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
Vision-Language Guidance for LiDAR-based Unsupervised 3D Object Detection
Christian Fruhwirth-Reisinger, Wei Lin, Dušan Malić, Horst Bischof, Horst Possegger
L4DR: LiDAR-4DRadar Fusion for Weather-Robust 3D Object Detection
Xun Huang, Ziyu Xu, Hai Wu, Jinlong Wang, Qiming Xia, Yan Xia, Jonathan Li, Kyle Gao, Chenglu Wen, Cheng Wang
Harnessing Uncertainty-aware Bounding Boxes for Unsupervised 3D Object Detection
Ruiyang Zhang, Hu Zhang, Hang Yu, Zhedong Zheng
MonoMM: A Multi-scale Mamba-Enhanced Network for Real-time Monocular 3D Object Detection
Youjia Fu, Zihao Xu, Junsong Fu, Huixia Xue, Shuqiu Tan, Lei Li
Diff3DETR:Agent-based Diffusion Model for Semi-supervised 3D Object Detection
Jiacheng Deng, Jiahao Lu, Tianzhu Zhang
Learning High-resolution Vector Representation from Multi-Camera Images for 3D Object Detection
Zhili Chen, Shuangjie Xu, Maosheng Ye, Zian Qian, Xiaoyi Zou, Dit-Yan Yeung, Qifeng Chen
Explore the LiDAR-Camera Dynamic Adjustment Fusion for 3D Object Detection
Yiran Yang, Xu Gao, Tong Wang, Xin Hao, Yifeng Shi, Xiao Tan, Xiaoqing Ye, Jingdong Wang