used to select optimal joint configurations. The chosen joint configurations simultaneously minimise the error in the estimation of the body schema and minimise the movement between samples. This reduces energy consumption, along with mechanical fatigue and wear, while not compromising the learning accuracy. The work was implemented in a simulation…
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Taxonomy
TopicsRobot Manipulation and Learning · Robotic Locomotion and Control · Robotic Mechanisms and Dynamics
