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doctoral thesis

Patch-based methods for variational image processing problems

D'Angelo, Emmanuel  
2013

Image Processing problems are notoriously difficult. To name a few of these difficulties, they are usually ill-posed, involve a huge number of unknowns (from one to several per pixel!), and images cannot be considered as the linear superposition of a few physical sources as they contain many different scales and non-linearities. However, if one considers instead of images as a whole small blocks (or patches) inside the pictures, many of these hurdles vanish and problems become much easier to solve, at the cost of increasing again the dimensionality of the data to process. Following the seminal NL-means algorithm in 2005-2006, methods that consider only the visual correlation between patches and ignore their spatial relationship are called non-local methods. While powerful, it is an arduous task to define non-local methods without using heuristic formulations or complex mathematical frameworks. On the other hand, another powerful property has brought global image processing algorithms one step further: it is the sparsity of images in well chosen representation basis. However, this property is difficult to embed naturally in non-local methods, yielding algorithms that are usually inefficient or circonvoluted. In this thesis, we explore alternative approaches to non-locality, with the goals of i) developing universal approaches that can handle local and non-local constraints and ii) leveraging the qualities of both non-locality and sparsity. For the first point, we will see that embedding the patches of an image into a graph-based framework can yield a simple algorithm that can switch from local to non-local diffusion, which we will apply to the problem of large area image inpainting. For the second point, we will first study a fast patch preselection process that is able to group patches according to their visual content. This preselection operator will then serve as input to a social sparsity enforcing operator that will create sparse groups of jointly sparse patches, thus exploiting all the redundancies present in the data, in a simple mathematical framework. Finally, we will study the problem of reconstructing plausible patches from a few binarized measurements. We will show that this task can be achieved in the case of popular binarized image keypoints descriptors, thus demonstrating a potential privacy issue in mobile visual recognition applications, but also opening a promising way to the design and the construction of a new generation of smart cameras.

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Type
doctoral thesis
DOI
10.5075/epfl-thesis-5693
Author(s)
D'Angelo, Emmanuel  
Advisors
Vandergheynst, Pierre  
Jury

J.-Ph. Thiran (président), J.-F. Aujol, P. Fua, L. Jacques

Date Issued

2013

Publisher

EPFL

Publisher place

Lausanne

Public defense year

2013-04-26

Thesis number

5693

Subjects

Image processing

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Inverse problems

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Non-local algorithms

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Social sparsity

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Local binary descriptors

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Privacy

EPFL units
LTS2  
Faculty
STI  
School
IEL  
Doctoral School
EDEE  
Available on Infoscience
April 17, 2013
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/91541
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