Learning body models: from humans to humanoids
Matej Hoffmann

TL;DR
This paper explores how biological body models can inform the development of adaptive, self-calibrating humanoid robots through experiments, computational modeling, and validation of multimodal body representations and peripersonal space.
Contribution
It introduces biologically inspired models of body learning, calibration methods without external metrology, and models of peripersonal space for improved robot adaptability and safety.
Findings
Successful self-contact and self-observation calibration methods
Validated models on multiple robot platforms
Enhanced understanding of body representation transfer to robots
Abstract
Humans and animals excel in combining information from multiple sensory modalities, controlling their complex bodies, adapting to growth, failures, or using tools. These capabilities are also highly desirable in robots. They are displayed by machines to some extent. Yet, the artificial creatures are lagging behind. The key foundation is an internal representation of the body that the agent - human, animal, or robot - has developed. The mechanisms of operation of body models in the brain are largely unknown and even less is known about how they are constructed from experience after birth. In collaboration with developmental psychologists, we conducted targeted experiments to understand how infants acquire first "sensorimotor body knowledge". These experiments inform our work in which we construct embodied computational models on humanoid robots that address the mechanisms behind…
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Taxonomy
TopicsSocial Robot Interaction and HRI · Child and Animal Learning Development · Embodied and Extended Cognition
