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SA-U-Net plus plus : SAR marine floating raft aquaculture identification based on semantic segmentation and ISAR augmentation

机译:SA-U-Net Plus Plus:基于语义分割和ISAR增强的SAR海洋浮动筏水产养殖识别

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摘要

Marine floating raft aquaculture (FRA) monitoring is vital for environment protection and mariculture management. Synthetic aperture radar (SAR) could provide high-quality remote sensing images under all weather conditions compared with the existing optical remote-sensing-based methods. Traditional SAR monitoring methods extract the pixel feature of marine FRA in single patches, which commonly leads to poor generalization. We propose a self-attention semantic segmentation method based on modified U-Net++ (SA-U-Net++) for FRA segmentation, which could automatically extract semantic feature information, and provide superior performance under complicated scenes. The proposed self-attention backbone could help to extract more precise features and enhance the overall accuracy. Furthermore, we propose a FRA-ISAR data generation method based on inverse SAR (ISAR) imaging to alleviate the sample shortage problem. We introduce the semantic segmentation method into FRA-SAR segmentation for the first time. The experiments verify the effectiveness and superiority of SAR FRA segmentation based on the proposed SA-U-Net++ model compared with the existed semantic segmentation approaches. (C) 2021 Society of Photo-Optical Instrumentation Engineers (SPIE)
机译:海洋浮筏养殖(FRA)监测对环境保护和海水养殖管理至关重要。与现有的光学遥感方法相比,合成孔径雷达(SAR)能够在全天候条件下提供高质量的遥感图像。传统的SAR监测方法在单个斑块中提取海洋FRA的像素特征,这通常会导致泛化能力差。我们提出了一种基于改进的U-Net++(SA-U-Net++)的自关注语义分割方法,该方法可以自动提取语义特征信息,并在复杂场景下提供优越的性能。提出的自我注意主干可以帮助提取更精确的特征,并提高整体准确性。此外,我们还提出了一种基于逆合成孔径雷达(ISAR)成像的FRA-ISAR数据生成方法,以缓解样本不足问题。我们首次将语义分割方法引入FRA-SAR分割中。实验验证了基于SA-U-Net++模型的SAR-FRA分割方法与现有语义分割方法的有效性和优越性。(c)2021光光学仪器工程师学会(SPIE)

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