3D Detector
3D object detection aims to accurately identify and locate objects in three-dimensional space, a crucial task for autonomous vehicles and robotics. Current research emphasizes improving efficiency (e.g., through token compression in Vision Transformer-based models), robustness (e.g., via cross-weather knowledge distillation and adversarial training), and data efficiency (e.g., using weakly supervised or semi-supervised learning with limited annotations, including coarse clicks or 2D labels). These advancements are vital for deploying reliable 3D detectors in real-world applications, particularly in autonomous driving where safety and accuracy are paramount.
Papers
Uni3DETR: Unified 3D Detection Transformer
Zhenyu Wang, Yali Li, Xi Chen, Hengshuang Zhao, Shengjin Wang
Rotation Matters: Generalized Monocular 3D Object Detection for Various Camera Systems
SungHo Moon, JinWoo Bae, SungHoon Im
Anyview: Generalizable Indoor 3D Object Detection with Variable Frames
Zhenyu Wu, Xiuwei Xu, Ziwei Wang, Chong Xia, Linqing Zhao, Jiwen Lu, Haibin Yan