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Sensorimotor learning for artificial body perception

Authors :
Diez-Valencia, German
Ohashi, Takuya
Lanillos, Pablo
Cheng, Gordon
Publication Year :
2019

Abstract

Artificial self-perception is the machine ability to perceive its own body, i.e., the mastery of modal and intermodal contingencies of performing an action with a specific sensors/actuators body configuration. In other words, the spatio-temporal patterns that relate its sensors (e.g. visual, proprioceptive, tactile, etc.), its actions and its body latent variables are responsible of the distinction between its own body and the rest of the world. This paper describes some of the latest approaches for modelling artificial body self-perception: from Bayesian estimation to deep learning. Results show the potential of these free-model unsupervised or semi-supervised crossmodal/intermodal learning approaches. However, there are still challenges that should be overcome before we achieve artificial multisensory body perception.<br />Comment: Workshop on Crossmodal Learning for Intelligent Robotics. IEEE Int. Conference on Intelligent Robots and Systems (IROS 2018)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1901.09792
Document Type :
Working Paper