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        <dc:title>Agricultural cropland extent and areas of South Asia derived using Landsat satellite 30-m time-series big-data using random forest machine learning algorithms on the Google Earth Engine cloud</dc:title>
        <dc:creator>Gumma, M K</dc:creator>
        <dc:creator>Thenkabail, P S</dc:creator>
        <dc:creator>Teluguntla, P G</dc:creator>
        <dc:creator>Oliphant, A</dc:creator>
        <dc:creator>Xiong, J</dc:creator>
        <dc:creator>Giri, C</dc:creator>
        <dc:creator>Pyla, V</dc:creator>
        <dc:creator>Dixit, S</dc:creator>
        <dc:creator>Whitbread, A M</dc:creator>
        <dc:subject>GIS Techniques/Remote Sensing</dc:subject>
        <dc:subject>South Asia</dc:subject>
        <dc:subject>Food Security</dc:subject>
        <dc:description>The South Asia (India, Pakistan, Bangladesh, Nepal, Sri Lanka and Bhutan) has a staggering 900 million&#13;
people (~43% of the population) who face food insecurity or severe food insecurity as per United&#13;
Nations, Food and Agriculture Organization’s (FAO) the Food Insecurity Experience Scale (FIES). The&#13;
existing coarse-resolution (≥250-m) cropland maps lack precision in geo-location of individual farms&#13;
and have low map accuracies. This also results in uncertainties in cropland areas calculated fromsuch&#13;
products. Thereby, the overarching goal of this study was to develop a high spatial resolution (30-m&#13;
or better) baseline cropland extent product of South Asia for the year 2015 using Landsat satellite&#13;
time-series big-data and machine learning algorithms (MLAs) on the Google Earth Engine (GEE) cloud&#13;
computing platform. To eliminate the impact of clouds, 10 time-composited Landsat bands (blue,&#13;
green, red, NIR, SWIR1, SWIR2, Thermal, EVI, NDVI, NDWI) were derived for each of the three timeperiods&#13;
over 12 months (monsoon: Days of the Year (DOY) 151–300; winter: DOY 301–365 plus 1–60;&#13;
and summer: DOY 61–150), taking the every 8-day data from Landsat-8 and 7 for the years&#13;
2013–2015, for a total of 30-bands plus global digital elevation model (GDEM) derived slope band.&#13;
This 31-band mega-file big data-cube was composed for each of the five agro-ecological zones&#13;
(AEZ’s) of South Asia and formed a baseline data for image classification and analysis. Knowledgebase&#13;
for the Random Forest (RF) MLAs were developed using spatially well spread-out reference&#13;
training data (N = 2179) in five AEZs. The classification was performed on GEE for each of the five AEZs&#13;
using well-established knowledge-base and RF MLAs on the cloud. Map accuracies were measured&#13;
using independent validation data (N = 1185). The survey showed that the South Asia cropland&#13;
product had a producer’s accuracy of 89.9% (errors of omissions of 10.1%), user’s accuracy of 95.3%&#13;
(errors of commission of 4.7%) and an overall accuracy of 88.7%. The National and sub-national&#13;
(districts) areas computed from this cropland extent product explained 80-96% variability when&#13;
compared with the National statistics of the South Asian Countries. The full-resolution imagery can be&#13;
viewed at full-resolution, by zooming-in to any location in South Asia or the world, atwww.croplands.&#13;
org and the cropland products of South Asia downloaded from The Land Processes Distributed Active&#13;
Archive Center (LP DAAC) of National Aeronautics and Space Administration (NASA) and the United&#13;
States Geological Survey (USGS): https://lpdaac.usgs.gov/products/gfsad30saafgircev001/.</dc:description>
        <dc:publisher>Taylor &amp; Francis</dc:publisher>
        <dc:date>2019-11</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/11361/1/Agricultural%20cropland%20extent%20and%20areas%20of%20South%20Asia%20derived%20using%20Landsat%20satellite%2030%20m%20time%20series%20big%20data%20using%20random%20forest%20machine%20learning.pdf</dc:identifier>
        <dc:identifier>  Gumma, M K and Thenkabail, P S and Teluguntla, P G and Oliphant, A and Xiong, J and Giri, C and Pyla, V and Dixit, S and Whitbread, A M  (2019) Agricultural cropland extent and areas of South Asia derived using Landsat satellite 30-m time-series big-data using random forest machine learning algorithms on the Google Earth Engine cloud.  GIScience &amp; Remote Sensing (TSI).  pp. 1-21.  ISSN 1548-1603     </dc:identifier>
        <dc:relation>https://doi.org/10.1080/15481603.2019.1690780</dc:relation>
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