Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imagery

Mango is a commercial crop on Hainan Island, China, that is cultivated to develop the tropical rural economy. The development of accurate and up-to-date maps of the spatial distribution of mango plantations is necessary for agricultural monitoring and decision management by the local government. Pix...

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Main Authors: Hong-xia LUO, Sheng-pei DAI, Mao-fen LI, En-ping LIU, Qian ZHENG, Ying-ying HU, Xiao-ping YI
Format: Article
Language:English
Published: Elsevier 2020-11-01
Series:Journal of Integrative Agriculture
Subjects:
SVM
RF
Online Access:http://www.sciencedirect.com/science/article/pii/S2095311920632087
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record_format Article
collection DOAJ
language English
format Article
sources DOAJ
author Hong-xia LUO
Sheng-pei DAI
Mao-fen LI
En-ping LIU
Qian ZHENG
Ying-ying HU
Xiao-ping YI
spellingShingle Hong-xia LUO
Sheng-pei DAI
Mao-fen LI
En-ping LIU
Qian ZHENG
Ying-ying HU
Xiao-ping YI
Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imagery
Journal of Integrative Agriculture
mango plantations
GLCM texture
SVM
RF
GF-1
author_facet Hong-xia LUO
Sheng-pei DAI
Mao-fen LI
En-ping LIU
Qian ZHENG
Ying-ying HU
Xiao-ping YI
author_sort Hong-xia LUO
title Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imagery
title_short Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imagery
title_full Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imagery
title_fullStr Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imagery
title_full_unstemmed Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imagery
title_sort comparison of machine learning algorithms for mapping mango plantations based on gaofen-1 imagery
publisher Elsevier
series Journal of Integrative Agriculture
issn 2095-3119
publishDate 2020-11-01
description Mango is a commercial crop on Hainan Island, China, that is cultivated to develop the tropical rural economy. The development of accurate and up-to-date maps of the spatial distribution of mango plantations is necessary for agricultural monitoring and decision management by the local government. Pixel-based and object-oriented image analysis methods for mapping mango plantations were compared using two machine learning algorithms (support vector machine (SVM) and Random Forest (RF)) based on Chinese high-resolution Gaofen-1 (GF-1) imagery in parts of Hainan Island. To assess the importance of different features on classification accuracy, a combined layer of four original bands, 32 gray-level co-occurrence (GLCM) texture indices, and 10 vegetation indices were used as input features. Then five different sets of variables (5, 10, 20, and 30 input variables and all 46 variables) were classified with the two machine learning algorithms at object-based level. Results of the feature optimization suggested that homogeneity and variance were very important variables for distinguishing mango plantations patches. The object-based classifiers could significantly improve overall accuracy between 2–7% when compared to pixel-based classifiers. When there were 5 and 10 input variables, SVM showed higher classification accuracy than RF, and when the input variables exceeded 20, RF showed better performances. After the accuracy achieved saturation points, there were only slightly classification accuracy improvements along with the numbers of feature increases for both of SVM and RF classifiers. The results indicated that GF-1 imagery can be successfully applied to mango plantation mapping in tropical regions, which would provide a useful framework for accurate tropical agriculture land management.
topic mango plantations
GLCM texture
SVM
RF
GF-1
url http://www.sciencedirect.com/science/article/pii/S2095311920632087
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spelling doaj-a0ff9e309dee43dab976e2c6b03ebb272021-06-08T04:42:33ZengElsevierJournal of Integrative Agriculture2095-31192020-11-01191128152828Comparison of machine learning algorithms for mapping mango plantations based on Gaofen-1 imageryHong-xia LUO0Sheng-pei DAI1Mao-fen LI2En-ping LIU3Qian ZHENG4Ying-ying HU5Xiao-ping YI6Institute of Scientific and Technical Information, Chinese Academy of Tropical Agricultural Sciences/Key Laboratory of Practical on Tropical Crops Information Technology in Hainan, Haikou 571000, P.R.China; Land Use Key Laboratory of the Ministry of Natural Resources of China, Chinese Land Survey and Planning Institute, Beijng 100101, P.R.China; Key Laboratory of Agricultural Remote Sensing, Ministry of Agriculture and Rural Affairs, Beijing 100100, P.R.China; LUO Hong-xia, Mobile: +86-15595700506Institute of Scientific and Technical Information, Chinese Academy of Tropical Agricultural Sciences/Key Laboratory of Practical on Tropical Crops Information Technology in Hainan, Haikou 571000, P.R.China; Land Use Key Laboratory of the Ministry of Natural Resources of China, Chinese Land Survey and Planning Institute, Beijng 100101, P.R.China; Key Laboratory of Agricultural Remote Sensing, Ministry of Agriculture and Rural Affairs, Beijing 100100, P.R.China; Correspondence DAI Sheng-pei, Tel: +86-898-66969285Institute of Scientific and Technical Information, Chinese Academy of Tropical Agricultural Sciences/Key Laboratory of Practical on Tropical Crops Information Technology in Hainan, Haikou 571000, P.R.China; Key Laboratory of Agricultural Remote Sensing, Ministry of Agriculture and Rural Affairs, Beijing 100100, P.R.ChinaInstitute of Scientific and Technical Information, Chinese Academy of Tropical Agricultural Sciences/Key Laboratory of Practical on Tropical Crops Information Technology in Hainan, Haikou 571000, P.R.ChinaInstitute of Scientific and Technical Information, Chinese Academy of Tropical Agricultural Sciences/Key Laboratory of Practical on Tropical Crops Information Technology in Hainan, Haikou 571000, P.R.ChinaInstitute of Scientific and Technical Information, Chinese Academy of Tropical Agricultural Sciences/Key Laboratory of Practical on Tropical Crops Information Technology in Hainan, Haikou 571000, P.R.ChinaLand Use Key Laboratory of the Ministry of Natural Resources of China, Chinese Land Survey and Planning Institute, Beijng 100101, P.R.ChinaMango is a commercial crop on Hainan Island, China, that is cultivated to develop the tropical rural economy. The development of accurate and up-to-date maps of the spatial distribution of mango plantations is necessary for agricultural monitoring and decision management by the local government. Pixel-based and object-oriented image analysis methods for mapping mango plantations were compared using two machine learning algorithms (support vector machine (SVM) and Random Forest (RF)) based on Chinese high-resolution Gaofen-1 (GF-1) imagery in parts of Hainan Island. To assess the importance of different features on classification accuracy, a combined layer of four original bands, 32 gray-level co-occurrence (GLCM) texture indices, and 10 vegetation indices were used as input features. Then five different sets of variables (5, 10, 20, and 30 input variables and all 46 variables) were classified with the two machine learning algorithms at object-based level. Results of the feature optimization suggested that homogeneity and variance were very important variables for distinguishing mango plantations patches. The object-based classifiers could significantly improve overall accuracy between 2–7% when compared to pixel-based classifiers. When there were 5 and 10 input variables, SVM showed higher classification accuracy than RF, and when the input variables exceeded 20, RF showed better performances. After the accuracy achieved saturation points, there were only slightly classification accuracy improvements along with the numbers of feature increases for both of SVM and RF classifiers. The results indicated that GF-1 imagery can be successfully applied to mango plantation mapping in tropical regions, which would provide a useful framework for accurate tropical agriculture land management.http://www.sciencedirect.com/science/article/pii/S2095311920632087mango plantationsGLCM textureSVMRFGF-1