Fast numerical methods for image restoration
In the computer vision field, most problems can be described as energy functionals. The optimums of these energy functionals are the solutions of the computer vision problems. The fast numerical methods seeking the solutions are fundamentally important and highly demanded. We mainly solve three d...
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sg-ntu-dr.10356-505442023-02-28T23:57:37Z Fast numerical methods for image restoration Shi, Juan Tai Xue-Cheng School of Physical and Mathematical Sciences DRNTU::Science::Mathematics::Applied mathematics::Numerical analysis In the computer vision field, most problems can be described as energy functionals. The optimums of these energy functionals are the solutions of the computer vision problems. The fast numerical methods seeking the solutions are fundamentally important and highly demanded. We mainly solve three different essential computer vision problems: image denoising problem, image segmentation problem and surface reconstruction problem. We will review the critical models such as the Rudin, Osher and Fatemi (ROF) model, TV-L1 model and Euler's elastica model for denoising and related problems. The Mumford-Shah model and the Chan-Vese model are also included for solving segmentation problem. In surface reconstruction problem, the weighted minimal surface model is introduced as background. In this thesis, we use two types of fast numerical methods for solving these energy minimization problems. The first one is multiplier based method to the augmented Lagrangian function of TV-L1 model, for image denoising and image fusion problems. The other one is graph cuts technique for fast solving higher order curvature based models. It has been applied to solve the image denoising, segmentation and surface reconstruction problems. DOCTOR OF PHILOSOPHY (SPMS) 2012-06-21T07:43:17Z 2012-06-21T07:43:17Z 2012 2012 Thesis Shi, J. (2012). Fast numerical methods for image restoration. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/50544 10.32657/10356/50544 en 163 p. application/pdf |
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DRNTU::Science::Mathematics::Applied mathematics::Numerical analysis Shi, Juan Fast numerical methods for image restoration |
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In the computer vision field, most problems can be described as energy functionals. The optimums of these energy functionals are the solutions of the computer vision problems. The fast numerical methods seeking the solutions are fundamentally important and highly demanded.
We mainly solve three different essential computer vision problems: image denoising problem, image segmentation problem and surface reconstruction problem. We will review the critical models such as the Rudin, Osher and Fatemi (ROF) model, TV-L1 model and Euler's elastica model for denoising and related problems. The Mumford-Shah model and the Chan-Vese model are also included for solving segmentation problem. In surface reconstruction problem, the weighted minimal surface model is introduced as background.
In this thesis, we use two types of fast numerical methods for
solving these energy minimization problems. The first one is
multiplier based method to the augmented Lagrangian function of TV-L1 model, for image denoising and image fusion problems. The other one is graph cuts technique for fast solving higher order curvature based models. It has been applied to solve the image denoising, segmentation and surface reconstruction problems. |
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Tai Xue-Cheng |
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Tai Xue-Cheng Shi, Juan |
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Theses and Dissertations |
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Shi, Juan |
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Shi, Juan |
title |
Fast numerical methods for image restoration |
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Fast numerical methods for image restoration |
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Fast numerical methods for image restoration |
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Fast numerical methods for image restoration |
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Fast numerical methods for image restoration |
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fast numerical methods for image restoration |
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2012 |
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https://hdl.handle.net/10356/50544 |
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1759857789841178624 |