This research paper proposes a novel keyframe sampling optimization method for LiDAR-based place recognition that minimizes redundancy while preserving essential information, leading to more efficient and reliable place recognition for robotic applications.
LiDAR-based place recognition systems are evaluated and deployed in dense forest environments, showcasing their performance and potential applications.