Deep Learning Approaches for Cloud Property Retrieval: Leveraging Geospatial Foundation Models and Multitask Frameworks
| dc.contributor.author | Murphy, Danielle | |
| dc.contributor.author | Zhang, Kevin | |
| dc.contributor.author | Parten, Caleb E. | |
| dc.contributor.author | Sterling, Autumn | |
| dc.contributor.author | Zhang, Haoxiang | |
| dc.contributor.author | Li, Xingyan | |
| dc.contributor.author | Caraballo-Vega, Jordan | |
| dc.contributor.author | Gong, Jie | |
| dc.contributor.author | Carroll, Mark | |
| dc.contributor.author | Wang, Jianwu | |
| dc.date.accessioned | 2026-03-05T19:36:35Z | |
| dc.date.issued | 2025-04 | |
| dc.description.abstract | With the rapid growth of Earth-observation datasets, geospatial foundation models (FMs) provide a scalable approach to learn transferable features across diverse satellite sensor data. However, their cross-sensor adaptation ability needs more exploration. To study this issue, we present a benchmarking study of SatVision-TOA, an FM pre-trained on over 20 years of MODIS data, when adapted to the GOES NOAA ABI sensor for four downstream cloud properties: cloud mask, cloud phase (segmentation), and cloud optical depth (COD) and cloud particle size (CPS) (regression). We propose a multi-task learning fine-tuning pipeline with a U-Net-based decoder and a lightweight preprocessor to address band-mismatch handling (14 MODIS bands for pre-training vs. 16 ABI bands for fine-tuning). To evaluate our pipeline, we benchmark fine-tuned models against from-scratch baselines, evaluate full fine-tuning (FFT) versus parameter-efficient fine-tuning (PEFT) methods (LoRA, VPT), and compare 14-band versus 16-band inputs. Our experiments show that multi-task learning improves efficiency and predictive quality in both fine-tuned and from-scratch settings. For the other four comparisons (FT vs. from-scratch, FFT vs. PEFT, 14-bands vs. 16-bands and loss functions), the results are mixed and there is no setup that always performs the best for all segmentation and regression tasks. | |
| dc.description.uri | https://userpages.umbc.edu/~gobbert/papers/BigDataREU2025Team1.pdf | |
| dc.format.extent | 23 pages | |
| dc.genre | journal articles | |
| dc.genre | preprints | |
| dc.identifier | doi:10.13016/m2hows-tdmj | |
| dc.identifier.uri | http://hdl.handle.net/11603/42162 | |
| dc.language.iso | en | |
| dc.relation.isAvailableAt | The University of Maryland, Baltimore County (UMBC) | |
| dc.relation.ispartof | UMBC Joint Center for Earth Systems Technology (JCET) | |
| dc.relation.ispartof | UMBC Center for Accelerated Real Time Analysis | |
| dc.relation.ispartof | UMBC Student Collection | |
| dc.relation.ispartof | UMBC Center for Real-time Distributed Sensing and Autonomy | |
| dc.relation.ispartof | UMBC GESTAR II | |
| dc.relation.ispartof | UMBC Information Systems Department | |
| dc.relation.ispartof | UMBC Faculty Collection | |
| dc.relation.ispartof | UMBC Computer Science and Electrical Engineering Department | |
| dc.rights | This work was written as part of one of the author's official duties as an Employee of the United States Government and is therefore a work of the United States Government. In accordance with 17 U.S.C. 105, no copyright protection is available for such works under U.S. Law. | |
| dc.rights | Public Domain | |
| dc.rights.uri | https://creativecommons.org/publicdomain/mark/1.0/ | |
| dc.subject | UMBC Big Data Analytics Lab | |
| dc.subject | UMBC High Performance Computing Facility (HPCF) | |
| dc.title | Deep Learning Approaches for Cloud Property Retrieval: Leveraging Geospatial Foundation Models and Multitask Frameworks | |
| dc.type | Text | |
| dcterms.creator | https://orcid.org/0009-0001-2598-2296 | |
| dcterms.creator | https://orcid.org/0000-0002-9933-1170 |
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