Computer Science, UCL, London, United Kingdom.
PLoS One. 2019 Nov 8;14(11):e0223069. doi: 10.1371/journal.pone.0223069. eCollection 2019.
The spectral reflectance function of a surface specifies the fraction of the illumination reflected by it at each wavelength. Jointly with the illumination spectral density, this function determines the apparent colour of the surface. Models for the distribution of spectral reflectance functions in the natural environment are considered. The realism of the models is assessed in terms of the individual reflectance functions they generate, and in terms of the overall distribution of colours which they give rise to. Both realism assessments are made in comparison to empirical datasets. Previously described models (PCA- and fourier-based) of reflectance function statistics are evaluated, as are improved versions; and also a novel model, which synthesizes reflectance functions as a sum of sigmoid functions. Key model features for realism are identified. The new sigmoid-sum model is shown to be the most realistic, generating reflectance functions that are hard to distinguish from real ones, and accounting for the majority of colours found in natural images with the exception of an abundance of vegetation green and sky blue.
表面的光谱反射率函数指定了在每个波长处由其反射的照明的分数。该函数与照明光谱密度一起,决定了表面的表观颜色。考虑了自然环境中光谱反射率函数分布的模型。根据它们生成的个别反射率函数以及它们产生的整体颜色分布,评估模型的逼真度。这两种逼真度评估都是与经验数据集进行比较的。评估了先前描述的(基于 PCA 和傅里叶变换的)反射率函数统计模型的改进版本,以及一种新的模型,它将反射率函数综合为一组 sigmoid 函数。确定了逼真度的关键模型特征。结果表明,新的 sigmoid 函数和模型是最逼真的,生成的反射率函数很难与真实的反射率函数区分开来,并且除了大量的植被绿色和天蓝色外,它还可以解释自然图像中发现的大多数颜色。