Physics-Driven Probabilistic Deep Learning for the Inversion of Physical Models With Application to Phenological Parameter Retrieval From Satellite Times Series

被引:2
|
作者
Zerah, Yoel [1 ]
Valero, Silvia [1 ]
Inglada, Jordi [1 ]
机构
[1] Univ Toulouse, Univ Paul Sabatier UPS, Inst Natl Rech Agr Alimentat & Environm INRAe, CNRS,Inst Derech Dev IRD,Ctr Etud Spatiales Biosp, F-31000 Toulouse, France
关键词
Autoencoders (AEs); Bayesian physics-guided learning; generative models; inverse problems; large scale; phenol-ogy monitoring; satellite image time series (SITS); self-supervised representation learning; UNCERTAINTY QUANTIFICATION; NEURAL-NETWORKS; SENTINEL-2;
D O I
10.1109/TGRS.2023.3284992
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Recent Sentinel satellite constellations and deep learning methods offer great possibilities for estimating the states and dynamics of physical parameters on a global scale. Such parameters and their corresponding uncertainties can be retrieved by machine learning methods solving probabilistic inverse problems. Nevertheless, the scarcity of reference data to train supervised methodologies is a well-known constraint for remote sensing applications. To address such limitations, this work presents a new generic physics-guided probabilistic deep learning methodology to invert physical models. The presented methodology proposes a new strategy to combine probabilistic deep learning methods and physical models avoiding simulation-driven machine learning. The inverse problem is addressed through a Bayesian inference framework by proposing a new physically constrained self-supervised representation learning methodology. To show interest in the proposed strategy, the methodology is applied to the retrieval of phenological parameters from normalized difference vegetation index (NDVI) time series. As a result, the probability distributions of the intrinsic phenological model parameters are inferred. The feasibility of the method is evaluated on both simulated and real Sentinel-2 data and compared with different standard algorithms. Promising results show satisfactory accuracy predictions and low inference times for real applications.
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页数:23
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