First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe

The study presents the preliminary results of two classification exercises assessing the capabilities of pre-operational (August 2015) Sentinel-2 (S2) data for mapping crop types and tree species. In the first case study, an S2 image was used to map six summer crop species in Lower Austria as well a...

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Main Authors: Markus Immitzer, Francesco Vuolo, Clement Atzberger
Format: Article
Language:English
Published: MDPI AG 2016-02-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/8/3/166
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spelling doaj-bcdd354c77fc47e489c828ad72b31b922020-11-24T23:02:56ZengMDPI AGRemote Sensing2072-42922016-02-018316610.3390/rs8030166rs8030166First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central EuropeMarkus Immitzer0Francesco Vuolo1Clement Atzberger2Institute of Surveying, Remote Sensing and Land Information (IVFL), University of Natural Resources and Life Sciences, Vienna (BOKU), Peter Jordan Strasse 82, 1190 Vienna, AustriaInstitute of Surveying, Remote Sensing and Land Information (IVFL), University of Natural Resources and Life Sciences, Vienna (BOKU), Peter Jordan Strasse 82, 1190 Vienna, AustriaInstitute of Surveying, Remote Sensing and Land Information (IVFL), University of Natural Resources and Life Sciences, Vienna (BOKU), Peter Jordan Strasse 82, 1190 Vienna, AustriaThe study presents the preliminary results of two classification exercises assessing the capabilities of pre-operational (August 2015) Sentinel-2 (S2) data for mapping crop types and tree species. In the first case study, an S2 image was used to map six summer crop species in Lower Austria as well as winter crops/bare soil. Crop type maps are needed to account for crop-specific water use and for agricultural statistics. Crop type information is also useful to parametrize crop growth models for yield estimation, as well as for the retrieval of vegetation biophysical variables using radiative transfer models. The second case study aimed to map seven different deciduous and coniferous tree species in Germany. Detailed information about tree species distribution is important for forest management and to assess potential impacts of climate change. In our S2 data assessment, crop and tree species maps were produced at 10 m spatial resolution by combining the ten S2 spectral channels with 10 and 20 m pixel size. A supervised Random Forest classifier (RF) was deployed and trained with appropriate ground truth. In both case studies, S2 data confirmed its expected capabilities to produce reliable land cover maps. Cross-validated overall accuracies ranged between 65% (tree species) and 76% (crop types). The study confirmed the high value of the red-edge and shortwave infrared (SWIR) bands for vegetation mapping. Also, the blue band was important in both study sites. The S2-bands in the near infrared were amongst the least important channels. The object based image analysis (OBIA) and the classical pixel-based classification achieved comparable results, mainly for the cropland. As only single date acquisitions were available for this study, the full potential of S2 data could not be assessed. In the future, the two twin S2 satellites will offer global coverage every five days and therefore permit to concurrently exploit unprecedented spectral and temporal information with high spatial resolution.http://www.mdpi.com/2072-4292/8/3/166Sentinel-2forestcroplandclassificationRandom Forest
collection DOAJ
language English
format Article
sources DOAJ
author Markus Immitzer
Francesco Vuolo
Clement Atzberger
spellingShingle Markus Immitzer
Francesco Vuolo
Clement Atzberger
First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe
Remote Sensing
Sentinel-2
forest
cropland
classification
Random Forest
author_facet Markus Immitzer
Francesco Vuolo
Clement Atzberger
author_sort Markus Immitzer
title First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe
title_short First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe
title_full First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe
title_fullStr First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe
title_full_unstemmed First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe
title_sort first experience with sentinel-2 data for crop and tree species classifications in central europe
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2016-02-01
description The study presents the preliminary results of two classification exercises assessing the capabilities of pre-operational (August 2015) Sentinel-2 (S2) data for mapping crop types and tree species. In the first case study, an S2 image was used to map six summer crop species in Lower Austria as well as winter crops/bare soil. Crop type maps are needed to account for crop-specific water use and for agricultural statistics. Crop type information is also useful to parametrize crop growth models for yield estimation, as well as for the retrieval of vegetation biophysical variables using radiative transfer models. The second case study aimed to map seven different deciduous and coniferous tree species in Germany. Detailed information about tree species distribution is important for forest management and to assess potential impacts of climate change. In our S2 data assessment, crop and tree species maps were produced at 10 m spatial resolution by combining the ten S2 spectral channels with 10 and 20 m pixel size. A supervised Random Forest classifier (RF) was deployed and trained with appropriate ground truth. In both case studies, S2 data confirmed its expected capabilities to produce reliable land cover maps. Cross-validated overall accuracies ranged between 65% (tree species) and 76% (crop types). The study confirmed the high value of the red-edge and shortwave infrared (SWIR) bands for vegetation mapping. Also, the blue band was important in both study sites. The S2-bands in the near infrared were amongst the least important channels. The object based image analysis (OBIA) and the classical pixel-based classification achieved comparable results, mainly for the cropland. As only single date acquisitions were available for this study, the full potential of S2 data could not be assessed. In the future, the two twin S2 satellites will offer global coverage every five days and therefore permit to concurrently exploit unprecedented spectral and temporal information with high spatial resolution.
topic Sentinel-2
forest
cropland
classification
Random Forest
url http://www.mdpi.com/2072-4292/8/3/166
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