© 2016 IEEE. A+ aka Adjusted Anchored Neighborhood Regression - is a state-of-the-art method for exemplar-based single image super-resolution with low time complexity at both train and test time. By robustly training a clustered regression model over a low-resolution dictionary, its performance keeps improving with the dictionary size - even when using tens of thousands of regressors. However, this can pose a memory issue where the model size can grow to more than a gigabyte, limiting applicability in memory constrained scenarios. To address this, we propose Regressor Basis Learning (RB), a novel variant of A+ where we restrict the regressor set to a learned low-dimensional subspace, such that each regressor is coded as a linear combination...
In this thesis I present a novel approach to superresolution using a network structure. Sparse repre...
In this paper, we employ unified mutual coherence between the dictionary atoms and atoms/samples whe...
In this paper we present a comprehensive framework for learning ro-bust low-rank representations by ...
Agustsson E., Timofte R., Van Gool L., ''Regressor basis learning for anchored super-resolution'', 2...
Abstract. We address the problem of image upscaling in the form of single image super-resolution bas...
© Springer International Publishing Switzerland 2015. We address the problem of image upscaling in t...
This thesis addresses two central tasks in image processing: single-image super-resolution and image...
Recently there have been significant advances in image up scaling or image super-resolution based on...
Recently there have been significant advances in image upscaling or image super-resolution based on ...
Timofte R., De Smet V., Van Gool L., ''A+: Adjusted anchored neighborhood regression for fast super-...
Regression-based Super-Resolution (SR) addresses the upscaling problem by learning a mapping functio...
Regression-based Super-Resolution (SR) addresses the upscaling problem by learning a mapping functio...
Regression-based Super-Resolution (SR) addresses the upscaling problem by learning a mapping functio...
This doctoral thesis deals with the enhancement of digital images by increasing their resolution, a ...
Timofte R., De Smet V., Van Gool L., ''Anchored neighborhood regression for fast example-based super...
In this thesis I present a novel approach to superresolution using a network structure. Sparse repre...
In this paper, we employ unified mutual coherence between the dictionary atoms and atoms/samples whe...
In this paper we present a comprehensive framework for learning ro-bust low-rank representations by ...
Agustsson E., Timofte R., Van Gool L., ''Regressor basis learning for anchored super-resolution'', 2...
Abstract. We address the problem of image upscaling in the form of single image super-resolution bas...
© Springer International Publishing Switzerland 2015. We address the problem of image upscaling in t...
This thesis addresses two central tasks in image processing: single-image super-resolution and image...
Recently there have been significant advances in image up scaling or image super-resolution based on...
Recently there have been significant advances in image upscaling or image super-resolution based on ...
Timofte R., De Smet V., Van Gool L., ''A+: Adjusted anchored neighborhood regression for fast super-...
Regression-based Super-Resolution (SR) addresses the upscaling problem by learning a mapping functio...
Regression-based Super-Resolution (SR) addresses the upscaling problem by learning a mapping functio...
Regression-based Super-Resolution (SR) addresses the upscaling problem by learning a mapping functio...
This doctoral thesis deals with the enhancement of digital images by increasing their resolution, a ...
Timofte R., De Smet V., Van Gool L., ''Anchored neighborhood regression for fast example-based super...
In this thesis I present a novel approach to superresolution using a network structure. Sparse repre...
In this paper, we employ unified mutual coherence between the dictionary atoms and atoms/samples whe...
In this paper we present a comprehensive framework for learning ro-bust low-rank representations by ...