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Accurate and occlusion-robust multi-view stereo

机译:准确且遮挡力强的多视图立体声

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This paper proposes an accurate multi-view stereo method for image-based 3D reconstruction that features robustness in the presence of occlusions. The new method offers improvements in dealing with two fundamental image matching problems. The first concerns the selection of the support window model, while the second centers upon accurate visibility estimation for each pixel. The support window model is based on an approximate 3D support plane described by a depth and two per-pixel depth offsets. For the visibility estimation, the multi-view constraint is initially relaxed by generating separate support plane maps for each support image using a modified PatchMatch algorithm. Then the most likely visible support image, which represents the minimum visibility of each pixel, is extracted via a discrete Markov Random Field model and it is further augmented by parameter clustering. Once the visibility is estimated, multi-view optimization taking into account all redundant observations is conducted to achieve optimal accuracy in the 3D surface generation for both depth and surface normal estimates. Finally, multi-view consistency is utilized to eliminate any remaining observational outliers. The proposed method is experimentally evaluated using well-known Middlebury datasets, and results obtained demonstrate that it is amongst the most accurate of the methods thus far reported via the Middlebury MVS website. Moreover, the new method exhibits a high completeness rate. (C) 2015 International Society for Photogrammetry and Remote Sensing, Inc. (ISPRS). Published by Elsevier B.V. All rights reserved.
机译:本文提出了一种基于图像的3D重建的准确多视图立体方法,该方法在存在遮挡的情况下具有鲁棒性。新方法在处理两个基本图像匹配问题方面提供了改进。第一个与支持窗口模型的选择有关,而第二个与每个像素的准确可见性估计有关。支持窗口模型基于深度和每个像素两个深度偏移量描述的近似3D支持平面。对于可见性估计,通过使用修改的PatchMatch算法为每个支持图像生成单独的支持平面图,最初可以放宽多视图约束。然后,通过离散的马尔可夫随机场模型提取表示每个像素的最小可见性的最可能的可见支持图像,并通过参数聚类对其进行进一步增强。估算可见性后,便会进行考虑所有冗余观测值的多视图优化,以针对深度和表面法线估算实现3D曲面生成的最佳精度。最后,利用多视图一致性来消除任何剩余的观测异常值。通过使用著名的Middlebury数据集对所提出的方法进行实验评估,所得结果表明,它是迄今为止通过Middlebury MVS网站报告的最准确的方法之一。而且,新方法具有很高的完成率。 (C)2015国际摄影测量与遥感学会(ISPRS)。由Elsevier B.V.发布。保留所有权利。

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