2020
DOI: 10.1038/s41598-020-61408-1
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Bare Earth’s Surface Spectra as a Proxy for Soil Resource Monitoring

Abstract: the earth's surface dynamics provide essential information for guiding environmental and agricultural policies. Uncovered and unprotected surfaces experience several undesirable effects, which can affect soil ecosystem functions. We developed a technique to identify global bare surface areas and their dynamics based on multitemporal remote sensing images to aid the spatiotemporal evaluation of anthropic and natural phenomena. The bare Earth's surface and its changes were recognized by Landsat image processing … Show more

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Cited by 74 publications
(26 citation statements)
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“…Study Area Time Series Percentage (%) [5] Swiss Plateau 1984-2016 43 [7] Brazil, Southeast 1984-2011 68 [8] Brazil, Southeast 1984-2017 53 [9] Germany 1984-2014 26 [10] Brazil, Midwest 1984-2018 74 [16] Brazil, Southeast 1984-2018 68 [17] Brazil, Midwest 1984-2019 100 * [46] Worldwide 1985-2015 34 * Using Krigagem on the achieved SySI area.…”
Section: Authorsmentioning
confidence: 99%
“…Study Area Time Series Percentage (%) [5] Swiss Plateau 1984-2016 43 [7] Brazil, Southeast 1984-2011 68 [8] Brazil, Southeast 1984-2017 53 [9] Germany 1984-2014 26 [10] Brazil, Midwest 1984-2018 74 [16] Brazil, Southeast 1984-2018 68 [17] Brazil, Midwest 1984-2019 100 * [46] Worldwide 1985-2015 34 * Using Krigagem on the achieved SySI area.…”
Section: Authorsmentioning
confidence: 99%
“…The combined variable importance plots derived using Random Forest with all 250 m and 30 m covariates used together ( Fig. 2) reveal that, on average, climatic images such as SM2RAIN monthly rainfall estimates and CHELSA bioclimatic images (3,7,4), are the most important covariates to inform mapping of soil properties and nutrients in Africa. This result is consistent with our previous global results 22 , where soil chemical properties were primarily correlated with climate images, and soil physical properties with a combination of landform parameters, parent material and climatic images.…”
Section: Goodness Of Fit and Variable Importancementioning
confidence: 99%
“…Training points used to build predictive models are usually provided by data from soil samples (fixed depth intervals) or soil profiles (pedogenetic soil horizons) that were geolocated in the field and then entered into a soil profile database. Covariate layers commonly used to train models include terrain attributes 2 -especially hydrological terrain parameters -parent material maps, climatic and vegetation maps and surface reflectances, including bare soil surface reflectances 4 . Predictions of soil properties and classes are generated by (1) training the learners i.e.…”
Section: Introductionmentioning
confidence: 99%
“…However, in case of non-availability of a robust IT infrastructure with large storage capability and high computing power, a cloud platform that offers catalogs of satellite imagery and geospatial analysis capabilities by an Application Programming Interface (API) is necessary to analyze this plethora of available data within a large time series in a most effective way. In this regard, Google Earth Engine [28] was successfully employed for obtaining a bare Earth's surface spectra using L8 multi-temporal data [29].…”
Section: Introductionmentioning
confidence: 99%