This study focuses on the image denoising and deconvolution problem in case of mixed Gaussian–Poisson noise. By using a maximum a posteriori estimator, we derive a new variational formulation whose minimisation provides the desired restored image. The new functional is composed of the total variation (TV) regularisation term, the Kullback–Leibler divergence term for Poisson noise and the L2 norm fidelity term for Gaussian noise. We consider a dual formulation for the TV term, thus changing the minimisation into a minimax problem. A fast iterative algorithm is derived by using the proximal point method to compute the saddle point of the minimax problem. We show the capability of our model both on synthetic examples and on real images of low-count fluorescence microscopy.

Image restoration with Poisson–Gaussian mixed noise / Alessandro Lanza; Serena Morigi; Fiorella Sgallari; You-Wei Wen. - In: COMPUTER METHODS IN BIOMECHANICS AND BIOMEDICAL ENGINEERING: IMAGING & VISUALIZATION. - ISSN 2168-1163. - STAMPA. - 2:1(2014), pp. 12-24. [10.1080/21681163.2013.811039]

Image restoration with Poisson–Gaussian mixed noise

LANZA, ALESSANDRO;MORIGI, SERENA;SGALLARI, FIORELLA;
2014

Abstract

This study focuses on the image denoising and deconvolution problem in case of mixed Gaussian–Poisson noise. By using a maximum a posteriori estimator, we derive a new variational formulation whose minimisation provides the desired restored image. The new functional is composed of the total variation (TV) regularisation term, the Kullback–Leibler divergence term for Poisson noise and the L2 norm fidelity term for Gaussian noise. We consider a dual formulation for the TV term, thus changing the minimisation into a minimax problem. A fast iterative algorithm is derived by using the proximal point method to compute the saddle point of the minimax problem. We show the capability of our model both on synthetic examples and on real images of low-count fluorescence microscopy.
2014
Image restoration with Poisson–Gaussian mixed noise / Alessandro Lanza; Serena Morigi; Fiorella Sgallari; You-Wei Wen. - In: COMPUTER METHODS IN BIOMECHANICS AND BIOMEDICAL ENGINEERING: IMAGING & VISUALIZATION. - ISSN 2168-1163. - STAMPA. - 2:1(2014), pp. 12-24. [10.1080/21681163.2013.811039]
Alessandro Lanza; Serena Morigi; Fiorella Sgallari; You-Wei Wen
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/280116
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