Abstract

Parameter retrieval and model inversion are key problems in remote sensing and Earth observation. Currently, different approximations exist: a direct, yet costly, inversion of radiative transfer models (RTMs); the statistical inversion with in situ data that often results in problems with extrapolation outside the study area; and the most widely adopted hybrid modeling by which statistical models, mostly nonlinear and non-parametric machine learning algorithms, are applied to invert RTM simulations. We will focus on the latter. Among the different existing algorithms, in the last decade kernel based methods, and Gaussian Processes (GPs) in particular, have provided useful and informative solutions to such RTM inversion problems. This is in large part due to the confidence intervals they provide, and their predictive accuracy. However, RTMs are very complex, highly nonlinear, and typically hierarchical models, so that very often a single (shallow) GP model cannot capture complex feature relations for inversion. This motivates the use of deeper hierarchical architectures, while still preserving the desirable properties of GPs. This paper introduces the use of deep Gaussian Processes (DGPs) for bio-geo-physical model inversion. Unlike shallow GP models, DGPs account for complicated (modular, hierarchical) processes, provide an efficient solution that scales well to big datasets, and improve prediction accuracy over their single layer counterpart. In the experimental section, we provide empirical evidence of performance for the estimation of surface temperature and dew point temperature from infrared sounding data, as well as for the prediction of chlorophyll content, inorganic suspended matter, and coloured dissolved matter from multispectral data acquired by the Sentinel-3 OLCI sensor. The presented methodology allows for more expressive forms of GPs in big remote sensing model inversion problems.

Highlights

  • Estimating variables and bio-geophysical parameters of interest from remote sensing images is a central problem in Earth observation [1, 2, 3]

  • This paper introduces the use of deep Gaussian Processes (DGPs) for bio-geo-physical model inversion

  • We immediately see that there is a clear difference in root mean squared error (RMSE) between the shallow (GP-10K, Fully Independent Training Conditional (FITC), DGP1) and the improved deep models (DGP2-4)

Read more

Summary

Introduction

Estimating variables and bio-geophysical parameters of interest from remote sensing images is a central problem in Earth observation [1, 2, 3] This is usually addressed through a very challenging model inversion problem, which involves dealing with complex nonlinear input-output relations. Data-driven statistical learning algorithms have attained outstanding results in the estimation of climate variables and related geo-physical parameters at local and global scales [6, 3]. These algorithms avoid complicated assumptions and provide flexible non-parametric models that fit the observations using large heterogeneous data. There exist traditional models such as random forests [7, 8] and standard feed-forward neural networks [9, 10, 11] as well as convolutional neural networks [12, 13]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call