| Literature DB >> 23409103 |
Natalia L Komarova1, Kimberly A Jameson.
Abstract
The system for colorimetry adopted by the Commission Internationale de l'Eclairage (CIE) in 1931, along with its subsequent improvements, represents a family of light mixture models that has served well for many decades for stimulus specification and reproduction when highly controlled color standards are important. Still, with regard to color appearance many perceptual and cognitive factors are known to contribute to color similarity, and, in general, to all cognitive judgments of color. Using experimentally obtained odd-one-out triad similarity judgments from 52 observers, we demonstrate that CIE-based models can explain a good portion (but not all) of the color similarity data. Color difference quantified by CIELAB ΔE explained behavior at levels of 81% (across all colors), 79% (across red colors), and 66% (across blue colors). We show that the unexplained variation cannot be ascribed to inter- or intra-individual variations among the observers, and points to the presence of additional factors shared by the majority of responders. Based on this, we create a quantitative model of a lexicographic semiorder type, which shows how different perceptual and cognitive influences can trade-off when making color similarity judgments. We show that by incorporating additional influences related to categorical and lightness and saturation factors, the model explains more of the triad similarity behavior, namely, 91% (all colors), 90% (reds), and 87% (blues). We conclude that distance in a CIE model is but the first of several layers in a hierarchy of higher-order cognitive influences that shape color triad choices. We further discuss additional mitigating influences outside the scope of CIE modeling, which can be incorporated in this framework, including well-known influences from language, stimulus set effects, and color preference bias. We also discuss universal and cultural aspects of the model as well as non-uniformity of the color space with respect to different cultural biases.Entities:
Mesh:
Year: 2013 PMID: 23409103 PMCID: PMC3569434 DOI: 10.1371/journal.pone.0055986
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Figure 1The category (a–d) and lightness-saturation (e,f) biases in triad choices.
(a–d): A triad (A,B,C) is represented as a triangle in a CIE space. In the absence of categorical and other biases, stimulus A is the most likely choice. In the presence of categorical biases, the choice might shift. Different categories are denoted by different background shades, and the most likely choice is marked by a star. (a) All stimuli belong to the same category; A remains the most likely choice. (b) All three stimuli belong to different categories; the choice remains A.(c) Stimulus A belongs to a different category than B and C; the choice remains A. (d) Stimulus C belongs to a different category from A and B; the choice might shift from A to C. (e,f): The same triad projected into the lightness-saturation space (a schematic). (e) Stimulus A is the darkest and most saturated color; the choice might shift from A to C. (f) Stimulus A is not simultaneously the darkest and most saturated color; the choice remains A
Figure 2Optimal category choices in the three experimental conditions, global (a), red (b) and blue (c).
The 21 stimuli in each condition are plotted on the a*b* plane (please note the scale difference among the three conditions). The color stimuli are presented by colored dots that approximate the colors of the stimuli. The categories are separated by radial dashed lines.
The number of mismatches produced by different models (equations (1), (2), and (3), as well as the null model and lightness-saturation bias) for the global, red, and blue conditions.
| Global | Red | Blue | |
| Null, eq.(1) | 13 | 15 | 24 |
| Null+category bias, eq.(2) | 8 | 7 | 14 |
| Null+category+ls bias, eq.(3) | 6 | 7 | 9 |
| Null+ls bias | 12 | 15 | 11 |