LiDAR Datasets

LiDAR datasets are collections of three-dimensional point cloud data acquired by LiDAR sensors, crucial for training and evaluating algorithms in various applications like autonomous driving and 3D mapping. Current research focuses on developing efficient data structures for large-scale mapping, improving unsupervised learning techniques for object segmentation and tracking, and creating more diverse and realistic synthetic datasets to address data scarcity and domain adaptation challenges. These advancements are driving progress in areas such as robust 3D object detection, semantic segmentation, and panoptic segmentation, with significant implications for robotics, autonomous systems, and remote sensing applications.

Papers