颜色差异的深度度量学习

Fedor Zolotarev, A. Kaarna
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引用次数: 1

摘要

为了定义颜色空间和颜色距离度量,已经进行了许多尝试,这些尝试与人类的颜色视觉非常相似。均匀性一直是主要的挑战,人类的视觉系统对一些颜色更敏感,而对另一些颜色不太敏感。理想的度量标准给出的距离应该与人类视觉系统看到的色差相匹配。本研究试图利用光谱数据和可分辨颜色的可用信息来定义这样一个度量。在度量学习中使用深度神经网络对颜色空间和度量进行建模。然后根据标准CIEDE2000度量测试生成的度量。dnn还用于将光谱数据投影到新的色彩空间。结果表明,与CIEDE2000度量相比,使用欧几里得度量的新颜色空间在感知上更加均匀。新的度量标准可以更好地理解人类视觉系统和测量颜色差异。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Metric Learning for Color Differences
Numerous attempts have been made to define a color space and a color distance metric that would closely resemble the human color vision. The uniformity has been the main challenge, the human vision system is more sensitive to some colors while less sensitive to others. A distance given by an ideal metric would match the color difference seen by the human vision system. This study attempts to define such a metric utilizing the spectral data and the available information on the distinguishable colors. Deep neural networks are used in metric learning for modeling the color space and the metric. The resulting metric is then tested against the standard CIEDE2000 metric. DNNs are also used to project spectral data onto a new color space. The results indicate that the new color space with the Euclidean metric is more perceptually uniform than the standard LAB color space with the CIEDE2000 metric. The new metric enables better understanding about the human vision system and measuring the color differences.
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