变分深度离焦重建

Michael Moeller;Martin Benning;Carola Schönlieb;Daniel Cremers
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引用次数: 93

摘要

本文讨论了从一系列不同聚焦的图像重建深度图的问题,也称为离焦深度(DFF)或离焦形状。我们建议将DFF问题描述为一个变分问题,包括一个光滑但非凸的数据保真度项和一个凸的非光滑正则化,这使得该方法对噪声具有鲁棒性,并产生更真实的深度图。此外,我们提出用乘法器的线性化交替方向方法来解决非凸最小化问题,从而非常有效地最小化能量。在模拟和实际数据上与经典方法进行了数值比较。
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Variational Depth From Focus Reconstruction
This paper deals with the problem of reconstructing a depth map from a sequence of differently focused images, also known as depth from focus (DFF) or shape from focus. We propose to state the DFF problem as a variational problem, including a smooth but nonconvex data fidelity term and a convex nonsmooth regularization, which makes the method robust to noise and leads to more realistic depth maps. In addition, we propose to solve the nonconvex minimization problem with a linearized alternating directions method of multipliers, allowing to minimize the energy very efficiently. A numerical comparison to classical methods on simulated as well as on real data is presented.
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