Objective, Probabilistic, and Generalized Noise Level Dependent Classifications of sets of more or less 2D Periodic Images into Plane Symmetry Groups
Andrew Dempsey, Peter Moeck

TL;DR
This paper introduces a probabilistic Fourier space method for classifying 2D periodic images into plane symmetry groups, addressing noise and limited periodic repeats, with objective and updateable results.
Contribution
It presents a novel Fourier space approach using Geometric Akaike Information Criterion for symmetry classification, overcoming subjective thresholds and noise limitations.
Findings
Successfully classifies synthetic images with varying noise levels.
Provides probabilistic, noise-dependent symmetry estimates.
Offers a solution for images with few periodic repeats.
Abstract
Crystallographic symmetry classifications from real-world images with periodicities in two dimensions (2D) are of interest to crystallographers and practitioners of computer vision studies alike. Currently, these classifications are typically made by both communities in a subjective manner that relies on arbitrary thresholds for judgments, and are reported under the pretense of being definitive, which is impossible. Moreover, the computer vision community tends to use direct space methods to make such classifications instead of more powerful and computationally efficient Fourier space methods. This is because the proper functioning of those methods requires more periodic repeats of a unit cell motif than are commonly present in images analyzed by the computer vision community. We demonstrate a novel approach to plane symmetry group classifications that is enabled by Kenichi Kanatani's…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Fractal and DNA sequence analysis · Medical Image Segmentation Techniques
