CVLGDec 20, 2018

Steerable $e$PCA: Rotationally Invariant Exponential Family PCA

arXiv:1812.08789v33 citations
Originality Incremental advance
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This addresses the problem of accurate covariance estimation in photon-limited imaging for researchers in fields like XFEL single molecule imaging, but it is incremental as it builds on existing innovations.

The paper tackles covariance estimation for low-photon count images, such as in XFEL single molecule imaging, by developing steerable ePCA, which combines Poisson-aware PCA with rotation-invariant methods to improve accuracy, demonstrating efficiency in simulated datasets.

In photon-limited imaging, the pixel intensities are affected by photon count noise. Many applications, such as 3-D reconstruction using correlation analysis in X-ray free electron laser (XFEL) single molecule imaging, require an accurate estimation of the covariance of the underlying 2-D clean images. Accurate estimation of the covariance from low-photon count images must take into account that pixel intensities are Poisson distributed, hence the classical sample covariance estimator is sub-optimal. Moreover, in single molecule imaging, including in-plane rotated copies of all images could further improve the accuracy of covariance estimation. In this paper we introduce an efficient and accurate algorithm for covariance matrix estimation of count noise 2-D images, including their uniform planar rotations and possibly reflections. Our procedure, steerable $e$PCA, combines in a novel way two recently introduced innovations. The first is a methodology for principal component analysis (PCA) for Poisson distributions, and more generally, exponential family distributions, called $e$PCA. The second is steerable PCA, a fast and accurate procedure for including all planar rotations for PCA. The resulting principal components are invariant to the rotation and reflection of the input images. We demonstrate the efficiency and accuracy of steerable $e$PCA in numerical experiments involving simulated XFEL datasets and rotated Yale B face data.

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