Image restoration using sparse dictionary
Sparse theory has been applied widely to the field of image processing since the idea of sparse representation of images was first proposed by Dr. Stephen Mallat[13]. Image restoration is the process of estimating the corrupt and unknown pixels in an image from its known information, making repaired...
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sg-ntu-dr.10356-754502023-07-07T15:56:05Z Image restoration using sparse dictionary Dai, Shi Anamitra Makur School of Electrical and Electronic Engineering DRNTU::Engineering::Electrical and electronic engineering Sparse theory has been applied widely to the field of image processing since the idea of sparse representation of images was first proposed by Dr. Stephen Mallat[13]. Image restoration is the process of estimating the corrupt and unknown pixels in an image from its known information, making repaired image close to or achieve the visual effect of the original image. In the past decade, sparse theory applied to image denoising and inpainting has become a popular research topic in the field of image processing. This project aims to research on sparse representation theory and the concept of dictionary training and implement them to images to solve image denoising and image inpainting problems. The main research works of this project are as follow: 1. Introduce the basic concepts of sparse representation, discuss the main algorithms used to solve the problem of sparse approximation and the main dictionary algorithms in sparse representation. 2. Introduce image recovery (denoising and inpainting) problems based on sparse representation, research on K-SVD dictionary. 3. Illustrate the application of trained dictionary in image recovery (denoising and inpainting) 4. Assess the effectiveness of the training dictionary used. Bachelor of Engineering 2018-05-31T06:24:42Z 2018-05-31T06:24:42Z 2018 Final Year Project (FYP) http://hdl.handle.net/10356/75450 en Nanyang Technological University 73 p. application/pdf |
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DRNTU::Engineering::Electrical and electronic engineering Dai, Shi Image restoration using sparse dictionary |
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Sparse theory has been applied widely to the field of image processing since the idea of sparse representation of images was first proposed by Dr. Stephen Mallat[13]. Image restoration is the process of estimating the corrupt and unknown pixels in an image from its known information, making repaired image close to or achieve the visual effect of the original image. In the past decade, sparse theory applied to image denoising and inpainting has become a popular research topic in the field of image processing. This project aims to research on sparse representation theory and the concept of dictionary training and implement them to images to solve image denoising and image inpainting problems.
The main research works of this project are as follow: 1. Introduce the basic concepts of sparse representation, discuss the main algorithms used to solve the problem of sparse approximation and the main dictionary algorithms in sparse representation. 2. Introduce image recovery (denoising and inpainting) problems based on sparse representation, research on K-SVD dictionary. 3. Illustrate the application of trained dictionary in image recovery (denoising and inpainting) 4. Assess the effectiveness of the training dictionary used. |
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Anamitra Makur |
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Anamitra Makur Dai, Shi |
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Final Year Project |
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Dai, Shi |
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Dai, Shi |
title |
Image restoration using sparse dictionary |
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Image restoration using sparse dictionary |
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Image restoration using sparse dictionary |
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Image restoration using sparse dictionary |
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Image restoration using sparse dictionary |
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image restoration using sparse dictionary |
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2018 |
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http://hdl.handle.net/10356/75450 |
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1772826152791965696 |