基于多特征随机森林的矿农复合区土地利用分类:沛县案例研究

IF 3.7 2区 农林科学 Q2 FOOD SCIENCE & TECHNOLOGY
Jiaxing Xu, Chen Chen, Shutian Zhou, Wenmin Hu, Wei Zhang
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引用次数: 0

摘要

土地利用分类在分析土地利用/覆盖变化(LUCC)方面发挥着至关重要的作用。基于机器学习算法的遥感土地利用分类是当前遥感技术研究的热点之一。矿农混杂区地表物体的多样性及其分布的复杂性给传统遥感图像的分类带来了挑战,遥感图像中蕴含的丰富信息没有得到充分利用。通过定量差异指数对易混淆土地类型的纹理特征进行量化和筛选,提出了遥感影像多特征组合分类方案的随机森林(RF)分类方法,并提取了徐州沛县矿农复合区的土地利用信息。事实证明,定量差异指数能有效降低特征参数的维数,使最优特征方案维数从57降到22。在基于最优特征分类方案的四种分类方法中,RF 算法的分类准确率为 92.38%,Kappa 系数为 0.90,优于支持向量机(SVM)、分类回归树(CART)和神经网络(NN)算法。研究结果表明,定量微分指数是一种新颖而有效的方法,可用于辨别各种土地类型的不同纹理特征,在多光谱遥感图像中纹理特征的选择和优化方面发挥着至关重要的作用。利用多特征组合的随机森林(RF)分类方法为矿农复合区内错综复杂的地面物体的精确分类提供了全新的方法支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Land use classification in mine-agriculture compound area based on multi-feature random forest: a case study of Peixian
Land use classification plays a critical role in analyzing land use/cover change (LUCC). Remote sensing land use classification based on machine learning algorithm is one of the hot spots in current remote sensing technology research. The diversity of surface objects and the complexity of their distribution in mixed mining and agricultural areas have brought challenges to the classification of traditional remote sensing images, and the rich information contained in remote sensing images has not been fully utilized.A quantitative difference index was proposed quantify and select the texture features of easily confused land types, and a random forest (RF) classification method with multi-feature combination classification schemes for remote sensing images was developed, and land use information of the mine-agriculture compound area of Peixian in Xuzhou, China was extracted.The quantitative difference index proved effective in reducing the dimensionality of feature parameters and resulted in a reduction of the optimal feature scheme dimension from 57 to 22. Among the four classification methods based on the optimal feature classification scheme, the RF algorithm emerged as the most efficient with a classification accuracy of 92.38% and a Kappa coefficient of 0.90, which outperformed the support vector machine (SVM), classification and regression tree (CART), and neural network (NN) algorithm.The findings indicate that the quantitative differential index is a novel and effective approach for discerning distinct texture features among various land types. It plays a crucial role in the selection and optimization of texture features in multispectral remote sensing imagery. Random forest (RF) classification method, leveraging a multi-feature combination, provides a fresh method support for the precise classification of intricate ground objects within the mine-agriculture compound area.
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来源期刊
Frontiers in Sustainable Food Systems
Frontiers in Sustainable Food Systems Agricultural and Biological Sciences-Horticulture
CiteScore
5.60
自引率
6.40%
发文量
575
审稿时长
14 weeks
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