3D Cloud reconstruction through geospatially-aware Masked Autoencoders
Girtsou, Stella, Salas-Porras, Emiliano Diaz, Freischem, Lilli, Massant, Joppe, Bintsi, Kyriaki-Margarita, Castiglione, Guiseppe, Jones, William, Eisinger, Michael, Johnson, Emmanuel, Jungbluth, Anna
–arXiv.org Artificial Intelligence
Clouds play a key role in Earth's radiation balance with complex effects that introduce large uncertainties into climate models. Real-time 3D cloud data is essential for improving climate predictions. This study leverages geostationary imagery from MSG/SEVIRI and radar reflectivity measurements of cloud profiles from CloudSat/CPR to reconstruct 3D cloud structures. We first apply self-supervised learning (SSL) methods-Masked Autoencoders (MAE) and geospatially-aware SatMAE on unlabelled MSG images, and then fine-tune our models on matched image-profile pairs. Our approach outperforms state-of-the-art methods like U-Nets, and our geospatial encoding further improves prediction results, demonstrating the potential of SSL for cloud reconstruction.
arXiv.org Artificial Intelligence
Jan-3-2025