Thinking With Your Body: Modelling Spatial Biases in Categorization Using a Real Humanoid Robot

A.F. Morse, T. Belpaeme, A. Cangelosi, L.B. Smith

Research output: Contribution to conferencePaperpeer-review

Abstract

This paper presents a model of sensorimotor learning grounded in the sensory streams of a real humanoid robot (the iCub robot). The robot participates in a replication of two developmental psychology experiments, in which it is shown how spatial cues are sufficient for associating linguistic labels with objects. The robot, using auto-associated self-organizing maps connecting is perceptual input and motor control, produces similar performance and results to human participants. This model confirms the validity of a body centric account of the linking of words to objects as sufficient to account for the spatial biases in learning that these experiments expose.
Original languageEnglish
Pages1362-1367
Number of pages6
Publication statusPublished - 2010

Keywords

  • Developmental Robotics
  • Neural Networks
  • Sensorimotor
  • Learning
  • Spatial Bias
  • Category Learning

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