Information Flow in Biological Networks for Color Vision
Jesus Malo

TL;DR
This paper analyzes biological color vision networks to determine how they reduce redundancy and transfer information, confirming the Efficient Coding Hypothesis and highlighting the importance of opponent channels and nonlinearities.
Contribution
It introduces new data and statistical tools to evaluate information transfer in color vision models, confirming the role of opponent channels and nonlinearities in efficient coding.
Findings
Opponent channels and nonlinearities are key for information gain.
Chromatic adaptation plays a lesser role in information transfer.
Efficient Coding Hypothesis is supported in current models.
Abstract
Color Appearance Models are biological networks that consist of a cascade of linear+nonlinear layers that modify the linear measurements at the retinal photo-receptors leading to an internal (nonlinear) representation of color that correlates with psychophysical experience. The basic layers of these networks include: (1) chromatic adaptation (normalization of the mean and covariance of the color manifold), (2) change to opponent color channels (PCA-like rotation in the color space), and (3) saturating nonlinearities to get perceptually Euclidean color representations (similar to dimensionwise equalization). The Efficient Coding Hypothesis argues that these transforms should emerge from information-theoretic goals. In case this hypothesis holds in color vision, the question is, what is the coding gain due to the different layers of the color appearance networks? In this work, a…
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Taxonomy
TopicsVisual perception and processing mechanisms
