撒哈拉以南非洲地区社会、经济和治理指标的基于图像的建模

J. Irvine, J. Kimball, J. Lepanto, J. Regan, Richard J. Wood
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引用次数: 0

摘要

许多政策和国家安全挑战需要了解一个国家或地区的社会、文化和经济特征。解决失败的国家、叛乱、恐怖主义威胁、社会变革和对军事行动的支持需要对当地人口的详细了解。有关经济状况、社区支持和参与程度以及对政府当局的态度的信息可以指导决策者制定和实施政策或行动。然而,这些信息很难在偏远、人迹罕至或被拒绝的地区收集。德雷珀之前的工作展示了遥感在具体问题上的应用,如人口估计、农业分析和环境监测,非常有前途。在最近的论文中,我们将这些概念扩展到治理、福祉和社会资本的基于图像的预测模型。社会科学理论指出了物理结构、制度特征和社会结构之间的关系。基于这些关系,我们开发了阿富汗农村的模型,并使用调查数据验证了这些关系。在本文中,我们探讨了这些模型在撒哈拉以南非洲的适应性。我们的分析表明,就像在阿富汗一样,社会的某些属性可以从图像衍生的特征中预测出来。然而,相关指标的自动提取依赖于空间和光谱信息。仅从全色图像中得出有用的测量方法提出了一些方法上的挑战,需要进一步的研究。
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Imagery-based modeling of social, economic, and governance indicators in sub-Saharan Africa
Many policy and national security challenges require understanding the social, cultural, and economic characteristics of a country or region. Addressing failing states, insurgencies, terrorist threats, societal change, and support for military operations require a detailed understanding of the local population. Information about the state of the economy, levels of community support and involvement, and attitudes toward government authorities can guide decision makers in developing and implementing policies or operations. However, such information is difficult to gather in remote, inaccessible, or denied areas. Draper's previous work demonstrating the application of remote sensing to specific issues, such as population estimation, agricultural analysis, and environmental monitoring, has been very promising. In recent papers, we extended these concepts to imagery-based prediction models for governance, well-being, and social capital. Social science theory indicates the relationships among physical structures, institutional features, and social structures. Based on these relationships, we developed models for rural Afghanistan and validated the relationships using survey data. In this paper we explore the adaptation of those models to sub-Saharan Africa. Our analysis indicates that, as in Afghanistan, certain attributes of the society are predictable from imagery-derived features. The automated extraction of relevant indicators, however, depends on both spatial and spectral information. Deriving useful measures from only panchromatic imagery poses some methodological challenges and additional research is needed.
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