张蔡辉, 任鹏, 陈艳拢, 初佳兰, 郑斌. 基于RANet互导融合学习的遥感影像浒苔检测方法[J]. 海洋环境科学, 2024, 43(3): 448-457. DOI: 10.12111/j.mes.2023-x-0228
引用本文: 张蔡辉, 任鹏, 陈艳拢, 初佳兰, 郑斌. 基于RANet互导融合学习的遥感影像浒苔检测方法[J]. 海洋环境科学, 2024, 43(3): 448-457. DOI: 10.12111/j.mes.2023-x-0228
ZHANG Caihui, REN Peng, CHEN Yanlong, CHU Jialan, ZHENG Bin. Detection method of enteromorpha prolifera in remote sensing images based on RANet mutual guidance fusion learning[J]. Chinese Journal of MARINE ENVIRONMENTAL SCIENCE, 2024, 43(3): 448-457. DOI: 10.12111/j.mes.2023-x-0228
Citation: ZHANG Caihui, REN Peng, CHEN Yanlong, CHU Jialan, ZHENG Bin. Detection method of enteromorpha prolifera in remote sensing images based on RANet mutual guidance fusion learning[J]. Chinese Journal of MARINE ENVIRONMENTAL SCIENCE, 2024, 43(3): 448-457. DOI: 10.12111/j.mes.2023-x-0228

基于RANet互导融合学习的遥感影像浒苔检测方法

Detection method of enteromorpha prolifera in remote sensing images based on RANet mutual guidance fusion learning

  • 摘要: 针对遥感影像浒苔检测标注数据少的问题,本文提出一种基于残差注意力网络(residual attention network,RANet)互导融合学习的浒苔检测方法。首先,本文搭建了残差卷积模块联合注意力机制的RANet模型用于浒苔检测。其次,在双网络架构下利用两个RANet模型相互引导,挑选双模型融合后的高置信度伪标签,结合数据增强来逐步扩充训练集,从而对双模型迭代学习实现高精度的浒苔检测。实验结果表明,与阈值法、生成对抗网络(generative adversarial network, GAN)、经典分割模型(FCN、SegNet、UNet、PSPNet和DeepLabv3+)相比,基于RANet互导融合学习的浒苔检测方法具有更高的检测准确性。本研究构建的模型具备进行大规模浒苔监测的可行性,可为大规模浒苔暴发时的灾情监测提供技术支撑。

     

    Abstract: Aiming at the problem of insufficient labeled data in remote sensing image detection of enteromorpha prolifera, this paper proposes a method for enteromorpha prolifera detection based on residual attention network (RANet) mutual guidance fusion learning. Firstly, this paper builds a RANet model with residual convolution module and attention mechanism for enteromorpha prolifera detection. Secondly, the two RANet models are used to guide each other under the dual network architecture, and the high confidence pseudo labels after the fusion of the double models are selected, and the training set is gradually expanded by combining data augmentation, so as to achieve high-precision enteromorpha prolifera detection by the iterative learning of the double models. The experimental results show that compared with threshold method, GAN, classical segmentation model (FCN, UNet, SegNet, PSPNet and DeepLabv3+), the detection method based on RANet mutual guidance fusion learning has higher detection accuracy. The model constructed in this study has feasibility for large-scale enteromorpha prolifera monitoring, which could provide technical support for the disaster monitoring of large-scale enteromorpha prolifera outbreak.

     

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