Uncertainty Prediction Neural Network (UpNet): Embedding Artificial Neural Network in Bayesian Inversion Framework to Quantify the Uncertainty of Remote Sensing Retrieval
Dasheng Fan, Xihan Mu, Yongkang Lai, Donghui Xie, Guangjian Yan

TL;DR
This paper introduces UpNet, a neural network framework embedded in a Bayesian inversion approach, enabling fast and accurate retrieval of vegetation biophysical variables along with their uncertainties from remote sensing data.
Contribution
The study develops a novel Bayesian theoretical framework for ANN-based inversion, leading to UpNet, which efficiently estimates both parameters and uncertainties in remote sensing retrievals.
Findings
UpNet provides retrievals consistent with MCMC but with over a million times faster speed.
It effectively quantifies uncertainty in vegetation biophysical parameters.
The method is suitable for high-resolution remote sensing data applications.
Abstract
For the retrieval of large-scale vegetation biophysical parameters, the inversion of radiative transfer models (RTMs) is the most commonly used approach. In recent years, Artificial Neural Network (ANN)-based methods have become the mainstream for inverting RTMs due to their high accuracy and computational efficiency. It has been widely used in the retrieval of biophysical variables (BV). However, due to the lack of the Bayesian inversion theory interpretation, it faces challenges in quantifying the retrieval uncertainty, a crucial metric for product quality validation and downstream applications such as data assimilation or ecosystem carbon cycling modeling. This study proved that the ANN trained with squared loss outputs the posterior mean, providing a rigorous foundation for its uncertainty quantification, regularization, and incorporation of prior information. A Bayesian theoretical…
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