Earth observation from satellite sensory data poses challenging problems, where machine learning is currently a key player. In recent years, Gaussian Process (GP) regression has excelled in biophysical parameter estimation tasks from airborne and satellite observations. GP regression is based on solid Bayesian statistics and generally yields efficient and accurate parameter estimates. However, GPs are typically used for inverse modeling based on concurrent observations and in situ measurements only. Very often a forward model encoding the well-understood physical relations between the state vector and the radiance observations is available though and could be useful to improve predictions and understanding. In this work, we review three GP models that respect and learn the physics of the underlying processes in the context of both forward and inverse modeling. After reviewing the traditional application of GPs for parameter retrieval, we introduce a Joint GP (JGP) model that combines in situ measurements and simulated data in a single GP model. Then, we present a latent force model (LFM) for GP modeling that encodes ordinary differential equations to blend data-driven modeling and physical constraints of the system governing equations. The LFM performs multi-output regression, adapts to the signal characteristics, is able to cope with missing data in the time series, and provides explicit latent functions that allow system analysis and evaluation. Finally, we present an Automatic Gaussian Process Emulator (AGAPE) that approximates the forward physical model using concepts from Bayesian optimization and at the same time builds an optimally compact look-up-table for inversion. We give empirical evidence of the performance of these models through illustrative examples of vegetation monitoring and atmospheric modeling.
翻译:卫星感官数据中的地球观察提出了具有挑战性的问题,目前机器学习是关键角色。近年来,高山进程(GP)回归在空中和卫星观测的生物物理参数估计任务中表现得优于空中和卫星观测得出的生物参数估计任务。GP回归基于可靠的巴伊西亚统计,一般产生高效和准确的参数估计。然而,一般情况下,GP通常用于反向建模,基于同时的观测和现场测量,将现场测量和模拟数据合并到单一GP模型中。然后,我们为GP建模提供了一种潜伏力模型(LFM),用于将数据驱动模型和亮度观测结果进行校验。在这项工作中,我们审查三个在前向和反向模型中尊重并学习基本过程的物理参数估计任务。在审查GPGPS传统数据的传统应用后,我们引入了一个将现场测量和模拟数据合并在一起的GPA模型(LFM),我们用普通差异模型来混合数据驱动模型和物理模型的物理制约。在前向方和物理模型中,我们用最精确的精确的精确的模型来进行精确的模型分析,通过SIM模型来进行一个最精确的模型,然后,我们用最精确的模型来进行精确的顺序的模型,通过一个精确的模型来进行精确的模型,使模型进行精确的模型的模型的模型的模型的模型的模型的模型,我们向前向前向后向后向的模型,以便的模型,以便提供一个精确的模型,以便进行。