Colour and luminance contrasts predict the human detection of natural stimuli in complex visual environments
Author(s) -
Thomas E. White,
Bibiana Rojas,
Johanna Mappes,
Petri Rautiala,
Darrell J. Kemp
Publication year - 2017
Publication title -
biology letters
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.596
H-Index - 110
eISSN - 1744-957X
pISSN - 1744-9561
DOI - 10.1098/rsbl.2017.0375
Subject(s) - psychophysics , luminance , perception , achromatic lens , chromatic scale , hue , visual perception , artificial intelligence , cognitive psychology , contrast (vision) , stimulus (psychology) , color vision , scene statistics , human visual system model , biology , psychometric function , computer science , computer vision , psychology , mathematics , neuroscience , optics , physics , combinatorics , image (mathematics)
Much of what we know about human colour perception has come from psychophysical studies conducted in tightly-controlled laboratory settings. An enduring challenge, however, lies in extrapolating this knowledge to the noisy conditions that characterize our actual visual experience. Here we combine statistical models of visual perception with empirical data to explore how chromatic (hue/saturation) and achromatic (luminant) information underpins the detection and classification of stimuli in a complex forest environment. The data best support a simple linear model of stimulus detection as an additive function of both luminance and saturation contrast. The strength of each predictor is modest yet consistent across gross variation in viewing conditions, which accords with expectation based upon general primate psychophysics. Our findings implicate simple visual cues in the guidance of perception amidst natural noise, and highlight the potential for informing human vision via a fusion between psychophysical modelling and real-world behaviour.
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