Evaluation and Deployment of LiDAR-Based Place Recognition in Dense Forests
Haedam Oh, Nived Chebrolu, Matias Mattamala, Leonard FreiÃmuth, Maurice Fallon
Abstract
Many LiDAR place recognition systems have been developed and tested specifically for urban driving scenarios. Their performance in natural environments such as forests and woodlands have been studied less closely. In this paper, we ana- lyzed the capabilities of four different LiDAR place recognition systems, both handcrafted and learning-based methods, using LiDAR data collected with a handheld device and legged robot within dense forest environments. In particular, we focused on evaluating localization where there is significant translational and orientation difference between corresponding LiDAR scan pairs. This is particularly important for forest survey systems where the sensor or robot does not follow a defined road or path. Extending our analysis we then incorporated the best performing approach, Logg3dNet, into a full 6-DoF pose estima- tion system—introducing several verification layers for precise registration. We demonstrated the performance of our methods in three operational modes: online SLAM, offline multi-mission SLAM map merging, and relocalization into a prior map. We evaluated these modes using data captured in forests from three different countries, achieving 80 % of correct loop closures candidates with baseline distances up to 5 m, and 60 % up to 10 m. Video at: https://youtu.be/86l-oxjwmjY 1The authors are with the University of Oxford, UK. {haedam, nived, matias, mfallon}@robots.ox.ac.uk Leonard Freißmuth is also with the Technical University of Munich, Germany. {l.freissmuth}@tum.de This work has been funded by the Horizon Europe project DigiForest (101070405) and a Royal Society University Research Fellowship (M. Fallon).