Primary visual cortex contributes to color constancy by predicting rather than discounting the illuminant: evidence from a computational study
Shaobing Gao, Yongjie Li

TL;DR
This study uses a computational model of the primary visual cortex to show that double-opponent neurons contribute to color constancy by predicting the illuminant, challenging previous theories that they discount it.
Contribution
The paper provides computational evidence that V1 double-opponent neurons predict the illuminant for color constancy, contradicting the common hypothesis of discounting.
Findings
DO neurons outperform simple cells in illuminant prediction
V1 receptive fields resemble those of recorded V1 neurons
DO cells encode the illuminant rather than discount it
Abstract
Color constancy (CC) is an important ability of the human visual system to stably perceive the colors of objects despite considerable changes in the color of the light illuminating them. While increasing evidence from the field of neuroscience supports that multiple levels of the visual system contribute to the realization of CC, how the primary visual cortex (V1) plays role in CC is not fully resolved. In specific, double-opponent (DO) neurons in V1 have been thought to contribute to realizing a degree of CC, but the computational mechanism is not clear. We build an electrophysiologically based V1 neural model to learn the color of the light source from a natural image dataset with the ground truth illuminants as the labels. Based on the qualitative and quantitative analysis of the responsive properties of the learned model neurons, we found that both the spatial structures and color…
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Taxonomy
TopicsColor perception and design · Color Science and Applications · Visual perception and processing mechanisms
