Heterogeneous multireference alignment: a single pass approach
Abstract
Multireference alignment (MRA) is the problem of estimating a signal from many noisy and cyclically shifted copies of itself. In this paper, we consider an extension called heterogeneous MRA, where signals must be estimated, and each observation comes from one of those signals, unknown to us. This is a simplified model for the heterogeneity problem notably arising in cryo-electron microscopy. We propose an algorithm which estimates the signals without estimating either the shifts or the classes of the observations. It requires only one pass over the data and is based on low-order moments that are invariant under cyclic shifts. Given sufficiently many measurements, one can estimate these invariant features averaged over the signals. We then design a smooth, non-convex optimization problem to compute a set of signals which are consistent with the estimated averaged features. We find that, in many cases, the proposed approach estimates the set of signals accurately despite non-convexity, and conjecture the number of signals that can be resolved as a function of the signal length is on the order of .
Cite
@article{arxiv.1710.02590,
title = {Heterogeneous multireference alignment: a single pass approach},
author = {Nicolas Boumal and Tamir Bendory and Roy R. Lederman and Amit Singer},
journal= {arXiv preprint arXiv:1710.02590},
year = {2018}
}
Comments
6 pages, 3 figures