An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 Imagery

As a consumed and influential natural plant beverage, tea is widely planted in subtropical and tropical areas all over the world. Affected by (sub) tropical climate characteristics, the underlying surface of the tea distribution area is extremely complex, with a variety of vegetation types. In addit...

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Main Author: Juanjuan YU,Xiufeng HE,Jia XU,Zhuang GAO,Peng YANG,Yuanyuan CHEN,Jiacheng XIONG
Format: Article
Language:English
Published: Surveying and Mapping Press 2023-03-01
Series:Journal of Geodesy and Geoinformation Science
Subjects:
Online Access:http://jggs.chinasmp.com/fileup/2096-5990/PDF/1683188324198-585559152.pdf
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author Juanjuan YU,Xiufeng HE,Jia XU,Zhuang GAO,Peng YANG,Yuanyuan CHEN,Jiacheng XIONG
author_facet Juanjuan YU,Xiufeng HE,Jia XU,Zhuang GAO,Peng YANG,Yuanyuan CHEN,Jiacheng XIONG
author_sort Juanjuan YU,Xiufeng HE,Jia XU,Zhuang GAO,Peng YANG,Yuanyuan CHEN,Jiacheng XIONG
collection DOAJ
description As a consumed and influential natural plant beverage, tea is widely planted in subtropical and tropical areas all over the world. Affected by (sub) tropical climate characteristics, the underlying surface of the tea distribution area is extremely complex, with a variety of vegetation types. In addition, tea distribution is scattered and fragmentized in most of China. Therefore, it is difficult to obtain accurate tea information based on coarse resolution remote sensing data and existing feature extraction methods. This study proposed a boundary-enhanced, object-oriented random forest method on the basis of high-resolution GF-2 and multi-temporal Sentinel-2 data. This method uses multispectral indexes, textures, vegetable indices, and variation characteristics of time-series NDVI from the multi-temporal Sentinel-2 imageries to obtain abundant features related to the growth of tea plantations. To reduce feature redundancy and computation time, the feature elimination algorithm based on Mean Decrease Accuracy (MDA) was used to generate the optimal feature set. Considering the serious boundary inconsistency problem caused by the complex and fragmented land cover types, high resolution GF-2 image was segmented based on the MultiResolution Segmentation (MRS) algorithm to assist the segmentation of Sentinel-2, which contributes to delineating meaningful objects and enhancing the reliability of the boundary for tea plantations. Finally, the object-oriented random forest method was utilized to extract the tea information based on the optimal feature combination in the Jingmai Mountain, Yunnan Province. The resulting tea plantation map had high accuracy, with a 95.38% overall accuracy and 0.91 kappa coefficient. We conclude that the proposed method is effective for mapping tea plantations in high heterogeneity mountainous areas and has the potential for mapping tea plantations in large areas.
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spelling doaj.art-aaed2825e7904bbcb47e34f1ffa54d662023-05-09T04:00:41ZengSurveying and Mapping PressJournal of Geodesy and Geoinformation Science2096-59902023-03-0161314610.11947/j.JGGS.2023.0103An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 ImageryJuanjuan YU,Xiufeng HE,Jia XU,Zhuang GAO,Peng YANG,Yuanyuan CHEN,Jiacheng XIONG01. School of Earth Sciences and Engineering, Hohai University, Nanjing 211100, China;2. College of Givil Engineering, Nanjing Forestry University, Nanjing 210037, China;3. GFZ German Research Gentre for Geosciences, Potsdam 14473, GermanyAs a consumed and influential natural plant beverage, tea is widely planted in subtropical and tropical areas all over the world. Affected by (sub) tropical climate characteristics, the underlying surface of the tea distribution area is extremely complex, with a variety of vegetation types. In addition, tea distribution is scattered and fragmentized in most of China. Therefore, it is difficult to obtain accurate tea information based on coarse resolution remote sensing data and existing feature extraction methods. This study proposed a boundary-enhanced, object-oriented random forest method on the basis of high-resolution GF-2 and multi-temporal Sentinel-2 data. This method uses multispectral indexes, textures, vegetable indices, and variation characteristics of time-series NDVI from the multi-temporal Sentinel-2 imageries to obtain abundant features related to the growth of tea plantations. To reduce feature redundancy and computation time, the feature elimination algorithm based on Mean Decrease Accuracy (MDA) was used to generate the optimal feature set. Considering the serious boundary inconsistency problem caused by the complex and fragmented land cover types, high resolution GF-2 image was segmented based on the MultiResolution Segmentation (MRS) algorithm to assist the segmentation of Sentinel-2, which contributes to delineating meaningful objects and enhancing the reliability of the boundary for tea plantations. Finally, the object-oriented random forest method was utilized to extract the tea information based on the optimal feature combination in the Jingmai Mountain, Yunnan Province. The resulting tea plantation map had high accuracy, with a 95.38% overall accuracy and 0.91 kappa coefficient. We conclude that the proposed method is effective for mapping tea plantations in high heterogeneity mountainous areas and has the potential for mapping tea plantations in large areas.http://jggs.chinasmp.com/fileup/2096-5990/PDF/1683188324198-585559152.pdf|tea plantation mapping|multi-temporal|edge-assisted|object-oriented random forest|sentinel-2|gaofen-2
spellingShingle Juanjuan YU,Xiufeng HE,Jia XU,Zhuang GAO,Peng YANG,Yuanyuan CHEN,Jiacheng XIONG
An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 Imagery
Journal of Geodesy and Geoinformation Science
|tea plantation mapping|multi-temporal|edge-assisted|object-oriented random forest|sentinel-2|gaofen-2
title An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 Imagery
title_full An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 Imagery
title_fullStr An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 Imagery
title_full_unstemmed An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 Imagery
title_short An Edge-assisted, Object-oriented Random Forest Approach for Refined Extraction of Tea Plantations Using Multi-temporal Sentinel-2 and High-resolution Gaofen-2 Imagery
title_sort edge assisted object oriented random forest approach for refined extraction of tea plantations using multi temporal sentinel 2 and high resolution gaofen 2 imagery
topic |tea plantation mapping|multi-temporal|edge-assisted|object-oriented random forest|sentinel-2|gaofen-2
url http://jggs.chinasmp.com/fileup/2096-5990/PDF/1683188324198-585559152.pdf
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