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Which piece resembles your color perception for #theDress image?

Date:
March 23, 2018
Source:
Tohoku University
Summary:
A novel algorithm to simulate the color appearance of objects under chromatic illuminants has been proposed. "#theDress image" refers to a photo that went viral on the Internet in February 2015, when viewers disagreed over the colors seen in the dress. The discussion revealed differences in human color perception and prompted studies in vision science.
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A novel algorithm to simulate the color appearance of objects under chromatic illuminants has been proposed by Ichiro Kuriki of Tohoku University. The figure shows the result of applying this algorithm to #theDress image.

"#theDress image" refers to a photo that went viral on the Internet in February 2015, when viewers disagreed over the colors seen in the dress. The discussion revealed differences in human color perception and prompted studies in vision science.

How do we perceive colors? The details are not yet fully understood even for colors that we easily experience as we open our eyes. This is still one of the fundamental questions about our vision. Objects reflect light from an illuminant on their surfaces. The reflected light yields visual images after entering the eye. The light that falls on the retina changes with an illuminant. However, we scarcely perceive object color shifts. Although slight color shifts remain, the human visual system is able to compensate for illuminant changes.

Several groups have proposed algorithms to simulate the shifts in color appearance, but problems remain. One problem concerns achromatic points. Achromatic points are a series of rays that appear colorless (white to black through gray) under a given illuminant, and they work as the origin to evaluate hue and vividness. Therefore, an achromatic point is a keystone in the color appearance simulations, but previous models by other groups proposed complicated formulas to simulate the achromatic points.

Kuriki previously discovered a simple method to approximate these achromatic points under a chromatic illuminant. By combining this with a lightness adjustment, a simple algorithm was proposed to simulate the color appearance under a colored illuminant. The algorithm was applied to #theDress image, widely acknowledged for huge individual differences in color appearance.

Such variability is known to originate from differences in the estimated color and intensity of the illuminant falling on the dress. For example, if a viewer assumed a bluish dim illuminant, the white/gold would be perceived. The color and intensity of illuminant was systematically varied and successfully simulated differences in color appearance of #theDress under various assumptions; one of these pieces may resemble what you perceive from #theDress image.

The method is also capable of preserving the wider color range of the image at a darker part, even when adjusted for the lightness to simulate a dimmer situation. This is advantageous for high dynamic range displays, which recently became popular as commercial products like OLED screens.


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Materials provided by Tohoku University. Note: Content may be edited for style and length.


Journal Reference:

  1. Ichiro Kuriki. A Novel Method of Color Appearance Simulation Using Achromatic Point Locus With Lightness Dependence. i-Perception, 2018; 9 (2): 204166951876173 DOI: 10.1177/2041669518761731

Cite This Page:

Tohoku University. "Which piece resembles your color perception for #theDress image?." ScienceDaily. ScienceDaily, 23 March 2018. <www.sciencedaily.com/releases/2018/03/180323104836.htm>.
Tohoku University. (2018, March 23). Which piece resembles your color perception for #theDress image?. ScienceDaily. Retrieved April 27, 2024 from www.sciencedaily.com/releases/2018/03/180323104836.htm
Tohoku University. "Which piece resembles your color perception for #theDress image?." ScienceDaily. www.sciencedaily.com/releases/2018/03/180323104836.htm (accessed April 27, 2024).

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