Title
Chambolle'S Projection Algorithm For Total Variation Denoising
Abstract
Denoising is the problem of removing the inherent noise from an image. The standard noise model is additive white Gaussian noise, where the observed image f is related to the underlying true image u by the degradation model f = u + eta, and eta is supposed to be at each pixel independently and identically distributed as a zero-mean Gaussian random variable. Since this is an ill-posed problem, Rudin, Osher and Fatemi introduced the total variation as a regularizing term. It has proved to be quite efficient for regularizing images without smoothing the boundaries of the objects.This paper focuses on the simple description of the theory and on the implementation of Chambolles projection algorithm for minimizing the total variation of a grayscale image. Furthermore, we adapt the algorithm to the vectorial total variation for color images. The implementation is described in detail and its parameters are analyzed and varied to come up with a reliable implementation.
Year
DOI
Venue
2013
10.5201/ipol.2013.61
IMAGE PROCESSING ON LINE
Keywords
Field
DocType
denoising, total variation, image restoration
Noise reduction,Computer vision,Dykstra's projection algorithm,Non-local means,Algorithm,Smoothing,Total variation denoising,Artificial intelligence,Image restoration,Additive white Gaussian noise,Grayscale,Mathematics
Journal
Volume
ISSN
Citations 
3
2105-1232
6
PageRank 
References 
Authors
0.46
21
3
Name
Order
Citations
PageRank
Joan Duran1316.33
B. Coll2161486.70
Catalina Sbert336842.20