Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth Engine
A greenhouse is an important land-use type, which can effectively improve agricultural production conditions and increase crop yields. It is of great significance to obtain the spatial distribution data of greenhouses quickly and accurately for regional agricultural production and food security. Bas...
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doaj-37f4606335e645928ccdbecb344106252021-03-26T00:01:16ZengMDPI AGRemote Sensing2072-42922021-03-01131245124510.3390/rs13071245Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth EngineJinhuang Lin0Xiaobin Jin1Jie Ren2Jingping Liu3Xinyuan Liang4Yinkang Zhou5School of Geography and Ocean Science, Nanjing University, 163 Xianlin Avenue, Qixia District, Nanjing 210023, ChinaSchool of Geography and Ocean Science, Nanjing University, 163 Xianlin Avenue, Qixia District, Nanjing 210023, ChinaSchool of Geography and Ocean Science, Nanjing University, 163 Xianlin Avenue, Qixia District, Nanjing 210023, ChinaSchool of Geography and Ocean Science, Nanjing University, 163 Xianlin Avenue, Qixia District, Nanjing 210023, ChinaSchool of Geography and Ocean Science, Nanjing University, 163 Xianlin Avenue, Qixia District, Nanjing 210023, ChinaSchool of Geography and Ocean Science, Nanjing University, 163 Xianlin Avenue, Qixia District, Nanjing 210023, ChinaA greenhouse is an important land-use type, which can effectively improve agricultural production conditions and increase crop yields. It is of great significance to obtain the spatial distribution data of greenhouses quickly and accurately for regional agricultural production and food security. Based on the Google Earth Engine cloud platform and Landsat 8 images, this study selected a total of 18 indicators from three aspects of spectral features, texture features and terrain features to construct greenhouse identification features. From a variety of classification algorithms for remote-sensing recognition of greenhouses, this study selected three classifiers with higher accuracy (classification and regression trees (CART), random forest model (randomForest) and maximum entropy model (gmoMaxEnt)) to construct an integrated classification algorithm, and then extracted the spatial distribution data of greenhouses in Jiangsu Province. The results show that: (1) Google Earth Engine with its own massive data and cloud computing capabilities, combined with integrated classification algorithms, can achieve rapid remote-sensing mapping of large-scale greenhouses under complex terrain, and the classification accuracy is higher than that of a single classification algorithm. (2) The combination of different spectral, texture and terrain features has a greater impact on the extraction of regional greenhouses, the combination of all three aspects of features has the highest accuracy. Spectral features are the key factors for greenhouse remote-sensing mapping, but terrain and texture features can also enhance classification accuracy. (3) The greenhouse in Jiangsu Province has significant spatial differentiation and spatial agglomeration characteristics. The most widely distributed greenhouses are mainly concentrated in the agriculturally developed areas such as Dongtai City, Hai’an County, Rudong County and Pizhou City.https://www.mdpi.com/2072-4292/13/7/1245Google Earth Engineintegrated learninggreenhouseLandsat 8Jiangsu Province |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jinhuang Lin Xiaobin Jin Jie Ren Jingping Liu Xinyuan Liang Yinkang Zhou |
spellingShingle |
Jinhuang Lin Xiaobin Jin Jie Ren Jingping Liu Xinyuan Liang Yinkang Zhou Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth Engine Remote Sensing Google Earth Engine integrated learning greenhouse Landsat 8 Jiangsu Province |
author_facet |
Jinhuang Lin Xiaobin Jin Jie Ren Jingping Liu Xinyuan Liang Yinkang Zhou |
author_sort |
Jinhuang Lin |
title |
Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth Engine |
title_short |
Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth Engine |
title_full |
Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth Engine |
title_fullStr |
Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth Engine |
title_full_unstemmed |
Rapid Mapping of Large-Scale Greenhouse Based on Integrated Learning Algorithm and Google Earth Engine |
title_sort |
rapid mapping of large-scale greenhouse based on integrated learning algorithm and google earth engine |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2021-03-01 |
description |
A greenhouse is an important land-use type, which can effectively improve agricultural production conditions and increase crop yields. It is of great significance to obtain the spatial distribution data of greenhouses quickly and accurately for regional agricultural production and food security. Based on the Google Earth Engine cloud platform and Landsat 8 images, this study selected a total of 18 indicators from three aspects of spectral features, texture features and terrain features to construct greenhouse identification features. From a variety of classification algorithms for remote-sensing recognition of greenhouses, this study selected three classifiers with higher accuracy (classification and regression trees (CART), random forest model (randomForest) and maximum entropy model (gmoMaxEnt)) to construct an integrated classification algorithm, and then extracted the spatial distribution data of greenhouses in Jiangsu Province. The results show that: (1) Google Earth Engine with its own massive data and cloud computing capabilities, combined with integrated classification algorithms, can achieve rapid remote-sensing mapping of large-scale greenhouses under complex terrain, and the classification accuracy is higher than that of a single classification algorithm. (2) The combination of different spectral, texture and terrain features has a greater impact on the extraction of regional greenhouses, the combination of all three aspects of features has the highest accuracy. Spectral features are the key factors for greenhouse remote-sensing mapping, but terrain and texture features can also enhance classification accuracy. (3) The greenhouse in Jiangsu Province has significant spatial differentiation and spatial agglomeration characteristics. The most widely distributed greenhouses are mainly concentrated in the agriculturally developed areas such as Dongtai City, Hai’an County, Rudong County and Pizhou City. |
topic |
Google Earth Engine integrated learning greenhouse Landsat 8 Jiangsu Province |
url |
https://www.mdpi.com/2072-4292/13/7/1245 |
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