遥感
特征(语言学)
湿地
环境科学
传感器融合
计算机科学
特征提取
鉴定(生物学)
随机森林
合成孔径雷达
雷达
植被(病理学)
数据挖掘
理论(学习稳定性)
特征选择
植被分类
生物多样性
上下文图像分类
植物群落
光谱特征
融合
叶面积指数
模式识别(心理学)
辅助数据
数据分类
方案(数学)
生态系统服务
生态系统
数据处理
作者
Runyuan Kuang,Gao Shuling,Xiaoyan Zhuang,Runyuan Kuang,Gao Shuling,Xiaoyan Zhuang
摘要
ABSTRACT The plant communities of Poyang Lake, constituting the foundational element of the wetland ecosystem, are integral to crucial ecological processes including energy flow, biodiversity sustenance, water purification and hydrological regulation. Consequently, they serve an irreplaceable function in preserving the stability and ecosystem services of the region. This study uses Landsat 8, Sentinel‐2 optical images and Sentinel‐1 SAR images as data sources to extract spectral reflectance, index features and texture features from optical images as well as radar backscattering features from SAR images, constructing a multidimensional feature dataset. The Recursive Feature Elimination algorithm is employed to perform feature optimization on the dataset. Three classification schemes with different feature combinations are designed, and based on the random forest classifier, the impacts of multisource data fusion and feature optimization on the accuracy of plant community identification are investigated. The results demonstrate that the feature optimization‐based classification scheme attains the highest accuracy, reaching 93.42% overall accuracy with a Kappa coefficient of 0.93. Meanwhile, the optical‐SAR data fusion scheme shows significantly superior performance compared with the optical‐only scheme, delivering a 13.04% enhancement in overall classification accuracy. This study provides a scientific reference for remote sensing classification of wetland plant communities and supports biodiversity conservation and ecological management in the Poyang Lake wetland.
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