Deep Learning Approaches for Cloud Property Retrieval: Leveraging Geospatial Foundation Models and Multitask Frameworks

dc.contributor.authorMurphy, Danielle
dc.contributor.authorZhang, Kevin
dc.contributor.authorParten, Caleb E.
dc.contributor.authorSterling, Autumn
dc.contributor.authorZhang, Haoxiang
dc.contributor.authorLi, Xingyan
dc.contributor.authorCaraballo-Vega, Jordan
dc.contributor.authorGong, Jie
dc.contributor.authorCarroll, Mark
dc.contributor.authorWang, Jianwu
dc.date.accessioned2026-03-05T19:36:35Z
dc.date.issued2025-04
dc.description.abstractWith 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.urihttps://userpages.umbc.edu/~gobbert/papers/BigDataREU2025Team1.pdf
dc.format.extent23 pages
dc.genrejournal articles
dc.genrepreprints
dc.identifierdoi:10.13016/m2hows-tdmj
dc.identifier.urihttp://hdl.handle.net/11603/42162
dc.language.isoen
dc.relation.isAvailableAtThe University of Maryland, Baltimore County (UMBC)
dc.relation.ispartofUMBC Joint Center for Earth Systems Technology (JCET)
dc.relation.ispartofUMBC Center for Accelerated Real Time Analysis
dc.relation.ispartofUMBC Student Collection
dc.relation.ispartofUMBC Center for Real-time Distributed Sensing and Autonomy
dc.relation.ispartofUMBC GESTAR II
dc.relation.ispartofUMBC Information Systems Department
dc.relation.ispartofUMBC Faculty Collection
dc.relation.ispartofUMBC Computer Science and Electrical Engineering Department
dc.rightsThis 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.rightsPublic Domain
dc.rights.urihttps://creativecommons.org/publicdomain/mark/1.0/
dc.subjectUMBC Big Data Analytics Lab
dc.subjectUMBC High Performance Computing Facility (HPCF)
dc.titleDeep Learning Approaches for Cloud Property Retrieval: Leveraging Geospatial Foundation Models and Multitask Frameworks
dc.typeText
dcterms.creatorhttps://orcid.org/0009-0001-2598-2296
dcterms.creatorhttps://orcid.org/0000-0002-9933-1170

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