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Modifying NISAR's Cropland Area Algorithm to Map Cropland Extent GloballySynthetic aperture radar (SAR) is emerging as a valuable dataset for monitoring crops globally. Unlike optical remote sensing, SAR can provide earth observations regard-less of solar illumination or atmospheric conditions. Several methods that utilize SAR to identify agriculture rely on computationally expensive algorithms, such as machine learn-ing, that require extensive training datasets, complex data pre-processing, or specialized software. The coefficient of variation (CV) method has been successful in identifying agri-cultural activity using several SAR sensors and is the basis of the Cropland Area algorithm for the upcoming NASA-Indian Space Research Organization (ISRO) SAR mission. The CV method derives a unique threshold for an AOI by optimizing You den’s J-Statistic, where pixels above the threshold are classified as crop and pixels below are classified as non-crop, producing a binary crop/non-crop classification. Training this optimization process requires at least some existing cropland classification as an external reference dataset. In this paper, general CV thresholds are derived that can discriminate active agriculture (i.e.,fields in use) from other land cover types without requiring a cropland reference dataset.We demonstrate the validity of our approach for three crop types: corn/soybean, wheat, and rice. Using data from the European Space Agency’s (ESA) Sentinel-1, a C-band SAR instrument, nine global AOIs, three for each crop type, were evaluated. Optimal thresholds were calculated and averaged for two AOIs per crop type for 2018–2022, resulting in 0.53,0.31, and 0.26 thresholds for corn/soybean, wheat, and rice regions, respectively. The crop type average thresholds were then applied to an additional AOI of the same crop type, where they achieved 92%, 84%, and 83% accuracy for corn/soybean, wheat, and rice, respectively, when compared to ESA’s 2021 land cover product, WorldCover. The results of this study indicate that the use of the CV, along with the average crop type thresholds presented, is a fast, simple, and reliable technique to detect active agriculture in areas where either corn/soybean, wheat, or rice is the dominant crop type and where outdated or no reference datasets exist.
Document ID
20250002920
Acquisition Source
Marshall Space Flight Center
Document Type
Accepted Manuscript (Version with final changes)
Authors
Kaylee G Sharp ORCID
(University of Alabama in Huntsville Huntsville, United States)
Jordan R Bell ORCID
(Marshall Space Flight Center Redstone Arsenal, United States)
Hannah G Pankratz ORCID
(NASA Postdoctoral Program Huntsville, United States)
Lori A Schultz ORCID
(Marshall Space Flight Center Redstone Arsenal, United States)
Ronan Lucey ORCID
(University of Alabama in Huntsville Huntsville, United States)
Franz J Meyer ORCID
(University of Alaska Fairbanks Fairbanks, United States)
Andrew L Molthan
(Marshall Space Flight Center Redstone Arsenal, United States)
Date Acquired
March 21, 2025
Publication Date
March 20, 2025
Publication Information
Publication: Remote Sensing
Publisher: MDPI
Volume: 17
Issue: 6
Issue Publication Date: March 2, 2025
e-ISSN: 2072-4292
Subject Category
Earth Resources and Remote Sensing
Funding Number(s)
CONTRACT_GRANT: 80NSSC19K1109
CONTRACT_GRANT: 80NSSC20K0164
WBS: 346751.02.02.02.04
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Keywords
Sentinel-1
NISAR
time series
coefficient of variation
agriculture
backscatter
SAR
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