Paper ID: 2503.21022 • Published Mar 26, 2025
Reconstructing Gridded Data from Higher Autocorrelations
W. Riley Casper, Bobby Orozco
California State University Fullerton
TL;DR
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The higher-order autocorrelations of integer-valued or rational-valued
gridded data sets appear naturally in X-ray crystallography, and have
applications in computer vision systems, correlation tomography, correlation
spectroscopy, and pattern recognition. In this paper, we consider the problem
of reconstructing a gridded data set from its higher-order autocorrelations. We
describe an explicit reconstruction algorithm, and prove that the
autocorrelations up to order 3r + 3 are always sufficient to determine the data
up to translation, where r is the dimension of the grid. We also provide
examples of rational-valued gridded data sets which are not determined by their
autocorrelations up to order 3r + 2.
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