修补
云计算
过度拟合
计算机科学
深度学习
人工智能
背景(考古学)
遥感
土地覆盖
卫星图像
像素
云量
基本事实
图像(数学)
地质学
土地利用
人工神经网络
工程类
土木工程
古生物学
操作系统
作者
Mikolaj Czerkawski,Priti Upadhyay,Chris Davison,Astrid Werkmeister,Javier Cardona,Robert Atkinson,Craig Michie,Ivan Andonović,Malcolm Macdonald
出处
期刊:Remote Sensing
[MDPI AG]
日期:2022-03-10
卷期号:14 (6): 1342-1342
被引量:6
摘要
Cloud cover remains a significant limitation to a broad range of applications relying on optical remote sensing imagery, including crop identification/yield prediction, climate monitoring, and land cover classification. A common approach to cloud removal treats the problem as an inpainting task and imputes optical data in the cloud-affected regions employing either mosaicing historical data or making use of sensing modalities not impacted by cloud obstructions, such as SAR. Recently, deep learning approaches have been explored in these applications; however, the majority of reported solutions rely on external learning practices, i.e., models trained on fixed datasets. Although these models perform well within the context of a particular dataset, a significant risk of spatial and temporal overfitting exists when applied in different locations or at different times. Here, cloud removal was implemented within an internal learning regime through an inpainting technique based on the deep image prior. The approach was evaluated on both a synthetic dataset with an exact ground truth, as well as real samples. The ability to inpaint the cloud-affected regions for varying weather conditions across a whole year with no prior training was demonstrated, and the performance of the approach was characterised.
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