Duffy Kate, Vandal Thomas, Li Shuang, Ganguly Sangram, Nemani Ramakrishna, Ganguly Auroop R
Sustainability and Data Sciences Laboratory, Department of Civil and Environmental Engineering, Northeastern University, Boston, MA, United States.
Ames Research Center, NASA, Mountain View, CA, United States.
Front Big Data. 2019 Dec 10;2:42. doi: 10.3389/fdata.2019.00042. eCollection 2019.
The growing volume of Earth science data available from climate simulations and satellite remote sensing offers unprecedented opportunity for scientific insight, while also presenting computational challenges. One potential area of impact is atmospheric correction, where physics-based numerical models retrieve surface reflectance information from top of atmosphere observations, and are too computationally intensive to be run in real time. Machine learning methods have demonstrated potential as fast statistical models for expensive simulations and for extracting credible insights from complex datasets. Here, we develop DeepEmSat: a deep learning emulator approach for atmospheric correction, and offer comparison against physics-based models to support the hypothesis that deep learning can make a contribution to the efficient processing of satellite images.
气候模拟和卫星遥感提供的地球科学数据量不断增加,这为科学洞察带来了前所未有的机遇,但同时也带来了计算挑战。一个潜在的影响领域是大气校正,基于物理的数值模型从大气顶部观测中获取地表反射率信息,其计算量太大,无法实时运行。机器学习方法已展现出作为快速统计模型处理昂贵模拟以及从复杂数据集中提取可靠见解的潜力。在此,我们开发了DeepEmSat:一种用于大气校正的深度学习模拟器方法,并与基于物理的模型进行比较,以支持深度学习可有助于高效处理卫星图像这一假设。