Class-specific Poisson denoising by patch-based importance sampling

06/09/2017
by   Milad Niknejad, et al.
0

In this paper, we address the problem of recovering images degraded by Poisson noise, where the image is known to belong to a specific class. In the proposed method, a dataset of clean patches from images of the class of interest is clustered using multivariate Gaussian distributions. In order to recover the noisy image, each noisy patch is assigned to one of these distributions, and the corresponding minimum mean squared error (MMSE) estimate is obtained. We propose to use a self-normalized importance sampling approach, which is a method of the Monte-Carlo family, for the both determining the most likely distribution and approximating the MMSE estimate of the clean patch. Experimental results shows that our proposed method outperforms other methods for Poisson denoising at a low SNR regime.

READ FULL TEXT
research
06/21/2017

Class-specific image denoising using importance sampling

In this paper, we propose a new image denoising method, tailored to spec...
research
03/01/2018

Poisson Image Denoising Using Best Linear Prediction: A Post-processing Framework

In this paper, we address the problem of denoising images degraded by Po...
research
07/09/2018

External Patch-Based Image Restoration Using Importance Sampling

This paper introduces a new approach to patch-based image restoration ba...
research
09/24/2021

Sample Efficient Model Evaluation

Labelling data is a major practical bottleneck in training and testing c...
research
06/30/2014

Adaptive Image Denoising by Targeted Databases

We propose a data-dependent denoising procedure to restore noisy images....
research
03/25/2020

Patch-based Non-Local Bayesian Networks for Blind Confocal Microscopy Denoising

Confocal microscopy is essential for histopathologic cell visualization ...
research
06/18/2021

Patch-Based Image Restoration using Expectation Propagation

This paper presents a new Expectation Propagation (EP) framework for ima...

Please sign up or login with your details

Forgot password? Click here to reset