Simultaneous Localization and Mapping
Simultaneous Localization and Mapping (SLAM) is a fundamental robotics problem aiming to build a map of an unknown environment while simultaneously tracking the robot's location within that map. Current research emphasizes improving SLAM's robustness and efficiency across diverse sensor modalities (LiDAR, cameras, IMUs) and challenging environments, often employing techniques like graph-based optimization, neural implicit representations (e.g., Gaussian splatting, NeRFs), and deep learning for feature extraction and loop closure detection. Advances in SLAM are crucial for enabling autonomous navigation in various applications, from autonomous vehicles and robots in industrial settings to medical procedures and exploration of unstructured environments.
Papers
Language-EXtended Indoor SLAM (LEXIS): A Versatile System for Real-time Visual Scene Understanding
Christina Kassab, Matias Mattamala, Lintong Zhang, Maurice Fallon
Adaptive Denoising-Enhanced LiDAR Odometry for Degeneration Resilience in Diverse Terrains
Mazeyu Ji, Wenbo Shi, Yujie Cui, Chengju Liu, Qijun Chen