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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Shape-from-focus reconstruction using nonlocal matting Laplacian prior followed by MRF-based refinement
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Shape-from-focus reconstruction using nonlocal matting Laplacian prior followed by MRF-based refinement

机译:使用非局部消光Laplacian的形状从焦点重建,其次是MRF基础的改进

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摘要

In this paper, we address the problem of depth recovery from a sequence of multi-focus images, known as shape-from-focus (SFF). The conventional SFF techniques typically exhibit poor performance over textureless regions, and it is difficult to preserve depth edges and fine details while maintaining spatial consistency. Therefore, we propose an SFF depth recovery framework composed of depth reconstruction and refinement processes. We first formulate the depth reconstruction as a maximum a posterior (MAP) estimation problem with the inclusion of matting Laplacian prior. The nonlocal principle is adopted in matting Laplacian matrix construction to preserve depth edges and fine details. As the nonlocal principle breaks the spatial consistency, the reconstructed depth image is spatially inconsistent and suffers from the texture-copy artifacts. To smooth the noise and suppress the texture-copy artifacts, a closed-form edge-preserving depth refinement is proposed, which is formulated as a MAP estimation problem using Markov random fields (MRFs). Experimental results over synthetic and real scene datasets demonstrate the superiority of our algorithm in terms of robustness, and the ability to preserve edges and fine details while maintaining spatial consistency compared to existing approaches. (C) 2020 Elsevier Ltd. All rights reserved.
机译:在本文中,我们解决了从一系列多焦图像序列恢复的问题,称为形状从焦点(SFF)。传统的SFF技术通常在织地区上表现出差的性能,并且在保持空间一致性的同时难以保持深度边缘和细细节。因此,我们提出由深度重建和细化过程组成的SFF深度恢复框架。我们首先将深度重建作为最大的后(MAP)估计问题,并在置于MATTING LAPLACIAN之前。在消光Laplacian基质结构中采用非局部原理,以保持深度边缘和细节。由于非识别原理破坏了空间一致性,重建的深度图像在空间上不一致,遭受纹理复制伪像。为了平滑噪声并抑制纹理复制伪像,提出了一种闭合边缘保留深度细化,其使用Markov随机字段(MRFS)配制为地图估计问题。综合和实场比数据集的实验结果证明了在鲁棒性方面的优越性,以及保持边缘和细节的能力,同时保持与现有方法相比的空间一致性。 (c)2020 elestvier有限公司保留所有权利。

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