English

Lattice Identification and Separation: Theory and Algorithm

Image and Video Processing 2024-12-20 v1 Computer Vision and Pattern Recognition Numerical Analysis Metric Geometry Numerical Analysis

Abstract

Motivated by lattice mixture identification and grain boundary detection, we present a framework for lattice pattern representation and comparison, and propose an efficient algorithm for lattice separation. We define new scale and shape descriptors, which helps to considerably reduce the size of equivalence classes of lattice bases. These finitely many equivalence relations are fully characterized by modular group theory. We construct the lattice space L\mathscr{L} based on the equivalent descriptors and define a metric dLd_{\mathscr{L}} to accurately quantify the visual similarities and differences between lattices. Furthermore, we introduce the Lattice Identification and Separation Algorithm (LISA), which identifies each lattice patterns from superposed lattices. LISA finds lattice candidates from the high responses in the image spectrum, then sequentially extracts different layers of lattice patterns one by one. Analyzing the frequency components, we reveal the intricate dependency of LISA's performances on particle radius, lattice density, and relative translations. Various numerical experiments are designed to show LISA's robustness against a large number of lattice layers, moir\'{e} patterns and missing particles.

Keywords

Cite

@article{arxiv.1901.02520,
  title  = {Lattice Identification and Separation: Theory and Algorithm},
  author = {Yuchen He and Sung Ha Kang},
  journal= {arXiv preprint arXiv:1901.02520},
  year   = {2024}
}

Comments

30 Pages plus 4 pages of Appendix. 4 Pages of References. 24 Figures

R2 v1 2026-06-23T07:06:31.844Z