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The data exhibit a severe type of signal-dependent noise, assumed to obey a Poisson distribution:

The Prox-it-Ans is a deconvolution algorithm for data blurred and degraded by Poisson noise where the Anscombe transform is used explicitly in the problem formulation, resulting in a nonlinear convex, AWGN deconvolution problem in the Bayesian

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The data exhibit a severe type of signal-dependent noise, assumed to obey a Poisson distribution:

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  1. The Prox-it-Ans is a deconvolution algorithm for data blurred and degraded by Poisson noise where the Anscombe transform is used explicitly in the problem formulation, resulting in a nonlinear convex, AWGN deconvolution problem in the Bayesian framework with a non-smooth sparsity-promoting penalty over the representation coefficients in a dictionary of transforms (curvelets, wavelets) of the image to be restored. The solution is obtained using a fast proximal backward-forward splitting iteration algorithm. The prior parameter is selected using the generalized cross validation (GCV) criterion. variable change Convex optimization Denoising of Fluorescence Confocal Image Sequences: a Comparison Study 1,2Isabel Rodrigues (irodrigues@isr.ist.utl.pt) and 1,3João Sanches (jmrs@isr.ist.utl.pt) 1Institute for Systems and Robotics2Instituto Superior de Engenharia de Lisboa3Instituto Superior Técnico Lisbon, Portugal Abstract Fluorescence laser scanning confocal microscopy (FLSCM) imaging is now a common biomedical tool that researchers make used in the study of dynamic processes occurring inside the living cells. Although fluorescent confocal microscopes are reliable instruments, the acquired images are usually corrupted by a severe type of Poisson noise due to the small amount of acquired radiation (low photon-count images) and to the huge optico-electronics amplification. These effects are even more pernicious when very low intensity incident radiation is used to avoid phototoxicity. In this work a convex, Bayesian denoising algorithm, using a log-Euclidean total variation regularization prior in space and a log-Euclidean regularization prior in time is described to remove the Poisson multiplicative noise corrupting the FLSCM images. Since model validation is a very important step, a comparison with five state-of-the-art algorithms is presented. Synthetic data were generated and denoised with the described algorithm and with each one of the other five. Results using the Csiszár I-divergence and the SNR figures-of-merit are presented. Comparison Algorithms Prox-it-Ans: deconvolution algorithm for data blurred and degraded by Poisson noise. The Anscombe transform is used explicitly in the problem formulation, resulting in a nonlinear convex, AWGN deconvolution problem in the Bayesian framework with a non-smooth sparsity-promoting penalty over the representation coefficients in a dictionary of transforms (curvelets, wavelets) of the image to be restored. The solution is obtained using a fast proximal backward-forward splitting iteration algorithm. Prox-it-Gauss: naive version of the Prox-it-Ans where the Anscombe transform is performed first. The Non-local Means algorithm (NLM) non-local averaging technique, operating on all pixels in the image with the same characteristic. Problem Formulation The BiShrink: locally adaptive 3-D image denoising algorithm using dual-tree complex wavelet transforms with the bivariate shrinkage thresholding function. • The data exhibit a severe type of signal-dependent noise, assumed to obey a Poisson distribution: • Blur is neglected • Independence of the observations assumed • Bayesian framework: MAP estimate • X as Markov Random Field (MRF) - Gibbs distribution for X • Anisotropic prior terms • log-Euclidean –TV edge preserving priors in space • log-Euclidean priors in time The BLF: 2-D algorithm that smoothes images but preserves edges by means of a nonlinear combination of nearby image values. The data: LSFCM image sequences The optimization problem Signal to noise ratio (SNR) results Csiszaer I-divergence results The energy function A comparison of the performance of the proposed denoising algorithm with five state-of-the-art algorithms is presented. Results with synthetic data shows that the proposed algorithm outperforms all the others when the SNR and I-Divergence are used as figures-of-merit. The CPU time outperforms all but one algorithms. The data fidelity term Non-convex optimization CPU time to process the synthetic sequence 64x64x64 pixels Example with real data (Hela cell) Experimental Results Synthetic Data • A 64 × 64 pixels base image with a cell nucleus shape was generated. • To each pixel of the base images, an exponential decay along the time (t = 1, ..., 64) was applied to simulate the intensity decrease due to the photobleaching effect in a FLIP experiment, with rates equal to 0.07 for every pixel in the range of 10 (in pixel units) from the center coordinates of the hole (dark circle) and equal to 0.02 for the rest of the image. • The true sequence was corrupted with Poisson noise. • SNR range: 3 dB to 9 dB. Data provided by the Instituto de Medicina Molecular de Lisboa RECPAD - 14ª Conferência Portuguesa de Reconhecimento de Padrões, Aveiro, 23 de Outubro de 2009

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