3D Detection
3D object detection aims to accurately identify and locate objects in three-dimensional space from various sensor inputs, primarily for applications like autonomous driving and robotics. Current research emphasizes improving robustness and generalization across diverse datasets and challenging conditions (e.g., varying weather, occlusions) using techniques like multi-dataset training, temporal information fusion, and diffusion models. Prominent approaches involve transformer-based architectures, BEV (bird's-eye-view) transformations, and innovative data augmentation strategies to address data scarcity and annotation costs. Advancements in this field are crucial for enhancing the safety and reliability of autonomous systems and other applications requiring precise 3D scene understanding.
Papers
LET-3D-AP: Longitudinal Error Tolerant 3D Average Precision for Camera-Only 3D Detection
Wei-Chih Hung, Vincent Casser, Henrik Kretzschmar, Jyh-Jing Hwang, Dragomir Anguelov
Real3D-Aug: Point Cloud Augmentation by Placing Real Objects with Occlusion Handling for 3D Detection and Segmentation
Petr Šebek, Šimon Pokorný, Patrik Vacek, Tomáš Svoboda
MonoGround: Detecting Monocular 3D Objects from the Ground
Zequn Qin, Xi Li
Cost-Aware Evaluation and Model Scaling for LiDAR-Based 3D Object Detection
Xiaofang Wang, Kris M. Kitani
3D Object Detection with a Self-supervised Lidar Scene Flow Backbone
Ekim Yurtsever, Emeç Erçelik, Mingyu Liu, Zhijie Yang, Hanzhen Zhang, Pınar Topçam, Maximilian Listl, Yılmaz Kaan Çaylı, Alois Knoll