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Optimizing colormaps with consideration for color vision deficiency to enable accurate interpretation of scientific data

机译:考虑色觉不足而优化色图以准确解释科学数据

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摘要

Color vision deficiency (CVD) affects more than 4% of the population and leads to a different visual perception of colors. Though this has been known for decades, colormaps with many colors across the visual spectra are often used to represent data, leading to the potential for misinterpretation or difficulty with interpretation by someone with this deficiency. Until the creation of the module presented here, there were no colormaps mathematically optimized for CVD using modern color appearance models. While there have been some attempts to make aesthetically pleasing or subjectively tolerable colormaps for those with CVD, our goal was to make optimized colormaps for the most accurate perception of scientific data by as many viewers as possible. We developed a Python module, cmaputil, to create CVD-optimized colormaps, which imports colormaps and modifies them to be perceptually uniform in CVD-safe colorspace while linearizing and maximizing the brightness range. The module is made available to the science community to enable others to easily create their own CVD-optimized colormaps. Here, we present an example CVD-optimized colormap created with this module that is optimized for viewing by those without a CVD as well as those with red-green colorblindness. This colormap, cividis, enables nearly-identical visual-data interpretation to both groups, is perceptually uniform in hue and brightness, and increases in brightness linearly.
机译:色觉不足(CVD)会影响超过4%的人口,并导致对颜色的不同视觉感知。尽管这已经知道了几十年了,但通常使用跨整个光谱的多种颜色的色图来表示数据,从而导致具有这种缺陷的人可能会误解或难以解释。在创建此处介绍的模块之前,还没有使用现代色彩外观模型对CVD进行数学优化的色图。尽管已经进行了一些尝试,以使具有CVD的人在美学上令人愉悦或主观上可以忍受,但我们的目标是制作尽可能多的观看者最优化的色图,以最准确地感知科学数据。我们开发了一个Python模块cmaputil来创建CVD优化的色图,该色图可以导入色图并将其修改为在CVD安全色空间中感知均匀,同时线性化和最大化亮度范围。该模块可供科学界使用,以使其他人可以轻松创建自己的CVD优化的色图。在这里,我们提供了一个使用此模块创建的CVD优化的颜色图示例,该图针对没有CVD的人以及有红绿色色盲的人进行了优化。此色彩图cividis能够对两组进行几乎相同的视觉数据解释,色相和亮度在感知上是一致的,并且亮度线性增加。

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