Learning the Vector Coding of Egocentric Boundary Cells from Visual Data

Abstract

The use of spatial maps to navigate through the world requires a complex ongoing transformation of egocentric views of the environment into position within the allocentric map. Recent research has discovered neurons in retrosplenial cortex and other structures that could mediate the transformation from egocentric views to allocentric views. These egocentric boundary cells respond to the egocentric direction and distance of barriers relative to an animal's point of view. This egocentric coding based on the visual features of barriers would seem to require complex dynamics of cortical interactions. However, computational models presented here show that egocentric boundary cells can be generated with a remarkably simple synaptic learning rule that forms a sparse representation of visual input as an animal explores the environment. Simulation of this simple sparse synaptic modification generates a population of egocentric boundary cells with distributions of direction and distance coding that strikingly resemble those observed within the retrosplenial cortex. Furthermore, some egocentric boundary cells learnt by the model can still function in new environments without retraining. This provides a framework for understanding the properties of neuronal populations in the retrosplenial cortex that may be essential for interfacing egocentric sensory information with allocentric spatial maps of the world formed by neurons in downstream areas, including the grid cells in entorhinal cortex and place cells in the hippocampus.

Document Details

Document Type
Pub Defense Publication
Publication Date
Jun 07, 2023
Source ID
10.1523/jneurosci.1071-22.2023

Entities

People

  • Andrew S Alexander
  • Anthony N. Burkitt
  • Michael Hasselmo
  • Simon Williams
  • Yanbo Lian

Organizations

  • Defence Science and Technology Group
  • National Institute of Mental Health
  • National Institute of Neurological Disorders and Stroke
  • Office of Naval Research

Tags

Fields of Study

  • Biology

Readers

  • Computer Vision.
  • Neuroscience