An adaptive variational model for multireference alignment with mixed noise
Abstract
Multireference alignment (MRA) problem is to estimate an underlying signal from a large number of noisy circularly-shifted observations. The existing methods are always proposed under the hypothesis of a single Gaussian noise. However, the hypothesis of a single-type noise is inefficient for solving practical problems like single particle cryo-EM. In this paper, We focus on the MRA problem under the assumption of Gaussian mixture noise. We derive an adaptive variational model by combining maximum a posteriori (MAP) estimation and soft-max method. There are two adaptive weights which are for detecting cyclical shifts and types of noise. Furthermore, we provide a statistical interpretation of our model by using expectation-maximization(EM) algorithm. The existence of a minimizer is mathematically proved. The numerical results show that the proposed model has a more impressive performance than the existing methods when one Gaussian noise is large and the other is small.
Cite
@article{arxiv.2107.10425,
title = {An adaptive variational model for multireference alignment with mixed noise},
author = {Cuicui Zhao and Jun Liu and Xinqi Gong},
journal= {arXiv preprint arXiv:2107.10425},
year = {2021}
}
Comments
This article is a preprint and has not been certified by peer review