BikeScenes: Online LiDAR Semantic Segmentation for Bicycles
By: Denniz Goren, Holger Caesar
Potential Business Impact:
Helps bikes see and avoid crashes.
The vulnerability of cyclists, exacerbated by the rising popularity of faster e-bikes, motivates adapting automotive perception technologies for bicycle safety. We use our multi-sensor 'SenseBike' research platform to develop and evaluate a 3D LiDAR segmentation approach tailored to bicycles. To bridge the automotive-to-bicycle domain gap, we introduce the novel BikeScenes-lidarseg Dataset, comprising 3021 consecutive LiDAR scans around the university campus of the TU Delft, semantically annotated for 29 dynamic and static classes. By evaluating model performance, we demonstrate that fine-tuning on our BikeScenes dataset achieves a mean Intersection-over-Union (mIoU) of 63.6%, significantly outperforming the 13.8% obtained with SemanticKITTI pre-training alone. This result underscores the necessity and effectiveness of domain-specific training. We highlight key challenges specific to bicycle-mounted, hardware-constrained perception systems and contribute the BikeScenes dataset as a resource for advancing research in cyclist-centric LiDAR segmentation.
Similar Papers
Real Time Semantic Segmentation of High Resolution Automotive LiDAR Scans
Robotics
Helps self-driving cars see better in real-time.
CARScenes: Semantic VLM Dataset for Safe Autonomous Driving
CV and Pattern Recognition
Helps self-driving cars understand driving scenes better.
Semantic VLM Dataset for Safe Autonomous Driving
CV and Pattern Recognition
Helps self-driving cars understand road scenes better.