Learning and Acting in Peripersonal Space: Moving, Reaching, and Grasping
Jonathan Juett, Benjamin Kuipers

TL;DR
This paper presents a computational model of infant-like sensorimotor learning in peripersonal space, enabling a robot to learn reaching and grasping through intrinsic motivation and exploration.
Contribution
It introduces a novel model of learning peripersonal space and actions like reaching and grasping driven by intrinsic motivation, tested on a physical robot.
Findings
The robot learns safe arm movements and object interactions.
Reaching actions become reliable for bumping and moving objects.
Progress is demonstrated in autonomous sensorimotor learning of grasping.
Abstract
The young infant explores its body, its sensorimotor system, and the immediately accessible parts of its environment, over the course of a few months creating a model of peripersonal space useful for reaching and grasping objects around it. Drawing on constraints from the empirical literature on infant behavior, we present a preliminary computational model of this learning process, implemented and evaluated on a physical robot. The learning agent explores the relationship between the configuration space of the arm, sensing joint angles through proprioception, and its visual perceptions of the hand and grippers. The resulting knowledge is represented as the peripersonal space (PPS) graph, where nodes represent states of the arm, edges represent safe movements, and paths represent safe trajectories from one pose to another. In our model, the learning process is driven by intrinsic…
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Taxonomy
TopicsAction Observation and Synchronization · Cerebral Palsy and Movement Disorders · Child and Animal Learning Development
