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Article

Geometric Learning of Canonical Parameterizations of 2D-Curves

by
Ioana Ciuclea
1,†,
Giorgio Longari
2,3,† and
Alice Barbora Tumpach
2,3,4,*,†
1
Faculty of Physics and Mathematics, Department of Mathematics, West University of Timişoara, Vasile Pârvan 4, 300392 Timişoara, Romania
2
Computer Vision Lab, Technische Universität Wien, Karlsplatz 13, 1040 Vienna, Austria
3
Wolfgang Pauli Institut, Oskar-Morgensternplatz 1, 1090 Vienna, Austria
4
Laboratoire Painlevé, Lille University, 59650 Villeneuve d’Ascq, France
*
Author to whom correspondence should be addressed.
The authors are listed in alphabetic order, see the Author contributions section for each contribution.
Entropy 2026, 28(1), 48; https://doi.org/10.3390/e28010048 (registering DOI)
Submission received: 20 October 2025 / Revised: 7 December 2025 / Accepted: 15 December 2025 / Published: 30 December 2025
(This article belongs to the Special Issue Lie Group Machine Learning)

Abstract

Most datasets encountered in computer vision and medical applications present symmetries that should be taken into account in classification tasks. A typical example is the symmetry by rotation and/or scaling in object detection. A common way to build neural networks that learn the symmetries is to use data augmentation. In order to avoid data augmentation and build more sustainable algorithms, we present an alternative method to mod out symmetries based on the notion of section of a principal fiber bundle. This framework allows to use simple metrics on the space of objects in order to measure dissimilarities between orbits of objects under the symmetry group. Moreover, the section used can be optimized to maximize separation of classes. We illustrate this methodology on a dataset of contours of objects for the groups of translations, rotations, scalings and reparameterizations. In particular, we present a 2-parameter family of canonical parameterizations of curves, containing the constant-speed parameterization as a special case, which we believe is interesting in its own right. We hope that this simple application will serve to convey the geometric concepts underlying this method, which have a wide range of possible applications.
Keywords: principal fiber bundles; reparameterizations; group of diffeomorphisms; shape-preserving groups; plane curves; section of a fiber bundle; arc-length parameterization; curvature-weighted parameterization principal fiber bundles; reparameterizations; group of diffeomorphisms; shape-preserving groups; plane curves; section of a fiber bundle; arc-length parameterization; curvature-weighted parameterization

Share and Cite

MDPI and ACS Style

Ciuclea, I.; Longari, G.; Tumpach, A.B. Geometric Learning of Canonical Parameterizations of 2D-Curves. Entropy 2026, 28, 48. https://doi.org/10.3390/e28010048

AMA Style

Ciuclea I, Longari G, Tumpach AB. Geometric Learning of Canonical Parameterizations of 2D-Curves. Entropy. 2026; 28(1):48. https://doi.org/10.3390/e28010048

Chicago/Turabian Style

Ciuclea, Ioana, Giorgio Longari, and Alice Barbora Tumpach. 2026. "Geometric Learning of Canonical Parameterizations of 2D-Curves" Entropy 28, no. 1: 48. https://doi.org/10.3390/e28010048

APA Style

Ciuclea, I., Longari, G., & Tumpach, A. B. (2026). Geometric Learning of Canonical Parameterizations of 2D-Curves. Entropy, 28(1), 48. https://doi.org/10.3390/e28010048

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