单个视图的光照和空间变化的镜面反射率

K. Hara, K. Nishino
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引用次数: 1

摘要

从一组稀疏图像中估计物体表面的照度和反射率是一个重要但固有不适定的问题。如果我们想要解释表面材料属性的空间变化,这个问题就变得更加困难了。在本文中,我们推导了一种新的方法来估计空间变化的镜面反射特性,已知几何形状的表面,以及从仅镜面图像的照明分布,例如,使用偏振来分离反射分量。与以前的工作不同,我们不假设照明是单点光源。我们用球面统计分布来模拟镜面反射,并用其参数的径向基函数来编码空间变化。这使我们能够将空间变化的镜面反射率和照度的同时估计作为一个可靠的概率推理问题,特别是使用cisszar的i -散度度量。为了解决这个问题,我们推导了一个类似于期望最大化的迭代算法。我们在合成场景和真实场景中证明了该方法的有效性。
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Illumination and spatially varying specular reflectance from a single view
Estimating the illumination and the reflectance properties of an object surface from a sparse set of images is an important but inherently ill-posed problem. The problem becomes even harder if we wish to account for the spatial variation of material properties on the surface. In this paper, we derive a novel method for estimating the spatially varying specular reflectance properties, of a surface of known geometry, as well as the illumination distribution from a specular-only image, for instance, captured using polarization to separate reflection components. Unlike previous work, we do not assume the illumination to be a single point light source. We model specular reflection with a spherical statistical distribution and encode the spatial variation with radial basis functions of its parameters. This allows us to formulate the simultaneous estimation of spatially varying specular reflectance and illumination as a sound probabilistic inference problem, in particular, using Csiszar's I-divergence measure. To solve it, we derive an iterative algorithm similar to expectation maximization. We demonstrate the effectiveness of the method on synthetic and real-world scenes.
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