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A practical framework to analyze variation in animal colors using visual models

机译:使用视觉模型分析动物颜色变化的实用框架

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To study biologically relevant variation in visual signals, these need to be assessed in relation to the sensory abilities of receivers. For the study of colors, reflectance spectrometry has been the method of choice, but analyses of reflectance spectra present challenges that hamper our understanding of color variation. Among these are computing meaningful color variables and interpreting their biological relevance. Here, we suggest how to overcome the limitations of commonly used approaches. We describe how to use psychophysical visual models to assess chromatic variation in the visual space of animals. This approach consists of 1) obtaining cone quantum catches from reflectance spectra, 2) transforming these into visual space coordinates where Euclidean distances reflect perceptual distances, 3) summarizing variation in visual space using principal component analysis (PCA) maintaining original perceptual units, and 4) interpreting the axes of chromatic variation (PC) based on their loadings and relative and absolute levels of chromatic variation. We illustrate this approach by comparing it to traditional color indices (hue and saturation) and PCA computed directly on reflectance spectra, using 2 examples: 1) determining the biological relevance of correlations between bill coloration and male quality in mallards and 2) assessing the success of experimental color manipulations in blue tits. In both cases, re-analyzing the data suggests different interpretations. This approach provides a simple way of objectively summarizing chromatic variation and interpreting the magnitude of biologically relevant effects. We provide R scripts to carry out computations and recommendations on how to report results to make data comparable between studies.
机译:为了研究视觉信号中生物学相关的变化,需要根据接收者的感觉能力来评估这些变化。对于颜色的研究,反射光谱法已成为首选方法,但是对反射光谱的分析提出了挑战,阻碍了我们对颜色变化的理解。其中包括计算有意义的颜色变量并解释其生物学相关性。在这里,我们建议如何克服常用方法的局限性。我们描述了如何使用心理物理视觉模型评估动物视觉空间中的色度变化。该方法包括:1)从反射光谱中获得锥量子捕获,2)将其转换为视觉空间坐标,其中欧几里得距离反映感知距离,3)使用保持原始感知单位的主成分分析(PCA)总结视觉空间中的变化,以及4 )根据色散(PC)的负载以及色变的相对和绝对水平来解释它们。我们通过将其与传统颜色指数(色相和饱和度)和直接在反射光谱上计算的PCA进行比较来说明这种方法,并使用两个示例:1)确定绿头野鸭钞票颜色和雄性品质之间相关性的生物学相关性,以及2)评估成功蓝山雀中的实验性色彩操作。在这两种情况下,重新分析数据均会得出不同的解释。这种方法提供了一种简单的方法,可以客观地总结色差并解释生物学相关效应的大小。我们提供R脚本来进行计算并就如何报告结果提出建议,以使研究之间的数据具有可比性。

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