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Journal ArticleDOI

Fast Single Image Super-Resolution via Self-Example Learning and Sparse Representation

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TLDR
An efficient implementation based on the K-singular value decomposition (SVD) algorithm, where the exact SVD computation is replaced with a much faster approximation, and the straightforward orthogonal matching pursuit algorithm is employed, which is more suitable for the proposed self-example-learning-based sparse reconstruction with far fewer signals.
Abstract
In this paper, we propose a novel algorithm for fast single image super-resolution based on self-example learning and sparse representation. We propose an efficient implementation based on the K-singular value decomposition (SVD) algorithm, where we replace the exact SVD computation with a much faster approximation, and we employ the straightforward orthogonal matching pursuit algorithm, which is more suitable for our proposed self-example-learning-based sparse reconstruction with far fewer signals. The patches used for dictionary learning are efficiently sampled from the low-resolution input image itself using our proposed sample mean square error strategy, without an external training set containing a large collection of high- resolution images. Moreover, the l 0 -optimization-based criterion, which is much faster than l 1 -optimization-based relaxation, is applied to both the dictionary learning and reconstruction phases. Compared with other super-resolution reconstruction methods, our low- dimensional dictionary is a more compact representation of patch pairs and it is capable of learning global and local information jointly, thereby reducing the computational cost substantially. Our algorithm can generate high-resolution images that have similar quality to other methods but with an increase in the computational efficiency greater than hundredfold.

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Citations
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Journal ArticleDOI

Single Image Super-Resolution via Locally Regularized Anchored Neighborhood Regression and Nonlocal Means

TL;DR: This paper addresses the problem of learning the mapping functions between the LR and HR images based on a dictionary ofLR and HR examples by applying the local geometry prior to regularize the patch representation, and utilizing the nonlocal means filter to improve the super-resolved outcome.
Journal ArticleDOI

SRLSP: A Face Image Super-Resolution Algorithm Using Smooth Regression With Local Structure Prior

TL;DR: A missing intensity interpolation method based on smooth regression with a local structure prior (LSP), named SRLSP for short, is presented to interpolate the missing intensities in a target HR image.
Journal ArticleDOI

Noise Robust Face Image Super-Resolution Through Smooth Sparse Representation

TL;DR: Visual and quantitative comparisons show that the proposed face image super-resolution method yields superior reconstruction results when the input LR face image is contaminated by strong noise.
Journal ArticleDOI

Depth Image Denoising Using Nuclear Norm and Learning Graph Model

TL;DR: A group-based nuclear norm and learning graph (GNNLG) model, where for each patch, the most similar patches within a searching window are found, which is superior to other current state-of-the-art denoising methods in both subjective and objective criterion.
Posted Content

Depth image denoising using nuclear norm and learning graph model

TL;DR: Wang et al. as discussed by the authors proposed a group-based nuclear norm and learning graph (GNNLG) model for depth image denoising, where each patch was found and grouped into the most similar patches within a searching window.
References
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TL;DR: In this article, a structural similarity index is proposed for image quality assessment based on the degradation of structural information, which can be applied to both subjective ratings and objective methods on a database of images compressed with JPEG and JPEG2000.
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$rm K$ -SVD: An Algorithm for Designing Overcomplete Dictionaries for Sparse Representation

TL;DR: A novel algorithm for adapting dictionaries in order to achieve sparse signal representations, the K-SVD algorithm, an iterative method that alternates between sparse coding of the examples based on the current dictionary and a process of updating the dictionary atoms to better fit the data.
Journal ArticleDOI

Image Super-Resolution Via Sparse Representation

TL;DR: This paper presents a new approach to single-image superresolution, based upon sparse signal representation, which generates high-resolution images that are competitive or even superior in quality to images produced by other similar SR methods.
Journal ArticleDOI

Super-resolution image reconstruction: a technical overview

TL;DR: The goal of this article is to introduce the concept of SR algorithms to readers who are unfamiliar with this area and to provide a review for experts to present the technical review of various existing SR methodologies which are often employed.
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