Abstract

The search for efficient image denoising methods still is a valid challenge, at the crossing of functional analysis and statistics. In spite of the sophistication of the recently proposed methods, most algorithms have not yet attained a desirable level of applicability. All show an outstanding performance when the image model corresponds to the algorithm assumptions, but fail in general and create artifacts or remove image fine structures. The main focus of this paper is, first, to define a general mathematical and experimental methodology to compare and classify classical image denoising algorithms, second, to propose an algorithm (Non Local Means) addressing the preservation of structure in a digital image. The mathematical analysis is based on the analysis of the “method noise”, defined as the difference between a digital image and its denoised version. The NL-means algorithm is also proven to be asymptotically optimal under a generic statistical image model. The denoising performance of all considered methods are compared in four ways; mathematical: asymptotic order of magnitude of the method noise under regularity assumptions; perceptual-mathematical: the algorithms artifacts and their explanation as a violation of the image model; quantitative experimental: by tables of L 2 distances of the denoised version to the original image. The most powerful evaluation method seems, however, to be the visualization of the method noise on natural images. The more this method noise looks like a real white noise, the better the method. 1

Keywords

Noise reductionNoise (video)Image (mathematics)Computer scienceImage processingDigital imageAlgorithmArtificial intelligenceNon-local meansWhite noiseFocus (optics)MathematicsComputer visionPattern recognition (psychology)

Related Publications

Weighted overcomplete denoising

We consider the familiar scenario where independent and identically distributed (i.i.d) noise in an image is removed using a set of overcomplete linear transforms and thresholdi...

2004 50 citations

Publication Info

Year
2004
Type
article
Citations
212
Access
Closed

External Links

Citation Metrics

212
OpenAlex

Cite This

Antoni Buades, B. Coll, Jean‐Michel Morel (2004). On image denoising methods. .