Statistical Characterization of Surface Reflectance

V. Havran, M. Sbert
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引用次数: 2

Abstract

The classification of surface reflectance functions as diffuse, specular, and glossy has been introduced by Heckbert more than two decades ago. Many rendering algorithms are dependent on such a classification, as different kinds of light transport will be handled by specialized methods, for example caustics require specular bounce or refraction. Due to the increasing wealth of surface reflectance models including those based on measured data, it has not been possible to keep such a characterization simple. Each surface reflectance model is mostly handled separately, or alternatively, the rendering algorithm restricts itself to the use of some subset of reflectance models. We suggest a characterization for arbitrary surface reflectance representation by standard statistical tools, namely normalized variance known as Squared-Coefficient-of-Variation (SCV). We show by videos that there is even a weak perceptual correspondence with the proposed reflectance characterization, when we use monochromatic surface reflectance and the images are normalized so they have the unit albedo.
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表面反射率的统计特性
表面反射率函数的分类是漫反射、镜面反射和光滑反射,这是Heckbert在二十多年前提出的。许多渲染算法依赖于这样的分类,因为不同种类的光传输将由专门的方法处理,例如焦散需要镜面反射或折射。由于地表反射率模型(包括基于测量数据的模型)越来越丰富,因此不可能保持这种表征的简单性。每个表面反射模型大多是单独处理的,或者,渲染算法限制自己使用一些反射模型的子集。我们建议使用标准统计工具,即称为平方变异系数(SCV)的归一化方差来表征任意表面反射率表示。我们通过视频显示,当我们使用单色表面反射率并将图像归一化以使其具有单位反照率时,甚至与所提出的反射率表征存在微弱的感知对应关系。
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