Nonlinearities and Adaptation of Color Vision from Sequential Principal Curves Analysis
Valero Laparra, Sandra Jim\'enez, Gustavo Camps-Valls, Jes\'us Malo

TL;DR
This paper introduces a data-driven manifold learning method called Sequential Principal Curves Analysis (SPCA) to explain nonlinear and adaptive features of human color vision directly from realistic natural image data, without relying on predefined models.
Contribution
The study presents SPCA, a novel statistical approach that simultaneously explains nonlinear and adaptive color vision phenomena from natural image data, challenging traditional model-based explanations.
Findings
Color discrimination thresholds emerge from natural data regularities.
Color sensor organization is statistically driven, not based on predefined functional forms.
Color perception may be guided by error minimization rather than information maximization.
Abstract
Mechanisms of human color vision are characterized by two phenomenological aspects: the system is nonlinear and adaptive to changing environments. Conventional attempts to derive these features from statistics use separate arguments for each aspect. The few statistical approaches that do consider both phenomena simultaneously follow parametric formulations based on empirical models. Therefore, it may be argued that the behavior does not come directly from the color statistics but from the convenient functional form adopted. In addition, many times the whole statistical analysis is based on simplified databases that disregard relevant physical effects in the input signal, as for instance by assuming flat Lambertian surfaces. Here we address the simultaneous statistical explanation of (i) the nonlinear behavior of achromatic and chromatic mechanisms in a fixed adaptation state, and (ii)…
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