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Whitened Expectation Propagation: Non-Lambertian Shape from Shading and Shadow

机译:美白预期传播:来自阴影和阴影的非朗伯形状

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For problems over continuous random variables, MRFs with large cliques pose a challenge in probabilistic inference. Difficulties in performing optimization efficiently have limited the probabilistic models explored in computer vision and other fields. One inference technique that handles large cliques well is Expectation Propagation. EP offers run times independent of clique size, which instead depend only on the rank, or intrinsic dimensionality, of potentials. This property would be highly advantageous in computer vision. Unfortunately, for grid-shaped models common in vision, traditional Gaussian EP requires quadratic space and cubic time in the number of pixels. Here, we propose a variation of EP that exploits regularities in natural scene statistics to achieve run times that are linear in both number of pixels and clique size. We test these methods on shape from shading, and we demonstrate strong performance not only for Lambertian surfaces, but also on arbitrary surface reflectance and lighting arrangements, which requires highly non-Gaussian potentials. Finally, we use large, non-local cliques to exploit cast shadow, which is traditionally ignored in shape from shading.
机译:对于连续随机变量上的问题,具有大集团的MRF在概率推断方面提出了挑战。有效执行优化的困难限制了在计算机视觉和其他领域中探索的概率模型。很好地处理大型集团的一种推断技术是期望传播。 EP提供的运行时间与集团规模无关,而集团规模仅取决于电势的等级或内在维数。该特性在计算机视觉中将是非常有利的。不幸的是,对于视觉中常见的网格状模型,传统的高斯EP要求像素数量为平方空间和立方时间。在这里,我们提出了一种EP的变体,它利用自然场景统计数据中的规律性来实现在像素数和团大小上都是线性的运行时间。我们从阴影中测试了这些方法的形状,并且不仅在朗伯曲面上表现出了出色的性能,而且还在任意表面反射率和照明布置(这需要高度非高斯电势)上展示了出色的性能。最后,我们使用大型的非本地集团来利用投射阴影,而阴影通常在形状上会被忽略。

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