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A Deep Learning Method for Near-Real-Time Cloud and Cloud Shadow Segmentation from Gaofen-1 Images

机译:GaoFen-1图像近实时云和云阴影分割的深度学习方法

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摘要

In this study, an essential application of remote sensing using deep learning functionality is presented. Gaofen-1 satellite mission, developed by the China National Space Administration (CNSA) for the civilian high-definition Earth observation satellite program, provides near-real-time observations for geographical mapping, environment surveying, and climate change monitoring. Cloud and cloud shadow segmentation are a crucial element to enable automatic near-real-time processing of Gaofen-1 images, and therefore, their performances must be accurately validated. In this paper, a robust multiscale segmentation method based on deep learning is proposed to improve the efficiency and effectiveness of cloud and cloud shadow segmentation from Gaofen-1 images. The proposed method first implements feature map based on the spectral-spatial features from residual convolutional layers and the cloud/cloud shadow footprints extraction based on a novel loss function to generate the final footprints. The experimental results using Gaofen-1 images demonstrate the more reasonable accuracy and efficient computational cost achievement of the proposed method compared to the cloud and cloud shadow segmentation performance of two existing state-of-the-art methods.
机译:在本研究中,提出了使用深度学习功能的遥感的基本应用。高芬-1卫星使命由中国国家空间管理(CNSA)为民用高清地球观测卫星计划提供,为地理映射,环境测绘和气候变化监测提供近实时观察。云和云阴影分割是一种重要的元素,可以实现高芬-1图像的自动近实时处理,因此,必须准确验证它们的性能。本文提出了一种基于深度学习的鲁棒多尺度分割方法,提高了GaoFen-1图像的云和云阴影分割的效率和效果。所提出的方法首先基于来自残余卷积层的光谱空间特征和基于新颖的损耗函数来产生最终占地面积的云/云阴影足迹提取来实现特征图。与云和云阴影分割性能相比,使用高芬-1图像的实验结果展示了所提出的方法的准确性和有效的计算成本成本,而这两种现有最先进方法的云和云阴影分割性能相比。

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