Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop Mapping

Crop identification is key to global food security. Due to the large scale of crop estimation, the science of remote sensing was able to do well in this field. The purpose of this study is to study the shortcomings and strengths of combined radar data and optical images to identify the type of crops...

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Published in:Applied Sciences
Main Authors: Shilan Felegari, Alireza Sharifi, Kamran Moravej, Muhammad Amin, Ahmad Golchin, Anselme Muzirafuti, Aqil Tariq, Na Zhao
Format: Article
Language:English
Published: MDPI AG 2021-10-01
Subjects:
Online Access:https://www.mdpi.com/2076-3417/11/21/10104
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author Shilan Felegari
Alireza Sharifi
Kamran Moravej
Muhammad Amin
Ahmad Golchin
Anselme Muzirafuti
Aqil Tariq
Na Zhao
author_facet Shilan Felegari
Alireza Sharifi
Kamran Moravej
Muhammad Amin
Ahmad Golchin
Anselme Muzirafuti
Aqil Tariq
Na Zhao
author_sort Shilan Felegari
collection DOAJ
container_title Applied Sciences
description Crop identification is key to global food security. Due to the large scale of crop estimation, the science of remote sensing was able to do well in this field. The purpose of this study is to study the shortcomings and strengths of combined radar data and optical images to identify the type of crops in Tarom region (Iran). For this purpose, Sentinel 1 and Sentinel 2 images were used to create a map in the study area. The Sentinel 1 data came from Google Earth Engine’s (GEE) Level-1 Ground Range Detected (GRD) Interferometric Wide Swath (IW) product. Sentinel 1 radar observations were projected onto a standard 10-m grid in GRD output. The Sen2Cor method was used to mask for clouds and cloud shadows, and the Sentinel 2 Level-1C data was sourced from the Copernicus Open Access Hub. To estimate the purpose of classification, stochastic forest classification method was used to predict classification accuracy. Using seven types of crops, the classification map of the 2020 growth season in Tarom was prepared using 10-day Sentinel 2 smooth mosaic NDVI and 12-day Sentinel 1 back mosaic. Kappa coefficient of 0.75 and a maximum accuracy of 85% were reported in this study. To achieve maximum classification accuracy, it is recommended to use a combination of radar and optical data, as this combination increases the chances of examining the details compared to the single-sensor classification method and achieves more reliable information.
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spelling doaj-art-9c889c0d2df44aba9df56ec1e45e9bc32025-08-19T22:43:28ZengMDPI AGApplied Sciences2076-34172021-10-0111211010410.3390/app112110104Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop MappingShilan Felegari0Alireza Sharifi1Kamran Moravej2Muhammad Amin3Ahmad Golchin4Anselme Muzirafuti5Aqil Tariq6Na Zhao7Department of Soil Science, Faculty of Agriculture, University of Zanjan, Zanjan 45371-38791, IranDepartment of Surveying Engineering, Faculty of Civil Engineering, Shahid Rajaee Teacher Training University, Tehran 16788-15811, IranDepartment of Soil Science, Faculty of Agriculture, University of Zanjan, Zanjan 45371-38791, IranInstitute of Geo-Information & Earth Observation, PMAS Arid Agriculture University Rawalpindi, Rawalpindi 46300, PakistanDepartment of Soil Science, Faculty of Agriculture, University of Zanjan, Zanjan 45371-38791, IranInterreg Italia-Malta-Progetto: Pocket Beach Management and Remote Surveillance System, University of Messina, Via F. Stagno d’Alcontres, 31-98166 Messina, ItalyState Key Laboratory of Information Engineering in Surveying Mapping and Remote Sensing, Wuhan University, Wuhan 430079, ChinaState Key Laboratory of Resources and Environmental Information System, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, ChinaCrop identification is key to global food security. Due to the large scale of crop estimation, the science of remote sensing was able to do well in this field. The purpose of this study is to study the shortcomings and strengths of combined radar data and optical images to identify the type of crops in Tarom region (Iran). For this purpose, Sentinel 1 and Sentinel 2 images were used to create a map in the study area. The Sentinel 1 data came from Google Earth Engine’s (GEE) Level-1 Ground Range Detected (GRD) Interferometric Wide Swath (IW) product. Sentinel 1 radar observations were projected onto a standard 10-m grid in GRD output. The Sen2Cor method was used to mask for clouds and cloud shadows, and the Sentinel 2 Level-1C data was sourced from the Copernicus Open Access Hub. To estimate the purpose of classification, stochastic forest classification method was used to predict classification accuracy. Using seven types of crops, the classification map of the 2020 growth season in Tarom was prepared using 10-day Sentinel 2 smooth mosaic NDVI and 12-day Sentinel 1 back mosaic. Kappa coefficient of 0.75 and a maximum accuracy of 85% were reported in this study. To achieve maximum classification accuracy, it is recommended to use a combination of radar and optical data, as this combination increases the chances of examining the details compared to the single-sensor classification method and achieves more reliable information.https://www.mdpi.com/2076-3417/11/21/10104Sentinel 1 and 2Copernicus Sentinelscrop classificationfood securityagricultural monitoringremote sensing
spellingShingle Shilan Felegari
Alireza Sharifi
Kamran Moravej
Muhammad Amin
Ahmad Golchin
Anselme Muzirafuti
Aqil Tariq
Na Zhao
Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop Mapping
Sentinel 1 and 2
Copernicus Sentinels
crop classification
food security
agricultural monitoring
remote sensing
title Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop Mapping
title_full Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop Mapping
title_fullStr Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop Mapping
title_full_unstemmed Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop Mapping
title_short Integration of Sentinel 1 and Sentinel 2 Satellite Images for Crop Mapping
title_sort integration of sentinel 1 and sentinel 2 satellite images for crop mapping
topic Sentinel 1 and 2
Copernicus Sentinels
crop classification
food security
agricultural monitoring
remote sensing
url https://www.mdpi.com/2076-3417/11/21/10104
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