In this talk I will propose that the neocortex learns models of objects using the same methods that the entorhinal cortex uses to map environments. I will propose that each cortical column contains cells that are equivalent to grid cells. These cells represent the location of sensor patches relative to objects in the world. As we move our sensors, the location of the sensor is paired with sensory input to learn the structure of objects. I will explore the evidence for this hypothesis, propose specific cellular mechanisms that the hypothesis requires, and suggest how the hypothesis could be tested.

“A Theory of How Columns in the Neocortex Enable Learning the Structure of the World”; Hawkins, Ahmad, Cui; 2017
“Place Cells, Grid Cells, and the Brain’s Spatial Representation System”; Moser, Kropff, Moser; 2008
“Evidence for grid cells in a human memory network”; Doeller, Barry, Burgess; 2010

Video Recording