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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Recovering Intrinsic Images from a Single Image
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Recovering Intrinsic Images from a Single Image

机译:从单个图像恢复内在图像

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摘要

Interpreting real-world images requires the ability distinguish the different characteristics of the scene that lead to its final appearance. Two of the most important of these characteristics are the shading and reflectance of each point in the scene. We present an algorithm that uses multiple cues to recover shading and reflectance intrinsic images from a single image. Using both color information and a classifier trained to recognize gray-scale patterns, given the lighting direction, each image derivative is classified as being caused by shading or a change in the surface's reflectance. The classifiers gather local evidence about the surface's form and color, which is then propagated using the Generalized Belief Propagation algorithm. The propagation step disambiguates areas of the image where the correct classification is not clear from local evidence. We use real-world images to demonstrate results and show how each component of the system affects the results.
机译:解释真实世界的图像需要能够区分导致场景最终出现的场景的不同特征。这些特性中最重要的两个是场景中每个点的阴影和反射率。我们提出了一种算法,该算法使用多个提示从单个图像中恢复阴影和反射本征图像。在给定照明方向的情况下,使用颜色信息和经过训练可识别灰度图案的分类器,将每个图像导数归类为由阴影或表面反射率的变化引起。分类器收集有关表面形状和颜色的局部证据,然后使用广义信念传播算法进行传播。传播步骤消除了从本地证据中看不到正确分类的图像区域的歧义。我们使用真实世界的图像来演示结果,并显示系统的每个组件如何影响结果。

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