Variational PatchMatch MultiView Reconstruction and Refinement

Philipp Heise, B. Jensen, S. Klose, Alois Knoll
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引用次数: 19

Abstract

In this work we propose a novel approach to the problem of multi-view stereo reconstruction. Building upon the previously proposed PatchMatch stereo and PM-Huber algorithm we introduce an extension to the multi-view scenario that employs an iterative refinement scheme. Our proposed approach uses an extended and robustified volumetric truncated signed distance function representation, which is advantageous for the fusion of refined depth maps and also for raycasting the current reconstruction estimation together with estimated depth normals into arbitrary camera views. We formulate the combined multi-view stereo reconstruction and refinement as a variational optimization problem. The newly introduced plane based smoothing term in the energy formulation is guided by the current reconstruction confidence and the image contents. Further we propose an extension of the PatchMatch scheme with an additional KLT step to avoid unnecessary sampling iterations. Improper camera poses are corrected by a direct image aligment step that performs robust outlier compensation by means of a recently proposed kernel lifting framework. To speed up the optimization of the variational formulation an adapted scheme is used for faster convergence.
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变分PatchMatch多视图重构与细化
在这项工作中,我们提出了一种新的方法来解决多视图立体重建问题。在先前提出的PatchMatch立体和PM-Huber算法的基础上,我们引入了一种扩展到多视图场景,采用迭代优化方案。我们提出的方法使用扩展和鲁棒的体积截断符号距离函数表示,这有利于融合精细的深度图,也有利于将当前重建估计与估计的深度法线一起光线投射到任意相机视图中。我们将多视点立体图像的重构与细化结合为一个变分优化问题。能量公式中新引入的基于平面的平滑项以当前重建置信度和图像内容为指导。此外,我们提出了一个扩展的PatchMatch方案与额外的KLT步骤,以避免不必要的采样迭代。不适当的相机姿势是由一个直接的图像对准步骤,执行鲁棒异常补偿的手段,最近提出的核提升框架进行纠正。为了加快变分公式的优化速度,采用了一种适应格式来加快收敛速度。
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