Point Cloud Registration
Point cloud registration aims to find the optimal transformation aligning two 3D point clouds, a crucial task in robotics, autonomous driving, and augmented reality. Current research focuses on improving robustness and efficiency, exploring various model architectures including deep learning approaches (e.g., transformers, graph neural networks), and leveraging geometric and semantic information for feature extraction and correspondence matching. These advancements are driving improvements in applications such as 3D scene reconstruction, object manipulation, and LiDAR-based localization, particularly in challenging scenarios with noise, outliers, and low overlap.
Papers
DiffusionPCR: Diffusion Models for Robust Multi-Step Point Cloud Registration
Zhi Chen, Yufan Ren, Tong Zhang, Zheng Dang, Wenbing Tao, Sabine Süsstrunk, Mathieu Salzmann
DIPR: Efficient Point Cloud Registration via Dynamic Iteration
Yang Ai, Qiang Bai, Jindong Li, Xi Yang
Zero-Shot Point Cloud Registration
Weijie Wang, Guofeng Mei, Bin Ren, Xiaoshui Huang, Fabio Poiesi, Luc Van Gool, Nicu Sebe, Bruno Lepri
6D Assembly Pose Estimation by Point Cloud Registration for Robot Manipulation
K. Samarawickrama, G. Sharma, A. Angleraud, R. Pieters
Transformation Decoupling Strategy based on Screw Theory for Deterministic Point Cloud Registration with Gravity Prior
Xinyi Li, Zijian Ma, Yinlong Liu, Walter Zimmer, Hu Cao, Feihu Zhang, Alois Knoll
Cross-Modal Information-Guided Network using Contrastive Learning for Point Cloud Registration
Yifan Xie, Jihua Zhu, Shiqi Li, Pengcheng Shi