A deep learning framework is proposed for the spaceborne retrieval of methane emissions based on data simulation using Large Eddy Simulation (LES), Radiative Transfer Equation (RTE), and data augmentation techniques. The framework includes an instance segmentation algorithm for isolating and identifying methane emission sources, and multi-task learning models that outperform single-task models in methane concentration inversion, plume segmentation, and emission rate estimation.
Advanced super-resolution techniques based on convolutional and generative adversarial neural networks can effectively enhance the spatial resolution of Sentinel-2 satellite imagery.
Self-supervised pretraining using masked autoencoding on large-scale Synthetic Aperture Radar (SAR) data significantly reduces the labeling requirements for downstream tasks crucial to climate change monitoring, such as vegetation cover prediction and land cover classification.
This paper proposes a hyperspectral unmixing algorithm based on an adapted U-Net network architecture to achieve more accurate unmixing results on existing and newly created hyperspectral unmixing datasets from agricultural UAV imagery.
This study introduces a new multisource and multitemporal dataset, SEN12-WATER, which integrates Sentinel-1 SAR, Sentinel-2 optical, elevation, and slope data to enable detailed analysis and forecasting of water dynamics for drought monitoring and water resource management.
The development and application of a large, labeled satellite imagery dataset (CWGID) for training deep learning models to accurately detect forest wildfires.
BRDF-NeRF can successfully estimate the Rahman-Pinty-Verstraete (RPV) BRDF model parameters from as few as three or four satellite images, enabling high-quality novel view synthesis and digital surface model generation.
Recent remote sensing foundation models can improve the transferability of crop type classification across different geographic regions, especially in data-scarce developing areas.
This work presents a novel methodology to automate the creation of datasets for the detection of thermal hotspots, such as wildfires and volcanic eruptions, directly from Sentinel-2 raw multispectral data. The proposed approach leverages existing algorithms designed for processed Level-1C data to efficiently identify and annotate the corresponding raw data granules.
The core message of this article is to propose the anomaly change detection (AnomalyCD) technique, which can process an unfixed number of time-series observations to distinguish anomalous changes from normal changes, without the need for human supervision.