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FLOOD DETECTION IN TIME SERIES OF OPTICAL AND SAR IMAGES

机译:光学和SAR图像的时间序列洪水检测

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These last decades, Earth Observation brought a number of new perspectives from geosciences to human activity monitoring. As more data became available, Artificial Intelligence (AI) techniques led to very successful results for understanding remote sensing data. Moreover, various acquisition techniques such as Synthetic Aperture Radar (SAR) can also be used for problems that could not be tackled only through optical images. This is the case for weather-related disasters such as floods or hurricanes, which are generally associated with large clouds cover. Yet, machine learning on SAR data is still considered challenging due to the lack of available labeled data. To help the community go forward, we introduce a new dataset composed of co-registered optical and SAR images time series for the detection of flood events and new neural network approaches to leverage these two modalities.
机译:上几十年来,地球观察从地球科学带来了一些新的视角,对人类活动监测。随着更多数据变得可用,人工智能(AI)技术导致了解遥感数据的非常成功的结果。此外,诸如合成孔径雷达(SAR)的各种采集技术也可以用于仅通过光学图像无法解决的问题。这是与洪水或飓风等天气有关的灾害的情况,这通常与大云覆盖有关。然而,由于缺乏可用标记数据,SAR数据的机器学习仍然被认为是挑战。为了帮助社区前进,我们介绍了由共同登记的光学和SAR图像时间序列组成的新数据集,用于检测洪水事件和新的神经网络方法,以利用这两个模态。

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