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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Cloud removal in Sentinel-2 imagery using a deep residual neural network and SAR-optical data fusion
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Cloud removal in Sentinel-2 imagery using a deep residual neural network and SAR-optical data fusion

机译:使用深度剩余神经网络和SAR光数据融合,在Sentinel-2图像中删除云删除

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摘要

Optical remote sensing imagery is at the core of many Earth observation activities. The regular, consistent and global-scale nature of the satellite data is exploited in many applications, such as cropland monitoring, climate change assessment, land-cover and land-use classification, and disaster assessment. However, one main problem severely affects the temporal and spatial availability of surface observations, namely cloud cover. The task of removing clouds from optical images has been subject of studies since decades. The advent of the Big Data era in satellite remote sensing opens new possibilities for tackling the problem using powerful data-driven deep learning methods.In this paper, a deep residual neural network architecture is designed to remove clouds from multispectral Sentinel-2 imagery. SAR-optical data fusion is used to exploit the synergistic properties of the two imaging systems to guide the image reconstruction. Additionally, a novel cloud-adaptive loss is proposed to maximize the retainment of original information. The network is trained and tested on a globally sampled dataset comprising real cloudy and cloud-free images. The proposed setup allows to remove even optically thick clouds by reconstructing an optical representation of the underlying land surface structure.
机译:光学遥感图像是许多地球观测活动的核心。卫星数据的常规,一致和全球规模的性质在许多应用中被利用,例如农田监测,气候变化评估,陆地覆盖和土地利用分类以及灾害评估。然而,一个主要问题严重影响了表面观察的时间和空间可用性,即云盖。从数十年来看,从光学图像中删除云的任务是研究的。卫星遥感中的大数据时代的出现开辟了使用强大的数据驱动的深度学习方法解决问题的新可能性。在本文中,深度剩余的神经网络架构旨在从多光谱哨声-2图像中移除云。 SAR-光学数据融合用于利用两个成像系统的协同特性来引导图像重建。另外,提出了一种新颖的云自适应损失来最大化原始信息的保留。在包含真正的多云和无云图像的全局采样数据集上培训并测试网络。所提出的设置允许通过重建底层陆地结构的光学表示来消除甚至光学厚的云。

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