Point Cloud
Point clouds are collections of 3D data points representing objects or scenes, primarily used for tasks like 3D reconstruction, object recognition, and autonomous navigation. Current research focuses on improving the efficiency and robustness of point cloud processing, employing techniques like deep learning (e.g., transformers, convolutional neural networks), optimal transport, and Gaussian splatting for tasks such as registration, completion, and compression. These advancements are crucial for applications ranging from robotics and autonomous driving to medical imaging and cultural heritage preservation, enabling more accurate and efficient analysis of complex 3D data.
Papers
Transcending Grids: Point Clouds and Surface Representations Powering Neurological Processing
Kishore Babu Nampalle, Pradeep Singh, Vivek Narayan Uppala, Sumit Gangwar, Rajesh Singh Negi, Balasubramanian Raman
Object Re-Identification from Point Clouds
Benjamin Thérien, Chengjie Huang, Adrian Chow, Krzysztof Czarnecki
A Hybrid Semantic-Geometric Approach for Clutter-Resistant Floorplan Generation from Building Point Clouds
Seongyong Kim, Yosuke Yajima, Jisoo Park, Jingdao Chen, Yong K. Cho
GeoMAE: Masked Geometric Target Prediction for Self-supervised Point Cloud Pre-Training
Xiaoyu Tian, Haoxi Ran, Yue Wang, Hang Zhao
Local Region-to-Region Mapping-based Approach to Classify Articulated Objects
Ayush Aggarwal, Rustam Stolkin, Naresh Marturi
VTPNet for 3D deep learning on point cloud
Wei Zhou, Weiwei Jin, Qian Wang, Yifan Wang, Dekui Wang, Xingxing Hao, Yongxiang Yu
DMNR: Unsupervised De-noising of Point Clouds Corrupted by Airborne Particles
Chu Chen, Yanqi Ma, Bingcheng Dong, Junjie Cao
SHS-Net: Learning Signed Hyper Surfaces for Oriented Normal Estimation of Point Clouds
Qing Li, Huifang Feng, Kanle Shi, Yue Gao, Yi Fang, Yu-Shen Liu, Zhizhong Han
D-Net: Learning for Distinctive Point Clouds by Self-Attentive Point Searching and Learnable Feature Fusion
Xinhai Liu, Zhizhong Han, Sanghuk Lee, Yan-Pei Cao, Yu-Shen Liu