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Infrastructure Quality Assessment in Africa using Satellite Imagery and Deep Learning

机译:非洲基础设施质量评估使用卫星图像和深度学习

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The UN Sustainable Development Goals allude to the importance of infrastructure quality in three of its seventeen goals. However, monitoring infrastructure quality in developing regions remains prohibitively expensive and impedes efforts to measure progress toward these goals. To this end, we investigate the use of widely available remote sensing data for the prediction of infrastructure quality in Africa. We train a convolutional neural network to predict ground truth labels from the Afrobarometer Round 6 survey using Landsat 8 and Sentinel 1 satellite imagery. Our best models predict infrastructure quality with AUROC scores of 0.881 on Electricity, 0.862 on Sewerage, 0.739 on Piped Water, and 0.786 on Roads using Landsat 8. These performances are significantly better than models that leverage OpenStreetMap or nighttime light intensity on the same tasks. We also demonstrate that our trained model can accurately make predictions in an unseen country after fine-tuning on a small sample of images. Furthermore, the model can be deployed in regions with limited samples to predict infrastructure outcomes with higher performance than nearest neighbor spatial interpolation.
机译:联合国可持续发展目标暗示了三个十七球基础设施质量的重要性。然而,在发展中区域的监测基础设施质量仍然非常昂贵,并阻碍衡量这些目标的进展。为此,我们调查使用广泛可用的遥感数据来预测非洲基础设施质量。我们训练一个卷积神经网络,通过Landsat 8和Sentinel 1卫星图像从Afrobarometer第6轮调查预测地面真理标签。我们最好的模型将Auroc的基础设施高0.881的电力,0.862位,管道水0.862,使用Landsat的道路上的0.786。这些表演明显优于利用OpenStreetMap或夜间光强度在同一任务上的模型更好。我们还证明我们培训的模型可以在微调对一个小型图像样本后准确地在看不见的国家的预测。此外,该模型可以部署在具有有限样本的区域中,以预测性能更高的基础设施结果而不是最近的邻居空间插值。

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