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NAS-YOLOX: a SAR ship detection using neural architecture search and multi-scale attention

Hao WangCollege of Information Engineering, Shanghai Maritime University, Shanghai, People’s Republic of ChinaDezhi HanCollege of Information Engineering, Shanghai Maritime University, Shanghai, People’s Republic of ChinaMingming CuiCollege of Information Engineering, Shanghai Maritime University, Shanghai, People’s Republic of ChinaChongqing ChenCollege of Information Engineering, Shanghai Maritime University, Shanghai, People’s Republic of China
2023en
ABI

Annotatsiya

Due to the advantages of all-weather capability and high resolution, synthetic aperture radar (SAR) image ship detection has been widely applied in the military, civilian, and other domains.However, SAR-based ship detection suffers from limitations such as strong scattering of targets, multiple scales, and background interference, leading to low detection accuracy.To address these limitations, this paper presents a novel SAR ship detection method, NAS-YOLOX, which leverages the efficient feature fusion of the neural architecture search feature pyramid network (NAS-FPN) and the effective feature extraction of the multi-scale attention mechanism.Specifically, NAS-FPN replaces the PAFPN in the baseline YOLOX, greatly enhances the fusion performance of the model's multi-scale feature information, and a dilated convolution feature enhancement module (DFEM) is designed and integrated into the backbone network to improve the network's receptive field and target information extraction capabilities.Furthermore, a multi-scale channel-spatial attention (MCSA) mechanism is conceptualised to enhance focus on target regions, improve small-scale target detection, and adapt to multi-scale targets.Additionally, extensive experiments conducted on benchmark datasets, HRSID and SSDD, demonstrate that NAS-YOLOX achieves comparable or superior performance compared to other state-ofthe-art ship detection models and reaches best accuracies of 91.1% and 97.2% on AP 0.5 , respectively.

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