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Classifying Materials from Their Reflectance Properties

机译:从材料的反射特性分类

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We explore the possibility of recognizing the surface material from a single image with unknown illumination, given the shape of the surface. Model-based PCA is used to create a low-dimensional basis to represent the images. Variations in the illumination create manifolds in the space spanned by this basis. These manifolds are learnt using captured illumination maps and the CUReT database. Classification of the material is done by finding the manifold closest to the point representing the image of the material. Testing on synthetic data shows that the problem is hard. The materials form groups where the materials in a group often are mis-classifed as one of the other materials in the group. With a grouping algorithm we find a grouping of the materials in the CUReT database. Tests on images of real materials in natural illumination settings show promising results.
机译:我们探索了在给定表面形状的情况下,从具有未知照明的单个图像中识别表面材料的可能性。基于模型的PCA用于创建低维基础来表示图像。照明的变化在以此为基础的空间中形成了歧管。这些歧管是使用捕获的照明图和CUReT数据库学习的。通过找到最接近代表材料图像的点的歧管来完成材料的分类。对综合数据进行测试表明该问题很难解决。物料形成组,其中一组中的物料经常被误分类为该组中的其他物料之一。通过分组算法,我们可以在CUReT数据库中找到材料的分组。在自然光照条件下对真实材料的图像进行的测试显示出令人鼓舞的结果。

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