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Scene Reconstruction Using MRF Optimization with Image Content Adaptive Energy Functions

机译:使用具有图像内容自适应能量函数的MRF优化进行场景重建

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摘要

Multi-view scene reconstruction from multiple uncalibrated images can be solved by two stages of processing: first, a sparse reconstruction using Structure From Motion (SFM), and second, a surface reconstruction using optimization of Markov random field (MRF). This paper focuses on the second step, assuming that a set of sparse feature points have been reconstructed and the cameras have been calibrated by SFM. The multi-view surface reconstruction is formulated as an image-based multi-labeling problem solved using MRF optimization via graph cut. First, we construct a 2D triangular mesh on the reference image, based on the image segmentation results provided by an existing segmentation process. By doing this, we expect that each triangle in the mesh is well aligned with the object boundaries, and a minimum number of triangles are generated to represent the 3D surface. Second, various objective and heuristic depth cues such as the slanting cue, are combined to define the local penalty and interaction energies. Third, these local energies are adapted to the local image content, based on the results from some simple content analysis techniques. The experimental results show that the proposed method is able to well the preserve the depth discontinuity because of the image content adaptive local energies.
机译:可以通过两个处理阶段解决从多个未校准图像进行的多视图场景重建:首先,使用运动结构(SFM)进行稀疏重建,其次,使用马尔可夫随机场优化(MRF)进行表面重建。本文着重于第二步,假设已经重建了一组稀疏特征点,并且已经通过SFM校准了相机。多视图表面​​重建被公式化为基于图像的多标签问题,使用MRF优化通过图割解决了该问题。首先,我们根据现有分割过程提供的图像分割结果,在参考图像上构建2D三角形网格。通过这样做,我们期望网格中的每个三角形都与对象边界很好地对齐,并且生成了最少数量的三角形来表示3D表面。其次,将各种客观和启发式深度线索(例如倾斜线索)组合起来,以定义局部惩罚和交互作用能量。第三,基于一些简单的内容分析技术的结果,这些局部能量适合于局部图像内容。实验结果表明,由于图像内容具有自适应局部能量,因此该方法能够很好地保持深度的不连续性。

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