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
MEDL-U: Uncertainty-aware 3D Automatic Annotation based on Evidential Deep Learning
Helbert Paat, Qing Lian, Weilong Yao, Tong Zhang
Mutual Information-calibrated Conformal Feature Fusion for Uncertainty-Aware Multimodal 3D Object Detection at the Edge
Alex C. Stutts, Danilo Erricolo, Sathya Ravi, Theja Tulabandhula, Amit Ranjan Trivedi
3D Adversarial Augmentations for Robust Out-of-Domain Predictions
Alexander Lehner, Stefano Gasperini, Alvaro Marcos-Ramiro, Michael Schmidt, Nassir Navab, Benjamin Busam, Federico Tombari
Ego-Motion Estimation and Dynamic Motion Separation from 3D Point Clouds for Accumulating Data and Improving 3D Object Detection
Patrick Palmer, Martin Krueger, Richard Altendorfer, Torsten Bertram
Perspective-aware Convolution for Monocular 3D Object Detection
Jia-Quan Yu, Soo-Chang Pei
On Offline Evaluation of 3D Object Detection for Autonomous Driving
Tim Schreier, Katrin Renz, Andreas Geiger, Kashyap Chitta
I3DOD: Towards Incremental 3D Object Detection via Prompting
Wenqi Liang, Gan Sun, Chenxi Liu, Jiahua Dong, Kangru Wang