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Learning low-level vision

机译:学习低级视觉

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摘要

We describe a learning-based method for low-level vision problems-estimating scenes from images. We generate a synthetic world of scenes and their corresponding rendered images, modeling their relationships with a Markov network. Bayesian belief propagation allows us to efficiently find a local maximum of the posterior probability for the scene, given an image. We call this approach VISTA-Vision by Image/Scene TrAining. We apply VISTA to the "super-resolution" problem (estimating high frequency details from a low-resolution image), showing good results. To illustrate the potential breadth of the technique, we also apply it in two other problem domains, both simplified. We learn to distinguish shading from reflectance variations in a single image under particular lighting conditions. For the motion estimation problem in a "blobs world", we show figure/ground discrimination, solution of the aperture problem, and filling-in arising from application of the same probabilistic machinery. [References: 50]
机译:我们描述了一种基于学习的方法,用于从图像估计场景的低级视觉问题。我们生成场景及其对应渲染图像的合成世界,并使用马尔可夫网络对它们之间的关系进行建模。贝叶斯信念传播使我们能够有效地找到给定图像的场景后验概率的局部最大值。我们称这种方法为VISTA-Vision by Image / Scene Training。我们将VISTA应用于“超分辨率”问题(从低分辨率图像估计高频细节),显示出良好的效果。为了说明该技术的潜在广度,我们还将其应用于其他两个已简化的问题域。我们学会了在特定照明条件下,将阴影与单个图像的反射率变化区分开。对于“斑点世界”中的运动估计问题,我们显示了图形/地面辨别力,孔径问题的解决方案以及由于使用相同概率机器而引起的填充。 [参考:50]

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