Combined Depth and Outlier Estimation in Multi-View Stereo

C. Strecha, R. Fransens, L. Gool
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引用次数: 209

Abstract

In this paper, we present a generative model based approach to solve the multi-view stereo problem. The input images are considered to be generated by either one of two processes: (i) an inlier process, which generates the pixels which are visible from the reference camera and which obey the constant brightness assumption, and (ii) an outlier process which generates all other pixels. Depth and visibility are jointly modelled as a hiddenMarkov Random Field, and the spatial correlations of both are explicitly accounted for. Inference is made tractable by an EM-algorithm, which alternates between estimation of visibility and depth, and optimisation of model parameters. We describe and compare two implementations of the E-step of the algorithm, which correspond to the Mean Field and Bethe approximations of the free energy. The approach is validated by experiments on challenging real-world scenes, of which two are contaminated by independently moving objects.
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多视点立体图像中深度与离群值的组合估计
在本文中,我们提出了一种基于生成模型的方法来解决多视图立体问题。输入图像被认为是由以下两个过程之一生成的:(i)一个内部过程,它生成从参考相机可见的像素,并且服从恒定亮度假设,以及(ii)一个异常过程,它生成所有其他像素。深度和能见度被联合建模为一个隐马尔可夫随机场,并且两者的空间相关性被明确地解释。通过em算法使推理变得易于处理,该算法在可见性和深度估计以及模型参数优化之间交替进行。我们描述并比较了该算法的e步的两种实现,它们对应于自由能的平均场近似和贝特近似。该方法在具有挑战性的真实场景中得到了验证,其中两个场景被独立移动的物体污染。
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