Learning Semantic Part-Based Graph Structure for 3D Point Cloud Domain Generalization

G Ujwal Sai, Arkadipta De, Vartika Sengar, Anuj Rathore, Daksh Thapar, Manohar Kaul; Proceedings of the Winter Conference on Applications of Computer Vision (WACV), 2025, pp. 2332-2341

Abstract


In 3D data analysis point clouds provide detailed geometric insights for applications like computer vision and geospatial analysis. However their irregularity and diversity make classification challenging especially in domain generalization where models must generalize to new data distributions. Our research introduces a novel 3D Domain Generalization (3DDG) method using Unsupervised Part Decomposition (UPD) and Graph Structure Induction (GSI). The UPD module employs spectral clustering and a modified Shannon entropy method to segment point clouds into meaningful parts. The GSI module constructs a graph of these parts' spatial relationships processed by a Graph Neural Network (GNN) to understand complex geometries. Our approach enhances part-based analysis improving classification accuracy on the PointDA-10 and GraspNetPC-10 datasets by 1.25% and 2.6% respectively. These results highlight our advancements in 3D domain generalization enabling more robust classification models for diverse point cloud data.

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[bibtex]
@InProceedings{Sai_2025_WACV, author = {Sai, G Ujwal and De, Arkadipta and Sengar, Vartika and Rathore, Anuj and Thapar, Daksh and Kaul, Manohar}, title = {Learning Semantic Part-Based Graph Structure for 3D Point Cloud Domain Generalization}, booktitle = {Proceedings of the Winter Conference on Applications of Computer Vision (WACV)}, month = {February}, year = {2025}, pages = {2332-2341} }