A parallel algorithm to remove impulsive noise in digital images using heterogeneous CPU/GPU computing is proposed. The parallel denoising algorithm is based on the peer group concept and uses an Euclidean metric. In order to identify the amount of pixels to be allocated in multi-core and GPUs, a performance analysis using large images is presented. A comparison of the parallel implementation in multi-core, GPUs and a combination of both is performed. Performance has been evaluated in terms of execution time and Megapixels/second. We present several optimization strategies especially effective for the multi-core environment, and demonstrate significant performance improvements. The main advantage of the proposed noise removal methodology is...
In this paper, a highly effective parallel filter for visual data restoration is presented. The filt...
Denoising algorithms are widely studied to improve image quality in many applicative fields, such as...
We focus on the Overcomplete Local Principal Component Analysis (OLPCA) method, which is widely adop...
A parallel algorithm to remove impulsive noise in digital images using heterogeneous CPU/GPU computi...
AbstractA parallel algorithm to remove impulsive noise in digital images using heterogeneous CPU/GPU...
AbstractA parallel algorithm for image noise removal is proposed. The algorithm is based on peer gro...
[EN] A parallel algorithm for image noise removal is proposed. The algorithm is based on peer group ...
This article describes expediency of using a graphics processing unit (GPU) in big data processing i...
Smoothing and noise reduction of images is often an important first step in image processing applicat...
This thesis investigates the comparative performance of multicore CPU and general purpose GPU on a c...
In the paper a parallel FPGA implementation of the Peer Group Filtering algorithm is described. Impl...
This paper presents a parallel Salt and Pepper (SP) noise removal algorithm in a grey level digital ...
Medical images may be corrupted by noise. This noise affects the image quality and can obscure impor...
Click on the DOI link to access the article (may not be free).Traditional methods for processing lar...
Noise reduction is one of the most fundamental digital image processing problems, and is often desig...
In this paper, a highly effective parallel filter for visual data restoration is presented. The filt...
Denoising algorithms are widely studied to improve image quality in many applicative fields, such as...
We focus on the Overcomplete Local Principal Component Analysis (OLPCA) method, which is widely adop...
A parallel algorithm to remove impulsive noise in digital images using heterogeneous CPU/GPU computi...
AbstractA parallel algorithm to remove impulsive noise in digital images using heterogeneous CPU/GPU...
AbstractA parallel algorithm for image noise removal is proposed. The algorithm is based on peer gro...
[EN] A parallel algorithm for image noise removal is proposed. The algorithm is based on peer group ...
This article describes expediency of using a graphics processing unit (GPU) in big data processing i...
Smoothing and noise reduction of images is often an important first step in image processing applicat...
This thesis investigates the comparative performance of multicore CPU and general purpose GPU on a c...
In the paper a parallel FPGA implementation of the Peer Group Filtering algorithm is described. Impl...
This paper presents a parallel Salt and Pepper (SP) noise removal algorithm in a grey level digital ...
Medical images may be corrupted by noise. This noise affects the image quality and can obscure impor...
Click on the DOI link to access the article (may not be free).Traditional methods for processing lar...
Noise reduction is one of the most fundamental digital image processing problems, and is often desig...
In this paper, a highly effective parallel filter for visual data restoration is presented. The filt...
Denoising algorithms are widely studied to improve image quality in many applicative fields, such as...
We focus on the Overcomplete Local Principal Component Analysis (OLPCA) method, which is widely adop...