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        <dc:title>Accuracies of Soil Moisture Estimations Using a Semi-Empirical Model over Bare Soil Agricultural Croplands from Sentinel-1 SAR Data</dc:title>
        <dc:creator>Anil Kumar, H</dc:creator>
        <dc:creator>Nico, G</dc:creator>
        <dc:creator>Irshad Ahmed, M</dc:creator>
        <dc:creator>Whitbread, A M</dc:creator>
        <dc:subject>Remote Sensing</dc:subject>
        <dc:subject>GIS Techniques/Remote Sensing</dc:subject>
        <dc:subject>Soil Science</dc:subject>
        <dc:description>This study describes a semi-empirical model developed to estimate volumetric soil&#13;
moisture ( v&#13;
ϑ) in bare soils during the dry season (March–May) using C-band (5.42 GHz) synthetic&#13;
aperture radar (SAR) imagery acquired from the Sentinel-1 European satellite platform at a 20 m&#13;
spatial resolution. The semi-empirical model was developed using backscatter coefficient (σ° dB)&#13;
and in situ soil moisture collected from Siruguppa taluk (sub-district) in the Karnataka state of&#13;
India. The backscatter coefficients 0&#13;
VV σ and 0&#13;
VH σ were extracted from SAR images at 62&#13;
geo-referenced locations where ground sampling and volumetric soil moisture were measured at a&#13;
10 cm (0–10 cm) depth using a soil core sampler and a standard gravimetric method during the dry&#13;
months (March–May) of 2017 and 2018. A linear equation was proposed by combining 0&#13;
VV σ and&#13;
0&#13;
VH σ to estimate soil moisture. Both localized and generalized linear models were derived.&#13;
Thirty-nine localized linear models were obtained using the 13 Sentinel-1 images used in this&#13;
study, considering each polarimetric channel Co-Polarization (VV) and Cross-Polarization(VH)&#13;
separately, and also their linear combination of VV + VH. Furthermore, nine generalized linear&#13;
models were derived using all the Sentinel-1 images acquired in 2017 and 2018; three generalized&#13;
models were derived by combining the two years (2017 and 2018) for each polarimetric channel;&#13;
and three more models were derived for the linear combination of 0&#13;
VV σ and 0&#13;
VH σ . The above set of&#13;
equations were validated and the Root Mean Square Error (RMSE) was 0.030 and 0.030 for 2017 and&#13;
2018, respectively, and 0.02 for the combined years of 2017 and 2018. Both localized and&#13;
generalized models were compared with in situ data. Both kind of models revealed that the linear&#13;
combination of 0&#13;
VV σ + 0&#13;
VH σ showed a significantly higher R2 than the individual polarimetric&#13;
channels.</dc:description>
        <dc:publisher>MDPI</dc:publisher>
        <dc:date>2020-05</dc:date>
        <dc:type>Article</dc:type>
        <dc:type>PeerReviewed</dc:type>
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        <dc:language>en</dc:language>
        <dc:identifier>http://oar.icrisat.org/11513/1/remotesensing-12-01664%20%281%29.pdf</dc:identifier>
        <dc:identifier>  Anil Kumar, H and Nico, G and Irshad Ahmed, M and Whitbread, A M  (2020) Accuracies of Soil Moisture Estimations Using a Semi-Empirical Model over Bare Soil Agricultural Croplands from Sentinel-1 SAR Data.  Remote Sensing (TSI), 12 (10).  pp. 1-22.  ISSN 2072-4292     </dc:identifier>
        <dc:relation>https://doi.org/10.3390/rs12101664</dc:relation>
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