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Water deep mapping from HJ-1B satellite data by a deep network model in the sea area of Pearl River Estuary, China

机译:来自HJ-1B卫星数据的水深映射,深网络模型在中国珠江口海域地区

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摘要

Remote sensing (RS) water depth inversion is an important technology and the method of water depth measurement. Taking the waters around the islands outside the Pearl River Estuary as an example, five optical RS depth inversion algorithms were introduced. Then, five water depth inversion models were trained through the HJ-1B satellite RS image and the measured water depth data. The results show that the mean absolute error (MAE) of the deep learning model was the smallest (2.350 m), and that the distribution of predicted water depth points was closest to the actual value. Deep learning has been widely used in RS image classification and recognition and shows its advantages. Therefore, the deep learning model was applied to extract the depth of the shallow water. Meanwhile, the obtained inversion effect map is closest to the actual contour map. The water depth inversion performance of back propagation neural network model is better than that of the radial basis function (RBF) neural network model. Besides, the inversion accuracy of the RBF neural network may be affected due to the small amount of data and the improper number of hidden neurons. The results show broad application prospects of machine learning algorithms in RS water depth inversion. Also, this study provided data support for model optimization, training, and parameter setting.
机译:遥感(RS)水深反转是一种重要的技术和水深测量方法。以珠江河口以外的岛屿围绕岛屿的水域为例,引入了五种光学RS深度反演算法。然后,通过HJ-1B卫星RS图像和测量的水深数据训练五种水深反转模型。结果表明,深度学习模型的平均绝对误差(MAE)是最小(2.350米),并且预测水深点的分布最接近实际值。深度学习已广泛用于RS图像分类和识别并显示其优点。因此,应用了深度学习模型来提取浅水深度。同时,所获得的反转效果图最接近实际轮廓图。后传播神经网络模型的水深反转性能优于径向基函数(RBF)神经网络模型。此外,由于少量的数据和不当的隐蔽神经元,RBF神经网络的反转精度可能受到影响。结果显示了RS水深反演中机器学习算法的广泛应用前景。此外,本研究提供了用于模型优化,培训和参数设置的数据支持。

著录项

  • 来源
    《Oceanographic Literature Review》 |2021年第9期|2080-2080|共1页
  • 作者

    X. Zhao; D. Wang; H. Xu;

  • 作者单位

    Defense Engineering College Army Engineering University Nanjing Jiangsu 210007 China;

    Defense Engineering College Army Engineering University Nanjing Jiangsu 210007 China;

    Defense Engineering College Army Engineering University Nanjing Jiangsu 210007 China;

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  • 正文语种 eng
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