Ship detection is crucial for both military and civilian applications and is a key use of polarimetric SAR (PolSAR). While convolutional neural networks (CNNs) enhance PolSAR ship detection with powerful feature extraction, existing approaches still face challenges in discriminating targets from clutter, detecting multi-scale objects in complex scenes, and achieving real-time detection. To address these issues, we propose a Mamba-CNN hybrid Multi-scale ship detection Network driven by a Dual-perception feature of Doppler and Scattering. First, at the input feature level, a Dual-perception feature of Doppler and Scattering (DDS) is introduced, effectively differentiating ship and clutter pixels to enhance the network’s ship discrimination. Specifically, Doppler characteristics distinguish between moving and stationary targets, while scattering characteristics reveal fundamental differences between targets and clutter. Second, at the network architecture level, a Mamba-CNN hybrid Multi-scale ship detection Network (MCMN) is designed to improve multi-scale ship detection in complex scenarios. It uses a Multi-scale Information Perception Module (MIPM) to adaptively aggregate multi-scale features and a Local-Global Feature Enhancement Module (LGFEM) based on Mamba for long-range context modeling. MCMN remains efficient through feature grouping, pointwise and depthwise convolutions, meeting real-time requirements. Finally, extensive experiments on the GF-3 and SSDD datasets demonstrate the superiority of DDS and MCMN. DDS effectively distinguishes ships from clutter across scenarios. As an input feature, it boosts average F1-score and AP by 4.3% and 4.3%, respectively, over HV intensity, and outperforms other polarization features. MCMN achieves state-of-the-art results, improving AP by 1.2% and 0.8% on the two datasets while reducing parameters by 1.29M, FLOPs by 1.5G, and inference time by 59.2%.
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