A Markov Random Field Approach for Dense Photometric Stereo

K. Tang, Chi-Keung Tang, T. Wong
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引用次数: 2

Abstract

We present a surprisingly simple system that allows for robust normal reconstruction by photometric stereo using a uniform and dense set of photometric images captured at fixed viewpoint, in the presense of spurious noises caused by highlight, shadows and non-Lambertian reflections. Our system consists of a mirror sphere, a spotlight and a DV camera only. Using this, a dense set of unbiased but noisy photometric data that roughly distributed uniformly on the light direction sphere is produced. To simultaneously recover normal orientations and preserve discontinuities, we model the dense photometric stereo problem into two coupled Markov random fields (MRFs): a smooth field for normal orientations, and a spatial line process for normal orientation discontinuities. A very fast tensorial belief propagation method is used to approximate the maximum a posteriori (MAP) solution of the Markov network. We present very encouraging results on a wide range of difficult objects to show the efficacy of our approach.
稠密光度立体的马尔可夫随机场方法
我们提出了一个令人惊讶的简单系统,允许使用在固定视点捕获的均匀和密集的光度图像集,在高光,阴影和非朗伯反射引起的伪噪声存在的情况下,通过光度立体进行鲁棒的正常重建。我们的系统只由一个镜面球、一个聚光灯和一个DV相机组成。利用这种方法,产生了一组密集的无偏但有噪声的光度数据,这些数据大致均匀地分布在光导球上。为了同时恢复法向方向和保持不连续,我们将密集光度立体问题建模为两个耦合的马尔可夫随机场(mrf):一个平滑场用于法向方向,一个空间线过程用于法向方向不连续。采用一种非常快速的张量信念传播方法来逼近马尔可夫网络的最大后验解。我们在范围广泛的困难物体上取得了非常令人鼓舞的结果,以显示我们的方法的有效性。
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