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Measuring Human and Economic Activity From Satellite Imagery to Support City-Scale Decision-Making During COVID-19 Pandemic

机译:从卫星图像中衡量人类和经济活动,以支持Covid-19大流行期间的城市规模决策

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The COVID-19 outbreak forced governments worldwide to impose lockdowns and quarantines to prevent virus transmission. As a consequence, there are disruptions in human and economic activities all over the globe. The recovery process is also expected to be rough. Economic activities impact social behaviors, which leave signatures in satellite images that can be automatically detected and classified. Satellite imagery can support the decision-making of analysts and policymakers by providing a different kind of visibility into the unfolding economic changes. In this article, we use a deep learning approach that combines strategic location sampling and an ensemble of lightweight convolutional neural networks (CNNs) to recognize specific elements in satellite images that could be used to compute economic indicators based on it, automatically. This CNN ensemble framework ranked third place in the US Department of Defense xView challenge, the most advanced benchmark for object detection in satellite images. We show the potential of our framework for temporal analysis using the US IARPA Function Map of the World (fMoW) dataset. We also show results on real examples of different sites before and after the COVID-19 outbreak to illustrate different measurable indicators. Our code and annotated high-resolution aerial scenes before and after the outbreak are available on GitHub.(1) 1. https://github.com/maups/covid19-satellite-analysis.
机译:Covid-19爆发迫使全球政府施加锁定和检疫,以防止病毒传播。因此,全球人力和经济活动中断。恢复过程也有望粗糙。经济活动影响社会行为,卫星图像中的签名可以自动检测和分类。卫星图像可以通过为展开的经济变化提供不同的可见性来支持分析师和政策制定者的决策。在本文中,我们使用深度学习方法,该方法将战略位置采样和轻质卷积神经网络(CNNS)的集合结合起来,以识别可用于自动计算经济指标的卫星图像中的特定元素。这个CNN集合框架在美国国防部XView挑战部门排名第三,是卫星图像中的对象检测的最先进的基准。我们展示了我们使用世界IARPA功能地图(FMOW)DataSet的函数分析框架的潜力。我们还显示Covid-19爆发前后不同部位的实际示例的结果,以说明不同的可测量指标。我们的代码和爆发前后的注释高分辨率空域在GitHub上提供。(1)1。https://github.com/maups/covid19-satellite-analysis。

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