论文标题
OGNET:使用深度学习的图像,朝着全球石油和天然气基础设施数据库
OGNet: Towards a Global Oil and Gas Infrastructure Database using Deep Learning on Remotely Sensed Imagery
论文作者
论文摘要
今天地球所经历的温暖至少四分之一是由于人为甲烷的排放造成的。轨道上有多个卫星,并计划在未来几年内发射,可以检测和量化这些排放;但是,要将甲烷排放归因于当地的来源,全球排放源位置和特征的全面数据库至关重要。在这项工作中,我们开发了深入学习算法,这些算法利用自由获得的高分辨率空中图像来自动检测石油和天然气基础设施,这是全球甲烷排放的最大贡献者之一。我们使用称为OGNET的最佳算法以及专家审查来识别美国的炼油厂和石油码头的位置,我们显示,OGNET检测到许多在四个石油和天然气基础设施的公共数据集中不存在的设施。所有检测到的设施都与已知有助于甲烷排放的特征有关,包括基础设施类型和储罐的数量。本研究中策划和生产的数据可在http://stanfordmlgroup.github.io/projects/ognet上自由获得。
At least a quarter of the warming that the Earth is experiencing today is due to anthropogenic methane emissions. There are multiple satellites in orbit and planned for launch in the next few years which can detect and quantify these emissions; however, to attribute methane emissions to their sources on the ground, a comprehensive database of the locations and characteristics of emission sources worldwide is essential. In this work, we develop deep learning algorithms that leverage freely available high-resolution aerial imagery to automatically detect oil and gas infrastructure, one of the largest contributors to global methane emissions. We use the best algorithm, which we call OGNet, together with expert review to identify the locations of oil refineries and petroleum terminals in the U.S. We show that OGNet detects many facilities which are not present in four standard public datasets of oil and gas infrastructure. All detected facilities are associated with characteristics known to contribute to methane emissions, including the infrastructure type and the number of storage tanks. The data curated and produced in this study is freely available at http://stanfordmlgroup.github.io/projects/ognet .