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Fast Steerable Principal Component Analysis

2 December 2014
Zhizhen Zhao
Y. Shkolnisky
A. Singer
ArXiv (abs)PDFHTML
Abstract

Cryo-electron microscopy nowadays often requires the analysis of hundreds of thousands of 2D images as large as a few hundred pixels in each direction. Here we introduce an algorithm that efficiently and accurately performs principal component analysis (PCA) for a large set of two-dimensional images, and, for each image, the set of its uniform rotations in the plane and their reflections. For a dataset consisting of nnn images of size L×LL \times LL×L pixels, the computational complexity of our algorithm is O(nL3+L4)O(nL^3 + L^4)O(nL3+L4), while existing algorithms take O(nL4)O(nL^4)O(nL4). The new algorithm computes the expansion coefficients of the images in a Fourier-Bessel basis efficiently using the non-uniform fast Fourier transform. We compare the accuracy and efficiency of the new algorithm with traditional PCA and existing algorithms for steerable PCA.

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