RSNet: A Light Framework for The Detection of Multi-scale Remote Sensing Targets
RSNet: A Light Framework for The Detection of Multi-scale Remote Sensing Targets
Recent advancements in synthetic aperture radar (SAR) ship detection using deep learning have significantly improved accuracy and speed, yet effectively detecting small objects in complex backgrounds with fewer parameters remains a challenge. This letter introduces RSNet, a lightweight framework constructed to enhance ship detection in SAR imagery. To ensure accuracy with fewer parameters, we proposed Waveletpool-ContextGuided (WCG) as its backbone, guiding global context understanding through multi-scale wavelet features for effective detection in complex scenes. Additionally, Waveletpool-StarFusion (WSF) is introduced as the neck, employing a residual wavelet element-wise multiplication structure to achieve higher dimensional nonlinear features without increasing network width. The Lightweight-Shared (LS) module is designed as detect components to achieve efficient detection through lightweight shared convolutional structure and multi-format compatibility. Experiments on the SAR Ship Detection Dataset (SSDD) and High-Resolution SAR Image Dataset (HRSID) demonstrate that RSNet achieves a strong balance between lightweight design and detection performance, surpassing many state-of-the-art detectors, reaching 72.5\% and 67.6\% in \textbf{\(\mathbf{mAP_{.50:.95}}\) }respectively with 1.49M parameters. Our code will be released soon.
Chengcheng Chen、Fei Wang、Yugang Chang、Yuhu Shi、Weiming Zeng、Hongyu Chen
雷达遥感技术
Chengcheng Chen,Fei Wang,Yugang Chang,Yuhu Shi,Weiming Zeng,Hongyu Chen.RSNet: A Light Framework for The Detection of Multi-scale Remote Sensing Targets[EB/OL].(2024-10-30)[2025-05-17].https://arxiv.org/abs/2410.23073.点此复制
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