ColorSense: A Study on Color Vision in Machine Visual Recognition
Ming-Chang Chiu, Yingfei Wang, Derrick Eui Gyu Kim, Pin-Yu Chen,, Xuezhe Ma

TL;DR
This paper introduces ColorSense, a large dataset with color annotations to study the impact of color vision on machine perception, revealing significant biases and the need for improved evaluation methods.
Contribution
We curated a new dataset, ColorSense, with extensive color annotations, and systematically analyzed how color vision influences machine perception performance across models and conditions.
Findings
Color discrimination level significantly affects model performance.
Object recognition is biased by color, especially in high-stakes scenarios.
Data augmentation offers limited mitigation for color bias.
Abstract
Color vision is essential for human visual perception, but its impact on machine perception is still underexplored. There has been an intensified demand for understanding its role in machine perception for safety-critical tasks such as assistive driving and surgery but lacking suitable datasets. To fill this gap, we curate multipurpose datasets ColorSense, by collecting 110,000 non-trivial human annotations of foreground and background color labels from popular visual recognition benchmarks. To investigate the impact of color vision on machine perception, we assign each image a color discrimination level based on its dominant foreground and background colors and use it to study the impact of color vision on machine perception. We validate the use of our datasets by demonstrating that the level of color discrimination has a dominating effect on the performance of mainstream machine…
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Taxonomy
TopicsVisual Attention and Saliency Detection · CCD and CMOS Imaging Sensors · Visual perception and processing mechanisms
MethodsTest
