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Title Symmetry Shape Analysis
Authors Iván Sipirán
Publication date 2025
Abstract Symmetry is a fundamental and pervasive property found in
both
natural and man-made objects, playing a key role in aesthetics, structure,
and function. In computational domains, symmetry serves as a powerful cue
for data compression, structure inference, and shape understanding. This
work presents a comprehensive overview of symmetry analysis in 3D shapes,
with a particular focus on computational methods for symmetry detection and
their applications in diverse fields such as CAD, computer vision, medicine,
archaeology, and 3D modeling. We provide formal definitions of exact,
approximate, and partial symmetries in the context of rigid transformations,
and we survey five major categories of detection approaches:
transformation-based, correspondence-based, voting-based,
optimization-based, and learning-based methods. Special emphasis is placed
on recent deep learning techniques, which have significantly advanced the
state of the art yet face challenges in generalization and robustness.
Finally, we identify key open problems and future directions, including the
need for richer and more varied datasets, better generalization of
learning-based models, effective formulations for symmetry detection in
incomplete data, and the integration of symmetry priors in generative
modeling. Our analysis highlights both the progress and the limitations of
current methods and aims to guide future research toward more principled and
capable symmetry-aware systems.
Pages article 1122348
Conference name SIBGRAPI Conference on Graphics, Patterns and Images
Publisher IEEE-xplore
Reference URL View reference page