Publications

Liu, SJ; Zhang, L (2024). Deep Feature Gaussian Processes for Single-Scene Aerosol Optical Depth Reconstruction. IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 21, 5505705.

Abstract
Remote sensing data provide a low-cost solution for large-scale monitoring of air pollution via the retrieval of aerosol optical depth (AOD) but is often limited by cloud contamination. Existing methods for AOD reconstruction rely on temporal information. Remote sensing data provide at high spatial resolution, multitemporal observations but are often unavailable. In this letter, we take advantage of deep representation learning from convolutional neural networks (CNNs) and propose deep feature Gaussian processes (DFGPs) for single-scene AOD reconstruction. By using deep learning, we transform the variables into a feature space with better explainable power. By using Gaussian processes (GPs), we explicitly consider the correlation between observed AOD and missing AOD in spatial and feature domains. Experiments on two AOD datasets with real-world cloud patterns showed that the proposed method outperformed deep CNN and random forest (RF), achieving R-2 of 0.7431 on MODIS AOD and R-2 of 0.9211 on Earth Surface Mineral Dust Source Investigation (EMIT) AOD, compared to deep CNN's R-2 of 0.6507 and R-2 of 0.8619. The proposed methods increased R-2 by over 0.35 compared to the popular RF in AOD reconstruction. The data and code used in this study are available at https://skrisliu.com/dfgp .

DOI:
10.1109/LGRS.2024.3398689

ISSN:
1558-0571