Loop Closure
Loop closure, a crucial component of Simultaneous Localization and Mapping (SLAM), aims to detect and correct for accumulated errors in robot pose estimation by identifying previously visited locations. Current research focuses on improving loop closure robustness and efficiency across diverse environments (e.g., underwater, agricultural, urban) using various approaches, including graph-based matching, deep learning models for feature extraction and place recognition, and integration with different sensor modalities (LiDAR, radar, cameras, IMUs). These advancements are significantly impacting robotics, autonomous navigation, and 3D scene reconstruction by enabling more accurate and reliable mapping in complex and challenging scenarios.
Papers
Memory Management for Real-Time Appearance-Based Loop Closure Detection
Mathieu Labbé, François Michaud
Online Global Loop Closure Detection for Large-Scale Multi-Session Graph-Based SLAM
Mathieu Labbe, François Michaud
Appearance-Based Loop Closure Detection for Online Large-Scale and Long-Term Operation
Mathieu Labbé, François Michaud