Oriented Object Detection
Oriented object detection focuses on accurately identifying and locating objects with arbitrary rotations in images, particularly prevalent in aerial imagery and remote sensing. Current research emphasizes improving accuracy and efficiency through novel loss functions (e.g., those based on Wasserstein distance or Kalman filtering), semi-supervised learning techniques to leverage unlabeled data, and the adaptation of transformer-based architectures like DETR for oriented bounding box regression. These advancements are crucial for applications requiring precise object localization in challenging scenarios, such as autonomous driving and environmental monitoring.
Papers
SOOD: Towards Semi-Supervised Oriented Object Detection
Wei Hua, Dingkang Liang, Jingyu Li, Xiaolong Liu, Zhikang Zou, Xiaoqing Ye, Xiang Bai
Head-tail Loss: A simple function for Oriented Object Detection and Anchor-free models
Pau Gallés, Xi Chen
H2RBox-v2: Incorporating Symmetry for Boosting Horizontal Box Supervised Oriented Object Detection
Yi Yu, Xue Yang, Qingyun Li, Yue Zhou, Gefan Zhang, Feipeng Da, Junchi Yan