Point Cloud Map
Point cloud maps are three-dimensional representations of environments generated from sensor data, primarily LiDAR, used for tasks like autonomous navigation and 3D scene understanding. Current research focuses on improving map accuracy and robustness by addressing challenges such as dynamic object removal, efficient map merging, and precise registration of different sensor modalities (e.g., LiDAR and cameras). Algorithms leveraging bundle adjustment, iterative closest point (ICP) methods, and deep learning architectures like transformers are prominent, with a growing emphasis on semantic understanding and the integration of large language models for enhanced interaction and manipulation of point cloud data. These advancements are crucial for applications in robotics, autonomous driving, and smart space management, enabling more reliable and efficient systems.
Papers
FRAME: A Modular Framework for Autonomous Map Merging: Advancements in the Field
Nikolaos Stathoulopoulos, Björn Lindqvist, Anton Koval, Ali-akbar Agha-mohammadi, George Nikolakopoulos
Open-Set 3D Semantic Instance Maps for Vision Language Navigation -- O3D-SIM
Laksh Nanwani, Kumaraditya Gupta, Aditya Mathur, Swayam Agrawal, A. H. Abdul Hafez, K. Madhava Krishna
Self-Supervised Depth Correction of Lidar Measurements from Map Consistency Loss
Ruslan Agishev, Tomáš Pětříček, Karel Zimmermann
I2P-Rec: Recognizing Images on Large-scale Point Cloud Maps through Bird's Eye View Projections
Shuhang Zheng, Yixuan Li, Zhu Yu, Beinan Yu, Si-Yuan Cao, Minhang Wang, Jintao Xu, Rui Ai, Weihao Gu, Lun Luo, Hui-Liang Shen