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Inwariant descriptors for intrinsic reflectance optimization

机译:用于内在反射率优化的inariant描述符

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Intrinsic image decomposition aims to factorize an image into albedo (reflectance) and shading (illumination) sub-components. Being ill posed and under-constrained, it is a very challenging computer vision problem. There are infinite pairs of reflectance and shading images that can reconstruct the same input. To address the problem, Intrinsic Images in the Wild by Bell et al. provides an optimization framework based on a dense conditional random field (CRF) formulation that considers long-range material relations. We improve upon their model by introducing illumination invariant image descriptors: color ratios. The color ratios and the intrinsic reflectance are both invariant to illumination and thus are highly correlated. Through detailed experiments, we provide ways to inject the color ratios into the dense CRF optimization. Our approach is physics based and learning free and leads to more accurate and robust reflectance decompositions. (c) 2021 Optical Society of America
机译:内在图像分解旨在将图像分解为反照率(反射率)和阴影(照明)子组件。由于不适定和欠约束,这是一个非常具有挑战性的计算机视觉问题。有无数对反射和着色图像可以重建相同的输入。为了解决这个问题,Bell等人的《野外的内在图像》提供了一个基于密集条件随机场(CRF)公式的优化框架,该公式考虑了长程物质关系。我们通过引入光照不变的图像描述符:颜色比率来改进他们的模型。颜色比率和固有反射率都对照明不变性,因此高度相关。通过详细的实验,我们提供了将颜色比例注入到稠密CRF优化中的方法。我们的方法基于物理,无需学习,可以实现更精确、更稳健的反射分解。(2021)美国光学学会

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