The original contributions of this paper are twofold: a new understanding of the influence of noise on the eigenvectors of the graph Laplacian of a set of image patches, and an algorithm to estimate a denoised set of patches from a noisy image. The algorithm relies on the following two observations: (1) the low-index eigenvectors of the diffusion, or graph Laplacian, operators are very robust to random perturbations of the weights and random changes in the connections of the patch-graph; and (2) patches extracted from smooth regions of the image are organized along smooth low-dimensional structures in the patch-set, and therefore can be reconstructed with few eigenvectors. Experiments demonstrate that our denoising algorithm outperforms the...
This paper focuses on devising graph signal processing tools for the treatment of data defined on th...
Total variation (TV) based models are very popular in image denoising but suffer from some drawbacks...
International audienceTotal variation (TV) based models are very popular in image denoising but suff...
The use of the Laplacian of a properly constructed graph for denoising images has attracted a lot of...
The use of the Laplacian of a properly constructed graph for denoising images has attracted a lot of...
Digital photography has experienced great progress during the past decade. A lot of people are recor...
In this paper, we develop a regularization framework for image deblurring based on a new definition ...
Images and videos are often captured in poor light condi-tions, resulting in low-contrast images tha...
Abstract—Image denoising is the most basic inverse imaging problem. As an under-determined problem, ...
In this article we argue that when an image is corrupted by additive noise, its curvature image is l...
Image deblurring is a relevant problem in many fields of science and engineering. To solve this prob...
International audienceIn many applications, we are given access to noisy modulo samples of a smooth ...
Recovering images from corrupted observations is necessary for many real-world applications. In this...
We consider the problem of denoising a noisily sampled submanifold M in R^d, where the submanifold M...
[eng] Colour image smoothing is a challenging task because it is necessary to appropriately distingu...
This paper focuses on devising graph signal processing tools for the treatment of data defined on th...
Total variation (TV) based models are very popular in image denoising but suffer from some drawbacks...
International audienceTotal variation (TV) based models are very popular in image denoising but suff...
The use of the Laplacian of a properly constructed graph for denoising images has attracted a lot of...
The use of the Laplacian of a properly constructed graph for denoising images has attracted a lot of...
Digital photography has experienced great progress during the past decade. A lot of people are recor...
In this paper, we develop a regularization framework for image deblurring based on a new definition ...
Images and videos are often captured in poor light condi-tions, resulting in low-contrast images tha...
Abstract—Image denoising is the most basic inverse imaging problem. As an under-determined problem, ...
In this article we argue that when an image is corrupted by additive noise, its curvature image is l...
Image deblurring is a relevant problem in many fields of science and engineering. To solve this prob...
International audienceIn many applications, we are given access to noisy modulo samples of a smooth ...
Recovering images from corrupted observations is necessary for many real-world applications. In this...
We consider the problem of denoising a noisily sampled submanifold M in R^d, where the submanifold M...
[eng] Colour image smoothing is a challenging task because it is necessary to appropriately distingu...
This paper focuses on devising graph signal processing tools for the treatment of data defined on th...
Total variation (TV) based models are very popular in image denoising but suffer from some drawbacks...
International audienceTotal variation (TV) based models are very popular in image denoising but suff...