P-SLCR: Unsupervised Point Cloud Semantic Segmentation via Prototypes Structure Learning and Consistent Reasoning

Authors

  • Lixin Zhan College of Systems Engineering, National University of Defense Technology Laboratory for Big Data and Decision, National University of Defense Technology
  • Jiang Jie College of Systems Engineering, National University of Defense Technology Laboratory for Big Data and Decision, National University of Defense Technology
  • Tianjian Zhou College of Systems Engineering, National University of Defense Technology Laboratory for Big Data and Decision, National University of Defense Technology
  • Yukun Du College of Systems Engineering, National University of Defense Technology
  • Yan Zheng College of Systems Engineering, National University of Defense Technology
  • Xuehu Duan College of Systems Engineering, National University of Defense Technology Laboratory for Big Data and Decision, National University of Defense Technology

DOI:

https://doi.org/10.1609/aaai.v40i15.38227

Abstract

Current semantic segmentation approaches for point cloud scenes heavily rely on manual labeling, while research on unsupervised semantic segmentation methods specifically for raw point clouds is still in its early stages. Unsupervised point cloud learning poses significant challenges due to the absence of annotation information and the lack of pre-training. The development of effective strategies is crucial in this context. In this paper, we propose a novel prototype library-driven unsupervised point cloud semantic segmentation strategy that utilizes Structure Learning and Consistent Reasoning (P-SLCR). First, we propose a Consistent Structure Learning to establish structural feature learning between consistent points and the library of consistent prototypes by selecting high-quality features. Second, we propose a Semantic Relation Consistent Reasoning that constructs a prototype inter-relation matrix between consistent and ambiguous prototype libraries separately. This process ensures the preservation of semantic consistency by imposing constraints on consistent and ambiguous prototype libraries through the prototype inter-relation matrix. Finally, our method was extensively evaluated on the S3DIS, SemanticKITTI, and Scannet datasets, achieving the best performance compared to unsupervised methods. Specifically, the mIoU of 47.1% is achieved for Area-5 of the S3DIS dataset, surpassing the classical fully supervised method PointNet by 2.5%.

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Published

2026-03-14

How to Cite

Zhan, L., Jie, J., Zhou, T., Du, Y., Zheng, Y., & Duan, X. (2026). P-SLCR: Unsupervised Point Cloud Semantic Segmentation via Prototypes Structure Learning and Consistent Reasoning. Proceedings of the AAAI Conference on Artificial Intelligence, 40(15), 12349–12357. https://doi.org/10.1609/aaai.v40i15.38227

Issue

Section

AAAI Technical Track on Computer Vision XII