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Automatic Segmentation of River and Land in SAR Images: A Deep Learning Approach

机译:SAR图像中河流和土地的自动分割:一种深度学习方法

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摘要

The ubiquitousness of satellite imagery and powerful, computationally efficient Deep Learning frameworks have found profound use in the field of remote sensing. Augmented with easy access to abundant image data made available by different satellites such as LANDSAT and European Space Agency's Copernicus missions, deep learning has opened various avenues of research in monitoring the world's oceans, land, rivers, etc. One significant problem in this direction is the accurate identification and subsequent segmentation of surface-water in images in the microwave spectrum. Typically, standard image processing tools are used to segment the images which are time-inefficient. However, in recent years, deep learning methods for semantic segmentation is the preferred choice given its high accuracy and ease of use. This paper proposes the use of deep-learning approaches such as U-Net to perform an efficient segmentation of river and land. Experimental results show that our approach achieves vastly superior performance on SAR images with pixel accuracy of 0.98 and F1 score of 0.99.
机译:卫星影像的无处不在以及强大,计算效率高的深度学习框架已在遥感领域中得到了广泛应用。通过轻松访问由LANDSAT和欧洲航天局的哥白尼任务等不同卫星提供的丰富图像数据,深度学习为监视世界海洋,陆地,河流等开辟了各种研究渠道。这一方向上的一个重要问题是准确识别并随后分割微波光谱图像中的地表水。通常,使用标准的图像处理工具来分割时间效率低下的图像。但是,近年来,由于语义细分的深度学习方法具有较高的准确性和易用性,因此是首选方法。本文提出使用诸如U-Net之类的深度学习方法对河流和土地进行有效的分割。实验结果表明,我们的方法在SAR图像上具有非常出色的性能,像素精度为0.98,F1得分为0.99。

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