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SUB-PIXEL BAYESIAN ESTIMATION OF ALBEDO AND HEIGHT

机译:次像素贝叶斯估计的高度和高度

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Given a set of low resolution camera images of a Lambertian surface, it is possible to reconstruct high resolution luminance and height information, when the relative displacements of the image frames are known. We have proposed iterative algorithms for recovering high resolution albedo with the knowledge of high resolution height and vice versa. The problem of surface reconstruction has been tackled in a Bayesian framework and has been formulated as one of minimizing an error function. Markov Random Fields (MRF) have been employed to characterize the a priori constraints on the solution space. As for the surface height, we have attempted a direct computation without refering to surface orientations, while increasing the resolution by camera jittering. [References: 36]
机译:给定朗伯表面的一组低分辨率相机图像,当图像帧的相对位移已知时,可以重建高分辨率亮度和高度信息。我们已经提出了一种迭代算法,该算法可利用高分辨率高度的知识来恢复高分辨率反照率,反之亦然。表面重建的问题已经在贝叶斯框架中解决,并且已被表述为使误差函数最小化的问题之一。马尔可夫随机场(MRF)已被用来表征解空间上的先验约束。至于表面高度,我们尝试了直接计算而不参考表面方向,同时通过相机抖动来提高分辨率。 [参考:36]

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