LLM-Guided Taxonomy and Hierarchical Uncertainty for 3D Point Cloud Active Learning
LLM-Guided Taxonomy and Hierarchical Uncertainty for 3D Point Cloud Active Learning
We present a novel active learning framework for 3D point cloud semantic segmentation that, for the first time, integrates large language models (LLMs) to construct hierarchical label structures and guide uncertainty-based sample selection. Unlike prior methods that treat labels as flat and independent, our approach leverages LLM prompting to automatically generate multi-level semantic taxonomies and introduces a recursive uncertainty projection mechanism that propagates uncertainty across hierarchy levels. This enables spatially diverse, label-aware point selection that respects the inherent semantic structure of 3D scenes. Experiments on S3DIS and ScanNet v2 show that our method achieves up to 4% mIoU improvement under extremely low annotation budgets (e.g., 0.02%), substantially outperforming existing baselines. Our results highlight the untapped potential of LLMs as knowledge priors in 3D vision and establish hierarchical uncertainty modeling as a powerful paradigm for efficient point cloud annotation.
Chenxi Li、Nuo Chen、Fengyun Tan、Yantong Chen、Bochun Yuan、Tianrui Li、Chongshou Li
计算技术、计算机技术
Chenxi Li,Nuo Chen,Fengyun Tan,Yantong Chen,Bochun Yuan,Tianrui Li,Chongshou Li.LLM-Guided Taxonomy and Hierarchical Uncertainty for 3D Point Cloud Active Learning[EB/OL].(2025-05-24)[2025-07-03].https://arxiv.org/abs/2505.18924.点此复制
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