Learning Significant Persistent Homology Features for 3D Shape Understanding
Prachi Kudeshia, Jiju Poovvancheri

TL;DR
This paper introduces topologically-enriched 3D shape datasets with persistent homology features and proposes TopoGAT, a deep learning method to select significant topological features, improving shape understanding tasks.
Contribution
It creates topologically-enriched benchmarks and develops TopoGAT, a novel method for learning to identify important persistent homology features in 3D shape analysis.
Findings
Enhanced 3D shape benchmarks with topological data
TopoGAT outperforms traditional statistical feature selection methods
Improved classification and segmentation accuracy using topological features
Abstract
Geometry and topology constitute complementary descriptors of three-dimensional shape, yet existing benchmark datasets primarily capture geometric information while neglecting topological structure. This work addresses this limitation by introducing topologically-enriched versions of ModelNet40 and ShapeNet, where each point cloud is augmented with its corresponding persistent homology features. These benchmarks with the topological signatures establish a foundation for unified geometry-topology learning and enable systematic evaluation of topology-aware deep learning architectures for 3D shape analysis. Building on this foundation, we propose a deep learning-based significant persistent point selection method, \textit{TopoGAT}, that learns to identify the most informative topological features directly from input data and the corresponding topological signatures, circumventing the…
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Taxonomy
TopicsTopological and Geometric Data Analysis · 3D Shape Modeling and Analysis · Computational Geometry and Mesh Generation
