2021
DOI: 10.3390/rs13214195
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Sentinel-2 Recognition of Uncovered and Plastic Covered Agricultural Soil

Abstract: Medium resolution satellite data, such as Sentinel-2 of the Copernicus programme, offer great new opportunities for the agricultural sector, and provide insights on soil surface characteristics and their management. Soil monitoring requires a high-quality dataset of uncovered and plastic covered agricultural soil. We developed a methodology to identify uncovered soil pixels in agricultural parcels during seedbed preparation and considered the impacts of clouds and shadows, vegetation cover, and artificial cove… Show more

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Cited by 13 publications
(13 citation statements)
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“…This not-high value is due both to the resolution of the satellite images (as it does not allow identification of some very small plots) and to the fact that the application of the RPGI index is not a real supervised classification of the territory, so it only provides a rough indication of the presence of plastics and needs further investigation to improve its exclusive usability. As reported by Ibrahim et al [30], the RPGI index is less sensitive than other classification methodologies because it is related to the type of crop, and if the plastic greenhouses are painted or not during their use. Moreover, greenhouse plastics have high correspondences to bare soil spectra, but still allow a preliminary detection of APSs [30].…”
Section: Resultsmentioning
confidence: 95%
See 3 more Smart Citations
“…This not-high value is due both to the resolution of the satellite images (as it does not allow identification of some very small plots) and to the fact that the application of the RPGI index is not a real supervised classification of the territory, so it only provides a rough indication of the presence of plastics and needs further investigation to improve its exclusive usability. As reported by Ibrahim et al [30], the RPGI index is less sensitive than other classification methodologies because it is related to the type of crop, and if the plastic greenhouses are painted or not during their use. Moreover, greenhouse plastics have high correspondences to bare soil spectra, but still allow a preliminary detection of APSs [30].…”
Section: Resultsmentioning
confidence: 95%
“…As reported by Ibrahim et al [30], the RPGI index is less sensitive than other classification methodologies because it is related to the type of crop, and if the plastic greenhouses are painted or not during their use. Moreover, greenhouse plastics have high correspondences to bare soil spectra, but still allow a preliminary detection of APSs [30]. In addition, a 5% incidence of classification errors emerged.…”
Section: Resultsmentioning
confidence: 95%
See 2 more Smart Citations
“…In addition to the spectral characteristics of the data used, spectral characteristics of PCGs also influence the accuracy of their mapping. For example, different plastic materials are currently used for PCGs and plastic mulching in horticulture and mapping accuracy of these materials from space using optical data depends on the spectral properties of materials used in building polymers (Ibrahim & Gobin, 2021) as well as the growth cycle of plants within the plasticulture (Yang et al, 2017).…”
Section: Remote Sensing For Pcg Mapping: Available Datasetsmentioning
confidence: 99%