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3D Cloud Masking Across A Broad Swath Using Multi-Angle Polarimetry and Deep LearningUnderstanding the 3-dimensional structure of clouds is of crucial importance to modeling our changing climate. Active sensors, such as radar and lidar, provide accurate vertical cloud profiles, but are mostly restricted to along-track sampling. Passive sensors can capture a wide swath, but struggle to see beneath cloud tops. In essence, both types of products are restricted to two dimensions: as a cross-section in the active case, and an image in the passive case. However, multi-angle sensor configurations contain implicit information about 3D structure, due to parallax and atmospheric path differences. Extracting that implicit information can be challenging, requiring computationally expensive radiative transfer techniques. Machine learning, as an alternative, may be able to capture some of the complexity of a full 3D radiative transfer solution with significantly less computational expense. In this work, we make three contributions towards understanding 3D cloud structure from multi-angle polarimetry. First, we introduce a large-scale, publicly available dataset that fuses existing cloud products into a format more amenable to machine learning. This dataset treats multi-angle polarimetry as an input, and radar-based vertical cloud profiles as an output. Second, we describe and evaluate strong baseline machine learning models based that predict these profiles from the passive imagery. Notably, these models are trained only on center-swath labels, but can predict cloud profiles over the entire passive imagery swath. Third, we leverage the information-theoretic nature of machine learning to draw conclusions about the relative utility of various sensor configurations, including spectral channels, viewing angles, and polarimetry. These findings have implications for Earth-observing missions such as NASA’s Plankton, Aerosol, Cloud-ocean Ecosystem (PACE) and Atmosphere Observing System (AOS) missions, as well as in informing future applications of computer vision to atmospheric remote sensing.
Document ID
20250000952
Acquisition Source
Goddard Space Flight Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Sean R Foley ORCID
(Morgan State University Baltimore, United States)
Kirk D Knobelspiesse ORCID
(Goddard Space Flight Center Greenbelt, United States)
Andrew M Sayer ORCID
(University of Maryland, Baltimore County Baltimore, Maryland, United States)
Meng Gao ORCID
(Science Systems and Applications (United States) Lanham, Maryland, United States)
James Hays
(Georgia Institute of Technology Atlanta, United States)
Judy Hoffman
(Georgia Institute of Technology Atlanta, United States)
Date Acquired
January 24, 2025
Publication Date
December 16, 2024
Publication Information
Publication: Atmospheric Measurement Techniques
Publisher: European Geosciences Union
Volume: 17
Issue: 24
Issue Publication Date: December 16, 2024
ISSN: 1867-1381
e-ISSN: 1867-8548
Subject Category
Computer Programming and Software
Instrumentation and Photography
Meteorology and Climatology
Funding Number(s)
WBS: 564349.04.01.03.01.01
CONTRACT_GRANT: 80NSSC22M0001
CONTRACT_GRANT: 80GSFC20C0044
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
External Peer Committee
Keywords
clouds
cloud detection
cloud mask
cloud tomography
machine learning
deep learning
multi-angle
polarimetry
PACE
PARASOL
POLDER
CloudSat
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