从高空图像量化社会经济背景

Brigid Angelini, Michael R. Crystal, J. Irvine
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引用次数: 2

摘要

辨别地区政治波动对于政府和商业实体成功制定政策是有价值的,并且需要了解潜在的经济、社会和政治环境。一些获取环境信息的方法,如全球民意调查,既昂贵又缓慢。我们探索通过自动图像处理收集可比信息的可行性,并在免费提供的商业卫星图像上提供溢价。先前的工作表明,通过利用空间重合的高分辨率卫星图像开发模型,可以成功预测阿富汗和博茨瓦纳农村地区与财富、贫困和犯罪相关的调查反应。我们通过使用类似的图像特征来扩展这些发现,以预测有关政治和经济情绪的调查反应。我们还探讨了利用哨兵2号卫星图像建立的模型预测调查结果的可行性,哨兵2号卫星图像分辨率较低,但可以免费获得。我们的研究结果重申了仅通过卫星图像特征就可以廉价而快速地识别一个地区的社会政治经济背景的潜力。我们展示了一些模型及其在预测调查反应方面的交叉验证性能,并总结了对未来工作的评论和建议。
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Quantifying Socio-economic Context from Overhead Imagery
Discerning regional political volatility is valuable for successful policy development by government and commercial entities, and necessitates having an understanding of the underlying economic, social, and political environment. Some methods of obtaining the environment information, such as global public opinion surveys, are expensive and slow to complete. We explore the feasibility of gleaning comparable information through automated image processing with a premium on freely available commercial satellite imagery. Previous work demonstrated success in predicting survey responses related to wealth, poverty, and crime in rural Afghanistan and Botswana, by utilizing spatially coinciding high resolution satellite images to develop models. We extend these findings by using similar image features to predict survey responses regarding political and economic sentiment. We also explore the feasibility of predicting survey responses with models built from Sentinel 2 satellite imagery, which is coarser-resolution, but freely available. Our fidings reiterate the potential for cheaply and quickly discerning the socio-politico-economic context of a region solely through satellite image features. We show a number of models and their cross-validated performance in predicting survey responses, and conclude with comments and recommendations for future work.
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