A color-difference formula for evaluating color pairs with no separation -- $\Delta E_{NS}$
Fereshteh Mirjalili, Ming Ronnier Luo, Guihua Cui, and Jan Morovic

TL;DR
This paper introduces a new color-difference formula, dENS, tailored for evaluating pairs of color stimuli with no separation, addressing a gap in existing formulas designed for separated pairs, and demonstrates its effectiveness through experimental validation.
Contribution
A novel color-difference formula, dENS, specifically designed for no-separation conditions, extending the applicability of color difference evaluation methods.
Findings
The new formula accurately describes the separation effect in no-separation color pairs.
Color differences less than 9.1 CIEDE2000 units increase perceived difference with larger lightness differences.
Color differences greater than 9.1 units show an opposite trend, with perceived differences decreasing.
Abstract
All color-difference formulas are developed to evaluate color differences for pairs of stimuli with hair-line separation. In printing applications, however, color differences are frequently judged between a pair of samples with no-separation because they are printed adjacent on the same piece of paper. A new formula, dENS has been developed for pairs of stimuli with no-separation (NS). An experiment was conducted to investigate the effect of different color-difference magnitudes using sample pairs with NS. 1,012 printed pairs with NS were prepared around 11 CIE recommended color centers. The pairs, representing four color-difference magnitudes of 1, 2, 4 and 8 CIELAB units were visually evaluated by a panel of 19 observers using the gray-scale method. Comparison of the present data based on pairs with NS, and previously generated data using pairs with hair-line separation, showed a…
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