Point Cloud Analysis
Point cloud analysis focuses on extracting meaningful information from unstructured 3D point data, aiming to enable tasks like classification, segmentation, and registration. Current research emphasizes developing efficient and accurate models, exploring architectures like Transformers, MLPs, and Graph Neural Networks, often incorporating techniques such as self-supervised learning and parameter-efficient fine-tuning to address computational limitations and improve robustness to noise and domain shifts. This field is crucial for advancements in various applications, including autonomous driving, robotics, and medical imaging, where processing large-scale 3D data is essential.
Papers
Point Deformable Network with Enhanced Normal Embedding for Point Cloud Analysis
Xingyilang Yin, Xi Yang, Liangchen Liu, Nannan Wang, Xinbo Gao
PointeNet: A Lightweight Framework for Effective and Efficient Point Cloud Analysis
Lipeng Gu, Xuefeng Yan, Liangliang Nan, Dingkun Zhu, Honghua Chen, Weiming Wang, Mingqiang Wei