Learning-based Real-time Detection of Intrinsic Reflectional Symmetry
Yi-Ling Qiao, Lin Gao, Shu-Zhi Liu, Ligang Liu, Yu-Kun Lai, Xilin Chen

TL;DR
This paper introduces a fast, learning-based method for detecting intrinsic reflectional symmetry in 3D shapes by predicting eigenfunction signs with a neural network, outperforming previous approaches in speed and accuracy.
Contribution
It proposes a novel deep neural network that predicts eigenfunction signs to detect intrinsic symmetry, avoiding sampling and improving robustness and efficiency.
Findings
Over 100 times faster than previous methods.
Achieves higher symmetry detection accuracy.
Robust to topology changes and incomplete shapes.
Abstract
Reflectional symmetry is ubiquitous in nature. While extrinsic reflectional symmetry can be easily parametrized and detected, intrinsic symmetry is much harder due to the high solution space. Previous works usually solve this problem by voting or sampling, which suffer from high computational cost and randomness. In this paper, we propose \YL{a} learning-based approach to intrinsic reflectional symmetry detection. Instead of directly finding symmetric point pairs, we parametrize this self-isometry using a functional map matrix, which can be easily computed given the signs of Laplacian eigenfunctions under the symmetric mapping. Therefore, we train a novel deep neural network to predict the sign of each eigenfunction under symmetry, which in addition takes the first few eigenfunctions as intrinsic features to characterize the mesh while avoiding coping with the connectivity explicitly.…
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Taxonomy
TopicsTopological and Geometric Data Analysis · 3D Shape Modeling and Analysis · Computer Graphics and Visualization Techniques
