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首页|期刊导航|草业科学|基于不同机器学习算法伊犁绢蒿荒漠草地主要地物的高光谱分类

基于不同机器学习算法伊犁绢蒿荒漠草地主要地物的高光谱分类

李文雄 靳瑰丽 刘文昊 马建 李嘉欣 王生菊 陈梦甜

草业科学2025,Vol.42Issue(1):35-43,9.
草业科学2025,Vol.42Issue(1):35-43,9.DOI:10.11829/j.issn.1001-0629.2023-0564

基于不同机器学习算法伊犁绢蒿荒漠草地主要地物的高光谱分类

Hyperspectral classification of main features of Seripphidium transiliense desert grassland based on different machine learning algorithms

李文雄 1靳瑰丽 1刘文昊 1马建 1李嘉欣 1王生菊 1陈梦甜1

作者信息

  • 1. 新疆农业大学草业学院,新疆乌鲁木齐 830052
  • 折叠

摘要

Abstract

Machine learning algorithms are widely used in the field of spectral classification.Different algorithm models directly affect the classification effect of ground objects.In this study,three main features of Seriphidium transiliense,Ceratocarpus arenarius,and soil in S.transiliense desert grassland were used as classification objects.Hyperspectral data of grassland vegetation communities were collected during the vigorous growth period of vegetation.The differences in spectral reflectance of different features were analyzed,and the characteristic bands were selected and substituted into the best index factor(OIF)to synthesize false color images.Three different machine learning algorithms,such as random forest(RF),support vector machines(SVM),and artificial neural network(ANN),were used to establish classification models.The results revealed that:1)The spectral reflectance of plants showed an inverted'U'trend in the visible light band and began to rise sharply in the near-infrared band,indicating a'red edge'phenomenon.The change trend of soil spectral reflectance was relatively stable but gradually increased with an increase in wavelength.2)The best classification band combination calculated using OIF was:499.69,535.78,633.28 nm,and the OIF value was 0.10.3)The overall classification accuracy of the three different machine learning algorithms was greater than 90%.The random forest algorithm classification model had the highest accuracy,with an overall accuracy of 97.54%and a Kappa coefficient of 0.95.The classification accuracies of the three types of ground objects under different algorithms were as follows:soil>S.transiliense>C.album.In general,the random forest algorithm had the best classification effect on the main features of desert grassland.

关键词

伊犁绢蒿/高光谱/草地监测/随机森林/支持向量机/人工神经网络

Key words

Seriphidium transiliense/hyperspectral/grassland monitoring/random forest/support vector machine/artificial neural network

引用本文复制引用

李文雄,靳瑰丽,刘文昊,马建,李嘉欣,王生菊,陈梦甜..基于不同机器学习算法伊犁绢蒿荒漠草地主要地物的高光谱分类[J].草业科学,2025,42(1):35-43,9.

基金项目

国家自然科学基金项目(31960360) (31960360)

草业科学

OA北大核心

1001-0629

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