Measuring Perceptual Color Differences of Smartphone Photographs
Zhihua Wang, Keshuo Xu, Yang Yang, Jianlei Dong, Shuhang Gu, Lihao Xu,, Yuming Fang, and Kede Ma

TL;DR
This paper introduces a large dataset of perceptual color differences for smartphone photographs and develops a neural network-based metric that outperforms existing measures, improving color difference assessment in complex images.
Contribution
It provides the largest dataset for perceptual color differences in smartphone photography and proposes a novel learnable metric that generalizes previous methods.
Findings
The new metric outperforms 33 existing measures significantly.
It generalizes well to different types of color data.
The dataset and code are publicly available.
Abstract
Measuring perceptual color differences (CDs) is of great importance in modern smartphone photography. Despite the long history, most CD measures have been constrained by psychophysical data of homogeneous color patches or a limited number of simplistic natural photographic images. It is thus questionable whether existing CD measures generalize in the age of smartphone photography characterized by greater content complexities and learning-based image signal processors. In this paper, we put together so far the largest image dataset for perceptual CD assessment, in which the photographic images are 1) captured by six flagship smartphones, 2) altered by Photoshop, 3) post-processed by built-in filters of the smartphones, and 4) reproduced with incorrect color profiles. We then conduct a large-scale psychophysical experiment to gather perceptual CDs of 30,000 image pairs in a carefully…
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Taxonomy
TopicsColor Science and Applications · Image Enhancement Techniques · Visual Attention and Saliency Detection
