Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, Italy

Soil-sample collection and strategy are costly and time-consuming endeavors, mainly when the goal is in-field variation mapping that usually requires dense sampling. This study developed and tested a streamlined soil mapping methodology, applicable at the field scale, based on an unsupervised classi...

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Main Authors: Francesco Saverio Santaga, Alberto Agnelli, Angelo Leccese, Marco Vizzari
Format: Article
Language:English
Published: MDPI AG 2021-08-01
Series:Remote Sensing
Subjects:
GIS
Online Access:https://www.mdpi.com/2072-4292/13/17/3379
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spelling doaj-005897ae51004d9f9381a4895657ea282021-09-09T13:55:06ZengMDPI AGRemote Sensing2072-42922021-08-01133379337910.3390/rs13173379Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, ItalyFrancesco Saverio Santaga0Alberto Agnelli1Angelo Leccese2Marco Vizzari3Institute of BioEconomy (IBE), National Research Council (CNR), 10-50019 Firenze, ItalyDepartment of Agricultural, Food, and Environmental Sciences, University of Perugia, 74-06121 Perugia, ItalyDepartment of Agricultural, Food, and Environmental Sciences, University of Perugia, 74-06121 Perugia, ItalyDepartment of Agricultural, Food, and Environmental Sciences, University of Perugia, 74-06121 Perugia, ItalySoil-sample collection and strategy are costly and time-consuming endeavors, mainly when the goal is in-field variation mapping that usually requires dense sampling. This study developed and tested a streamlined soil mapping methodology, applicable at the field scale, based on an unsupervised classification of Sentinel-2 (S2) data supporting the definition of reduced soil-sampling schemes. The study occurred in two agricultural fields of 20 hectares each near Deruta, Umbria, Italy. S2 images were acquired for the two bare fields. After a band selection based on bibliography, PCA (Principal Component Analysis) and cluster analysis were used to identify points of two reduced-sample schemes. The data obtained by these samplings were used in linear regressions with principal components of the selected S2 bands to produce maps for clay and organic matter (OM). Resultant maps were assessed by analyzing residuals with a conventional soil sampling of 30 soil samples for each field to quantify their accuracy level. Although of limited extent and with a specific focus, the low average errors (Clay ± 2.71%, OM ± 0.16%) we obtained using only three soil samples suggest a wider potential for this methodology. The proposed approach, integrating S2 data and traditional soil-sampling methods could considerably reduce soil-sampling time and costs in ordinary and precision agriculture applications.https://www.mdpi.com/2072-4292/13/17/3379soil mappingremote sensingGISprecision agriculturesoil samplingclay
collection DOAJ
language English
format Article
sources DOAJ
author Francesco Saverio Santaga
Alberto Agnelli
Angelo Leccese
Marco Vizzari
spellingShingle Francesco Saverio Santaga
Alberto Agnelli
Angelo Leccese
Marco Vizzari
Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, Italy
Remote Sensing
soil mapping
remote sensing
GIS
precision agriculture
soil sampling
clay
author_facet Francesco Saverio Santaga
Alberto Agnelli
Angelo Leccese
Marco Vizzari
author_sort Francesco Saverio Santaga
title Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, Italy
title_short Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, Italy
title_full Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, Italy
title_fullStr Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, Italy
title_full_unstemmed Using Sentinel-2 for Simplifying Soil Sampling and Mapping: Two Case Studies in Umbria, Italy
title_sort using sentinel-2 for simplifying soil sampling and mapping: two case studies in umbria, italy
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-08-01
description Soil-sample collection and strategy are costly and time-consuming endeavors, mainly when the goal is in-field variation mapping that usually requires dense sampling. This study developed and tested a streamlined soil mapping methodology, applicable at the field scale, based on an unsupervised classification of Sentinel-2 (S2) data supporting the definition of reduced soil-sampling schemes. The study occurred in two agricultural fields of 20 hectares each near Deruta, Umbria, Italy. S2 images were acquired for the two bare fields. After a band selection based on bibliography, PCA (Principal Component Analysis) and cluster analysis were used to identify points of two reduced-sample schemes. The data obtained by these samplings were used in linear regressions with principal components of the selected S2 bands to produce maps for clay and organic matter (OM). Resultant maps were assessed by analyzing residuals with a conventional soil sampling of 30 soil samples for each field to quantify their accuracy level. Although of limited extent and with a specific focus, the low average errors (Clay ± 2.71%, OM ± 0.16%) we obtained using only three soil samples suggest a wider potential for this methodology. The proposed approach, integrating S2 data and traditional soil-sampling methods could considerably reduce soil-sampling time and costs in ordinary and precision agriculture applications.
topic soil mapping
remote sensing
GIS
precision agriculture
soil sampling
clay
url https://www.mdpi.com/2072-4292/13/17/3379
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