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Optimizing Landsat Next Shortwave Infrared Bands for Crop Residue Characterization
by
Dabney, Philip W.
, Campbell, Michael
, Hively, W. Dean
, Wu, Zhuoting
, Lamb, Brian T.
, Dennison, Philip E.
, Daughtry, Craig S. T.
, Masek, Jeffrey G.
, Serbin, Guy
, Kokaly, Raymond F.
in
Agriculture
/ Cellulose
/ Cover crops
/ crop residue
/ Crop residues
/ Crops
/ Datasets
/ Earth Resources and Remote Sensing
/ Iterative methods
/ Landsat
/ Landsat Next
/ Landsat satellites
/ Lignocellulose
/ Moisture effects
/ non-photosynthetic vegetation
/ Normalized difference vegetative index
/ Optimization
/ Remote sensing
/ Residues
/ Short wave radiation
/ shortwave infrared
/ tillage
/ Tolerances
/ Vegetation
/ Vegetation cover
/ Wavelength
/ Wavelengths
2022
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Optimizing Landsat Next Shortwave Infrared Bands for Crop Residue Characterization
by
Dabney, Philip W.
, Campbell, Michael
, Hively, W. Dean
, Wu, Zhuoting
, Lamb, Brian T.
, Dennison, Philip E.
, Daughtry, Craig S. T.
, Masek, Jeffrey G.
, Serbin, Guy
, Kokaly, Raymond F.
in
Agriculture
/ Cellulose
/ Cover crops
/ crop residue
/ Crop residues
/ Crops
/ Datasets
/ Earth Resources and Remote Sensing
/ Iterative methods
/ Landsat
/ Landsat Next
/ Landsat satellites
/ Lignocellulose
/ Moisture effects
/ non-photosynthetic vegetation
/ Normalized difference vegetative index
/ Optimization
/ Remote sensing
/ Residues
/ Short wave radiation
/ shortwave infrared
/ tillage
/ Tolerances
/ Vegetation
/ Vegetation cover
/ Wavelength
/ Wavelengths
2022
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Optimizing Landsat Next Shortwave Infrared Bands for Crop Residue Characterization
by
Dabney, Philip W.
, Campbell, Michael
, Hively, W. Dean
, Wu, Zhuoting
, Lamb, Brian T.
, Dennison, Philip E.
, Daughtry, Craig S. T.
, Masek, Jeffrey G.
, Serbin, Guy
, Kokaly, Raymond F.
in
Agriculture
/ Cellulose
/ Cover crops
/ crop residue
/ Crop residues
/ Crops
/ Datasets
/ Earth Resources and Remote Sensing
/ Iterative methods
/ Landsat
/ Landsat Next
/ Landsat satellites
/ Lignocellulose
/ Moisture effects
/ non-photosynthetic vegetation
/ Normalized difference vegetative index
/ Optimization
/ Remote sensing
/ Residues
/ Short wave radiation
/ shortwave infrared
/ tillage
/ Tolerances
/ Vegetation
/ Vegetation cover
/ Wavelength
/ Wavelengths
2022
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Optimizing Landsat Next Shortwave Infrared Bands for Crop Residue Characterization
Journal Article
Optimizing Landsat Next Shortwave Infrared Bands for Crop Residue Characterization
2022
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Overview
This study focused on optimizing the placement of shortwave infrared (SWIR) bands for pixel-level estimation of fractional crop residue cover (fR) for the upcoming Landsat Next mission. We applied an iterative wavelength shift approach to a database of crop residue field spectra collected in Beltsville, Maryland, USA (n = 916) and computed generalized two- and three-band spectral indices for all wavelength combinations between 2000 and 2350 nm, then used these indices to model field-measured fR. A subset of the full dataset with a Normalized Difference Vegetation Index (NDVI) < 0.3 threshold (n = 643) was generated to evaluate green vegetation impacts on fR estimation. For the two-band wavelength shift analyses applied to the NDVI < 0.3 dataset, a generalized normalized difference using 2226 nm and 2263 nm bands produced the top fR estimation performance (R2 = 0.8222; RMSE = 0.1296). These findings were similar to the established two-band Shortwave Infrared Normalized Difference Residue Index (SINDRI) (R2 = 0.8145; RMSE = 0.1324). Performance of the two-band generalized normalized difference and SINDRI decreased for the full-NDVI dataset (R2 = 0.5865 and 0.4144, respectively). For the three-band wavelength shift analyses applied to the NDVI < 0.3 dataset, a generalized ratio-based index with a 2031–2085–2216 nm band combination, closely matching established Cellulose Absorption Index (CAI) bands, was top performing (R2 = 0.8397; RMSE = 0.1231). Three-band indices with CAI-type wavelengths maintained top fR estimation performance for the full-NDVI dataset with a 2036–2111–2217 nm band combination (R2 = 0.7581; RMSE = 0.1548). The 2036–2111–2217 nm band combination was also top performing in fR estimation (R2 = 0.8690; RMSE = 0.0970) for an additional analysis assessing combined green vegetation cover and surface moisture effects. Our results indicate that a three-band configuration with band centers and wavelength tolerances of 2036 nm (±5 nm), 2097 nm (±14 nm), and 2214 (±11 nm) would optimize Landsat Next SWIR bands for fR estimation.
Publisher
MDPI,MDPI AG
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