Polar Perspectives: Evaluating 2-D LiDAR Projections for Robust Place Recognition with Visual Foundation Models
By: Pierpaolo Serio , Giulio Pisaneschi , Andrea Dan Ryals and more
Potential Business Impact:
Helps self-driving cars recognize places better.
This work presents a systematic investigation into how alternative LiDAR-to-image projections affect metric place recognition when coupled with a state-of-the-art vision foundation model. We introduce a modular retrieval pipeline that controls for backbone, aggregation, and evaluation protocol, thereby isolating the influence of the 2-D projection itself. Using consistent geometric and structural channels across multiple datasets and deployment scenarios, we identify the projection characteristics that most strongly determine discriminative power, robustness to environmental variation, and suitability for real-time autonomy. Experiments with different datasets, including integration into an operational place recognition policy, validate the practical relevance of these findings and demonstrate that carefully designed projections can serve as an effective surrogate for end-to-end 3-D learning in LiDAR place recognition.
Similar Papers
Towards classification-based representation learning for place recognition on LiDAR scans
CV and Pattern Recognition
Helps cars know where they are.
A Pseudo Global Fusion Paradigm-Based Cross-View Network for LiDAR-Based Place Recognition
CV and Pattern Recognition
Helps cars find their way without GPS.
ImLPR: Image-based LiDAR Place Recognition using Vision Foundation Models
Robotics
Helps robots know where they are better.