DocumentCode
1394185
Title
Adaptive noise removal approach for restoration of digital images corrupted by multimodal noise
Author
Ghita, Ovidiu ; Ilea, Dana E. ; Whelan, Paul F.
Author_Institution
Centre for Image Process. & Anal., Dublin City Univ., Dublin, Ireland
Volume
6
Issue
8
fYear
2012
fDate
11/1/2012 12:00:00 AM
Firstpage
1148
Lastpage
1160
Abstract
Data smoothing algorithms are commonly applied to reduce the level of noise and eliminate the weak textures contained in digital images. Anisotropic diffusion algorithms form a distinct category of noise removal approaches that implement the smoothing process locally in agreement with image features such as edges that are typically determined by applying diverse partial differential equation (PDE) models. While this approach is opportune since it allows the implementation of feature-preserving data smoothing strategies, the inclusion of the PDE models in the formulation of the data smoothing process compromises the performance of the anisotropic diffusion schemes when applied to data corrupted by non-Gaussian and multimodal image noise. In this study the authors first evaluate the positive aspects related to the inclusion of a multi-scale edge detector based on the generalisation of the Di Zenzo operator into the formulation of the anisotropic diffusion process. Then, a new approach that embeds vector median filtering into discrete implementation of the anisotropic diffusion is introduced to improve the performance of the noise removal algorithm when applied to multimodal noise suppression. To evaluate the performance of the proposed data smoothing strategy, a large number of experiments on various types of digital images corrupted by multimodal noise were conducted.
Keywords
edge detection; image denoising; image restoration; image texture; partial differential equations; smoothing methods; Di Zenzo operator; PDE models; adaptive noise removal approach; anisotropic diffusion algorithms; anisotropic diffusion process; anisotropic diffusion schemes; data corrupted; data smoothing algorithms; data smoothing process; digital image restoration; digital image weak textures; feature-preserving data smoothing strategies; generalisation; image features; multimodal image noise; multimodal noise suppression; multiscale edge detector; noise removal algorithm; noise removal approaches; nonGaussian; partial differential equation models; vector median filtering;
fLanguage
English
Journal_Title
Image Processing, IET
Publisher
iet
ISSN
1751-9659
Type
jour
DOI
10.1049/iet-ipr.2010.0587
Filename
6403961
Link To Document