Learning to segment self-generated from externally caused optic flow through sensorimotor mismatch circuits.

Journal: Neural networks : the official journal of the International Neural Network Society
PMID:

Abstract

Efficient sensory detection requires the capacity to ignore task-irrelevant information, for example when optic flow patterns created by egomotion need to be disentangled from object perception. To investigate how this is achieved in the visual system, predictive coding with sensorimotor mismatch detection is an attractive starting point. Indeed, experimental evidence for sensorimotor mismatch signals in early visual areas exists, but it is not understood how they are integrated into cortical networks that perform input segmentation and categorization. Our model advances a biologically plausible solution by extending predictive coding models with the ability to distinguish self-generated from externally caused optic flow. We first show that a simple three neuron circuit produces experience-dependent sensorimotor mismatch responses, in agreement with calcium imaging data from mice. This microcircuit is then integrated into a neural network with two generative streams. The motor-to-visual stream consists of parallel microcircuits between motor and visual areas and learns to spatially predict optic flow resulting from self-motion. The second stream bidirectionally connects a motion-selective higher visual area (mHVA) to V1, assigning a crucial role to the abundant feedback connections to V1: the maintenance of a generative model of externally caused optic flow. In the model, area mHVA learns to segment moving objects from the background, and facilitates object categorization. Based on shared neurocomputational principles across species, the model also maps onto primate visual cortex. Our work extends Hebbian predictive coding to sensorimotor settings, in which the agent actively moves - and learns to predict the consequences of its own movements.

Authors

  • Matthias Brucklacher
    Cognitive and Systems Neuroscience, University of Amsterdam, 1098XH Amsterdam, Netherlands. Electronic address: m.m.brucklacher@uva.nl.
  • Giovanni Pezzulo
    Institute of Cognitive Sciences and Technologies, National Research Council of Italy, Via S. Martino della Battaglia 44-00185 Rome, Italy.
  • Francesco Mannella
    Institute of Cognitive Sciences and Technologies, National Research Council, 00196 Rome, Italy.
  • Gaspare Galati
    Brain Imaging Laboratory, Department of Psychology, Sapienza University, 00185 Rome, Italy.
  • Cyriel M A Pennartz
    Swammerdam Institute for Life Sciences, Center for Neuroscience, Faculty of Science, University of Amsterdam, Amsterdam, the Netherlands; Research Priority Program Brain and Cognition, University of Amsterdam, Amsterdam, the Netherlands. Electronic address: c.m.a.pennartz@uva.nl.