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融合时序Sentinel数据多特征优选的南方丘陵区油茶种植区提取

李恒凯 王洁 周艳兵 龙北平

农业机械学报2024,Vol.55Issue(7):241-251,11.
农业机械学报2024,Vol.55Issue(7):241-251,11.DOI:10.6041/j.issn.1000-1298.2024.07.023

融合时序Sentinel数据多特征优选的南方丘陵区油茶种植区提取

Extraction of Camellia oleifera Planting Areas in Southern Hilly Area by Combining Multi-features of Time-series Sentinel Data

李恒凯 1王洁 1周艳兵 2龙北平3

作者信息

  • 1. 江西理工大学土木与测绘工程学院,赣州 341000
  • 2. 北京市农林科学院信息技术研究中心,北京 100097
  • 3. 江西地质局地理信息工程大队,南昌 330001
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摘要

Abstract

As one of the economic forest species in Jiangxi Province,Camellia oleifera is also a characteristic advantageous industry in Jiangxi Province,and it is of great significance to accurately obtain its spatial distribution in terms of yield estimation,production management and policy formulation.In response to the lack of optical images due to the cloudy and rainy climate in the south,as well as the problem of fragmented terrain in hilly and mountainous areas,Yuanzhou District,Yichun City,Jiangxi Province,was taken as the study area.Using time-series Sentinel satellite imagery and SRTM DEM data as data sources,a total of 125 feature variables were constructed and selected,including spectral features,vegetation-water indices,red edge indices,radar features,terrain features and texture features.Among them,the texture features were calculated by comparing 15 different scale windows by using the cumulative difference method to calculate the best texture features for Sentinel-1 and Sentinel-2 images.Based on ReliefF feature preference algorithm and random forest classification algorithm,eight feature combination schemes were designed to carry out experiments to explore the impact of different feature types on the extraction accuracy of Camellia oleifera.The results showed that the optimal texture feature window for both Sentinel-1 and Sentinel-2 calculated experimentally by using the cumulative difference method was 35×35,and the optimal texture feature combinations were mean,variance and contrast.Building upon spectral features and vegetation-water indices,the incorporation of different features for Camellia oleifera classification demonstrated varying degrees of effectiveness.The favorability ranking of different feature types for Camellia oleifera extraction from large to small was as follows:S2 texture features,S1 texture features,terrain features,radar features and red edge index.Compared with single-spectrum and index features,the inclusion of texture features significantly enhanced classification accuracy.The synergistic classification results of multiple features surpass those of single-feature classification,with the highest precision achieved through Camellia oleifera extraction based on feature selection.The ReliefF algorithm feature optimized scheme had the highest accuracy with overall accuracy of 88.29%and Kappa coefficient of 0.81.This study utilized time-series Sentinel satellite imagery and DEM terrain data to develop a large-scale remote sensing extraction method for Camellia oleifera in the cloudy and rainy southern hilly mountainous region.This method can serve as a reference for the investigation and monitoring of Camellia oleifera resources in the hilly areas of southern China.

关键词

油茶/种植区提取/Sentinel-1/Sentinel-2/特征优选/累计差/ReliefF算法

Key words

Camellia oleifera/extraction of planting area/Sentinel-1/Sentinel-2/feature optimization/cumulative difference/ReliefF algorithm

分类

信息技术与安全科学

引用本文复制引用

李恒凯,王洁,周艳兵,龙北平..融合时序Sentinel数据多特征优选的南方丘陵区油茶种植区提取[J].农业机械学报,2024,55(7):241-251,11.

基金项目

江西省自然科学基金项目(20232ACB203025)、江西省高校人文社科研究项目(JC21123)、自然资源部重点实验室开放基金项目(MEMI-2021-2022-10)和江西省自然科学基金青年项目(20224BAB213038) (20232ACB203025)

农业机械学报

OA北大核心CSTPCD

1000-1298

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