3D Object Detection
3D object detection aims to accurately identify and locate objects within three-dimensional space, primarily using sensor data like LiDAR and cameras. Current research emphasizes improving accuracy and efficiency through advanced model architectures such as PointPillars, transformers, and Gaussian splatting, often incorporating multimodal fusion techniques and active learning strategies to reduce annotation costs. This field is crucial for autonomous driving, robotics, and augmented reality, with ongoing efforts focused on enhancing robustness, generalization across diverse datasets, and reducing computational demands for real-time applications.
Papers
CR3DT: Camera-RADAR Fusion for 3D Detection and Tracking
Nicolas Baumann, Michael Baumgartner, Edoardo Ghignone, Jonas Kühne, Tobias Fischer, Yung-Hsu Yang, Marc Pollefeys, Michele Magno
IS-Fusion: Instance-Scene Collaborative Fusion for Multimodal 3D Object Detection
Junbo Yin, Jianbing Shen, Runnan Chen, Wei Li, Ruigang Yang, Pascal Frossard, Wenguan Wang
Eliminating Cross-modal Conflicts in BEV Space for LiDAR-Camera 3D Object Detection
Jiahui Fu, Chen Gao, Zitian Wang, Lirong Yang, Xiaofei Wang, Beipeng Mu, Si Liu
SparseLIF: High-Performance Sparse LiDAR-Camera Fusion for 3D Object Detection
Hongcheng Zhang, Liu Liang, Pengxin Zeng, Xiao Song, Zhe Wang
LISO: Lidar-only Self-Supervised 3D Object Detection
Stefan Baur, Frank Moosmann, Andreas Geiger
3D Semantic Segmentation-Driven Representations for 3D Object Detection
Hayeon O, Kunsoo Huh
Fine-Grained Pillar Feature Encoding Via Spatio-Temporal Virtual Grid for 3D Object Detection
Konyul Park, Yecheol Kim, Junho Koh, Byungwoo Park, Jun Won Choi