Department of Earth System Science, Stanford University, Stanford, CA, USA.
Center on Food Security and the Environment, Stanford University, Stanford, CA, USA.
Science. 2021 Mar 19;371(6535). doi: 10.1126/science.abe8628.
Accurate and comprehensive measurements of a range of sustainable development outcomes are fundamental inputs into both research and policy. We synthesize the growing literature that uses satellite imagery to understand these outcomes, with a focus on approaches that combine imagery with machine learning. We quantify the paucity of ground data on key human-related outcomes and the growing abundance and improving resolution (spatial, temporal, and spectral) of satellite imagery. We then review recent machine learning approaches to model-building in the context of scarce and noisy training data, highlighting how this noise often leads to incorrect assessment of model performance. We quantify recent model performance across multiple sustainable development domains, discuss research and policy applications, explore constraints to future progress, and highlight research directions for the field.
准确全面地衡量一系列可持续发展成果是研究和政策的基础。我们综合了越来越多利用卫星图像来了解这些成果的文献,重点介绍了将图像与机器学习相结合的方法。我们量化了关键人类相关成果的地面数据的匮乏,以及卫星图像的日益丰富和分辨率的提高(空间、时间和光谱)。然后,我们回顾了在稀缺和嘈杂的训练数据背景下建立模型的最新机器学习方法,重点介绍了这种噪声如何经常导致对模型性能的错误评估。我们量化了最近在多个可持续发展领域的模型性能,讨论了研究和政策应用,探讨了未来进展的限制,并强调了该领域的研究方向。