PROVIDING A NEW APPROACH FOR MODELING AND PARAMETER ESTIMATION OF PROBABILITY DENSITY FUNCTION OF NOISE IN DIGITAL IMAGES

Ciência E Natura

Endereço:
Revista Ciência e Natura | Campus Sede-Cidade Universitária | Av. Roraima nº 1000, Prédio 13, Sala 1122 | Fone/Fax +55(55) 3220-8735 | Bairro Camobi
Santa Maria / RS
97105-900
Site: http://www.ufsm.br/cienciaenatura
Telefone: (55) 3220-8735
ISSN: 2179-460X
Editor Chefe: Marcelo Barcellos da Rosa
Início Publicação: 30/11/1979
Periodicidade: Quadrimestral

PROVIDING A NEW APPROACH FOR MODELING AND PARAMETER ESTIMATION OF PROBABILITY DENSITY FUNCTION OF NOISE IN DIGITAL IMAGES

Ano: 2015 | Volume: 37 | Número: 2
Autores: Hanif Yaghoobi, Keivan Maghooli, Alireza Ghahramani Barandagh
Autor Correspondente: Hanif Yaghoobi, | [email protected]

Palavras-chave: noise probability density function, parameter estimation, global optimization, evolutionary algorithms

Resumos Cadastrados

Resumo Inglês:

The main part of the noise in digital images arises when taking pictures or transmission. There is noise in the imagescaptured by the image sensors of the real world. Noise, based on its causes can have different probability density functions.For example, such a model is called the Poisson distribution function of the random nature of photon arrival process that isconsistent with the distribution of pixel values measured. The parameters of the noise probability density function (PDF)can be achieved to some extent the properties of the sensor. But, we need to estimate the parameters for imaging settings. Ifwe assume that the PDF of noise is approximately Gaussian, then we need only to estimate the mean and variance becausethe Gaussian PDF with only two parameters is determined. In fact, in many cases, PDF of noise is not Gaussian and it hasunknown distribution. In this study, we introduce a generalized probability density function for modeling noise in imagesand propose a method to estimate its parameters. Because the generalized probability density function has multipleparameters, so use common parameter estimation techniques such as derivative method to maximize the likelihood functionwould be extremely difficult. In this study, we propose the use of evolutionary algorithms for global optimization. Theresults show that this method accurately estimates the probability density function parameters.