- Label Efficient
- Unsupervised / Self-supervised learning: CO3 [1]
- Weakly supervised learning: SSC3OD [2]
- Domain adaption: S2R-ViT [3], DUSA [4]
- Model Adaptation
- MACP [5]
- Open Heterogeneous Collaborative Perception
- HEAL [6]
- New Perception Tasks
- Multi-Object Cooperative Tracking: DMSTrack [7], MOT-CUP [8]
- Collaborative Semantic Occupancy Prediction: CoHFF [9]
- CO3: Cooperative Unsupervised 3D Representation Learning for Autonomous Driving (ICLR'23) [
pdf
] [code
] - SSC3OD: Sparsely Supervised Collaborative 3D Object Detection from LiDAR Point Clouds (SMC'23) [
pdf
] - S2R-ViT for Multi-Agent Cooperative Perception: Bridging the Gap from Simulation to Reality (arXiv'23) [
pdf
] - DUSA: Decoupled Unsupervised Sim2Real Adaptation for Vehicle-to-Everything Collaborative Perception (MM'23) [
pdf
] [code
] - MACP: Efficient Model Adaptation for Cooperative Perception (WACV'24) [
pdf
] [code
] - HEAL: An Extensible Framework for Open Heterogeneous Collaborative Perception (ICLR'24) [
pdf
] [code
] - Probabilistic 3D Multi-Object Cooperative Tracking for Autonomous Driving via Differentiable Multi-Sensor Kalman Filter (ICRA'24) [
pdf
] [code
] - Collaborative Multi-Object Tracking with Conformal Uncertainty Propagation (RAL'24) [
pdf
] [code
] - Collaborative Semantic Occupancy Prediction with Hybrid Feature Fusion in Connected Automated Vehicles (CVPR'24) [
pdf
] [code
]