A geometric model of multi-scale orientation preference maps via Gabor functions
Emre Baspinar, Giovanna Citti, Alessandro Sarti

TL;DR
This paper introduces a new geometric model for orientation preference maps in V1, incorporating both orientation and scale features through Gabor functions and fiber bundle interpretation, aligning with neurophysiological data.
Contribution
The paper develops a physiologically motivated model using Gabor functions and fiber bundles to generate orientation maps considering scale, improving upon previous models based on Bargmann transforms.
Findings
Simulation results match neurophysiological data
Model effectively incorporates scale and orientation
Comparison shows improved physiological relevance
Abstract
In this paper we present a new model for the generation of orientation preference maps in the primary visual cortex (V1), considering both orientation and scale features. First we undertake to model the functional architecture of V1 by interpreting it as a principal fiber bundle over the 2-dimensional retinal plane by introducing intrinsic variables orientation and scale. The intrinsic variables constitute a fiber on each point of the retinal plane and the set of receptive profiles of simple cells is located on the fiber. Each receptive profile on the fiber is mathematically interpreted as a rotated Gabor function derived from an uncertainty principle. The visual stimulus is lifted in a 4-dimensional space, characterized by coordinate variables, position, orientation and scale, through a linear filtering of the stimulus with Gabor functions. Orientation preference maps are then obtained…
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