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Optical Remote Sensing Image Waters Extraction Technology Based on Deep Learning Context-Unet

机译:基于深度学习Context-Unet的光学遥感图像水域提取技术

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The optical remote sensing images are used to sea-land segmentation which is a difficult task. Due to general deep learning based methods required a large number of refined annotation, however, a large scale optical remote sensing images annotation is very expensive. Therefore, the Context-Unet is proposed to produce accurate sea-land segmentation results by a few annotated training samples. In this paper, we apply the Context-Unet network to the watershed extraction. On the basis of this, we re-compile the loss function to improve the accuracy of watershed extraction. Example: Finally, the date collected from Google Earth service is used to train and test this paper proposed Context-Unet and state-o-the-art methods. The experiments proved that the proposed method outperforms than other methods, and it can achieve 98% precision and 97% recall ratios.
机译:光学遥感图像用于海陆分割,这是一项艰巨的任务。由于一般的基于深度学习的方法需要大量的精炼注释,但是,大规模的光学遥感图像注释非常昂贵。因此,提出了Context-Unet,它通过一些带注释的训练样本来生成准确的海陆分割结果。在本文中,我们将Context-Unet网络应用于分水岭提取。在此基础上,我们重新编译损失函数以提高分水岭提取的准确性。示例:最后,从Google Earth服务收集的日期用于训练和测试本文提出的Context-Unet和最新技术方法。实验证明,该方法优于其他方法,可以达到98%的准确率和97%的查全率。

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