Global Localization
Global localization, the task of determining a robot or vehicle's absolute position within a known map, is crucial for autonomous navigation, particularly in GPS-denied environments. Current research emphasizes robust methods for place recognition and pose estimation, often employing deep learning architectures like convolutional neural networks (CNNs) and transformers, operating on various sensor modalities (LiDAR, cameras, and even Wi-Fi signals) and map representations (point clouds, meshes, and neural radiance fields). These advancements are driving progress in robotics, autonomous driving, and other applications requiring precise and reliable localization in diverse and challenging settings.
Papers
Robust Lifelong Indoor LiDAR Localization using the Area Graph
Fujing Xie, Sören Schwertfeger
Occupancy Grid Map to Pose Graph-based Map: Robust BIM-based 2D-LiDAR Localization for Lifelong Indoor Navigation in Changing and Dynamic Environments
Miguel Arturo Vega Torres, Alexander Braun, André Borrmann