2020Ma RotationInvariant

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Revision as of 06:14, 25 September 2025 by WikiSysop (talk | contribs) (Created page with "== Citation == Ma, C., Bendory, T., Boumal, N., Sigworth, F. and Singer, A. 2020. Heterogeneous multireference alignment for images with application to 2D classification in single particle reconstruction. IEEE Transactions on Image Processing. 29, (2020), 1699–1710. == Abstract == Motivated by the task of 2D classification in single particle reconstruction by cryo-electron microscopy (cryo-EM), we consider the problem of heterogeneous multireference alignment of ima...")
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Citation

Ma, C., Bendory, T., Boumal, N., Sigworth, F. and Singer, A. 2020. Heterogeneous multireference alignment for images with application to 2D classification in single particle reconstruction. IEEE Transactions on Image Processing. 29, (2020), 1699–1710.

Abstract

Motivated by the task of 2D classification in single particle reconstruction by cryo-electron microscopy (cryo-EM), we consider the problem of heterogeneous multireference alignment of images. In this problem, the goal is to estimate a (typically small) set of target images from a (typically large) collection of observations. Each observation is a rotated, noisy version of one of the target images. For each individual observation, neither the rotation nor which target image has been rotated are known. As the noise level in cryo-EM data is high, clustering the observations and estimating individual rotations is challenging. We propose a framework to estimate the target images directly from the observations, completely bypassing the need to cluster or register the images. The framework consists of two steps. First, we estimate rotation-invariant features of the images, such as the bispectrum. These features can be estimated to any desired accuracy, at any noise level, provided sufficiently many observations are collected. Then, we estimate the images from the invariant features. Numerical experiments on synthetic cryo-EM datasets demonstrate the effectiveness of the method. Ultimately, we outline future developments required to apply this method to experimental data.

Keywords

https://ieeexplore.ieee.org/abstract/document/8864095/

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