Image denoising is an important image processing task, both as a process itself, and as a component in other processes. The main properties of a good image denoising model are that it will remove noise while preserving edges. Traditionally, linear models have been used. One common approach is to use a Gaussian filter, In spite of the great success of many denoising algorithms; they tend to smooth the fine scale image textures when removing noise, degrading the image visual quality. To address this problem we compare two methods in this paper. The Nonlocal Hierarchical Dictionary Learning using Wavelet (NHDLW) and Gradient Histogram Preservation (GHP),which is large success in denoising. Experimental result shows that the NHDLW get significa...
The nonlocal means algorithm is widely used in image denoising, but this algorithm does not work wel...
Image denoising is a traditional yet essential issue in low level vision. Existing denoising techniq...
Existing image denoising frameworks via sparse representation using learned dictionaries have an wea...
Exploiting the sparsity within representation models for images is critical for image denoising. The...
Exploiting the sparsity within representation models for images is critical for image denoising. The...
Image denoising is a well explored topic in the field of image processing. In the past several decad...
We proposed a new efficient image denoising scheme, which leads to four important contributions. The...
An improved image denoising technique based on the nonlocal means (NL-means) algorithm is investigat...
International audienceIn recent years, overcomplete dictionaries combined with sparse learning techn...
International audiencePartial Differential equations (PDE), wavelets-based methods and neighborhood ...
The search for efficient image denoising methods is still a valid challenge at the crossing of funct...
Image denoising is an area of active research. Many image de-noising techniques have been proposed i...
The nonlocal means filter plays an important role in image denoising. We propose in this paper an im...
In this paper we propose several improvements to the original non-local means algorithm introduced b...
Natural image statistics plays an important role in image denoising, and various natural image prior...
The nonlocal means algorithm is widely used in image denoising, but this algorithm does not work wel...
Image denoising is a traditional yet essential issue in low level vision. Existing denoising techniq...
Existing image denoising frameworks via sparse representation using learned dictionaries have an wea...
Exploiting the sparsity within representation models for images is critical for image denoising. The...
Exploiting the sparsity within representation models for images is critical for image denoising. The...
Image denoising is a well explored topic in the field of image processing. In the past several decad...
We proposed a new efficient image denoising scheme, which leads to four important contributions. The...
An improved image denoising technique based on the nonlocal means (NL-means) algorithm is investigat...
International audienceIn recent years, overcomplete dictionaries combined with sparse learning techn...
International audiencePartial Differential equations (PDE), wavelets-based methods and neighborhood ...
The search for efficient image denoising methods is still a valid challenge at the crossing of funct...
Image denoising is an area of active research. Many image de-noising techniques have been proposed i...
The nonlocal means filter plays an important role in image denoising. We propose in this paper an im...
In this paper we propose several improvements to the original non-local means algorithm introduced b...
Natural image statistics plays an important role in image denoising, and various natural image prior...
The nonlocal means algorithm is widely used in image denoising, but this algorithm does not work wel...
Image denoising is a traditional yet essential issue in low level vision. Existing denoising techniq...
Existing image denoising frameworks via sparse representation using learned dictionaries have an wea...