声纳
水下
计算机科学
合成孔径声纳
遥感
计算机视觉
人工智能
地质学
海洋学
作者
Ang Li,Raseeda Hamzah,Gao Yousheng
标识
DOI:10.1109/lgrs.2025.3560769
摘要
Underwater sonar imagery is characterized by small target sizes and low resolution, which can result in detection failures or false positives. To counteract these challenges, we introduce the Under Water Sonar Detection Transformer (US-DETR), an underwater sonar object detection model derived from the Real-Time Detection Transformer (RT-DETR) framework, incorporating attention-based feature fusion. US-DETR includes a novel Enhanced Feature Interaction module (EFI), which enhances the feature extraction network’s ability to perceive global information of the detected target. Additionally, we propose a novel Non-local Attention Feature Fusion (NAFF) module to heighten the network’s sensitivity to the spatial relationships between feature channels across different scales, thereby enhancing its channel position and global information awareness. Experiments are conducted on a benchmark underwater sonar image dataset. Experimental results show that compared to RT-DETR, US-DETR achieves a 2.2% higher mean Average Precision (mAP) and a 2.1% higher F1 Score compared to RT-DETR. The model also strikes an effective balance between detection speed and accuracy, achieving real-time performance of 126 FPS, which can meet the real-time requirements in industrial production.
科研通智能强力驱动
Strongly Powered by AbleSci AI