基于AdaBoost和随机森林机器学习分类器的多光谱卫星影像植被制图中植被指数和光谱特征的集成

Q3 Social Sciences
R. Saini
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引用次数: 3

摘要

植被测绘是遥感领域中一个活跃的研究领域。这项研究提出了一种通过整合几个植被指数和原始光谱带来绘制植被图的方法。土地利用-土地覆盖分类是通过两种强大的机器学习技术进行的,即随机森林和AdaBoost。随机森林算法基于为最终预测构建多个决策树的概念。为分类选择的另一种机器学习技术是AdaBoost(自适应增强),它将一组弱学习者转换为强学习者。这里使用了印度德拉敦的多光谱卫星数据。结果表明,Random Forest和AdaBoost纳入选定的植被指数后,植被指数分别增加了3.87%和4.32%。通过随机森林和AdaBoost分类器分别获得91.23%(kappa值为0.89)和88.59%(kappa价值为0.86)的总体准确度(OA)。尽管与AdaBoost相比,Random Forest实现了更大的OA,但有趣的是,与Random Forest相比,AdaBoost为灌木林类提供了更好的类特定精度。此外,本研究还评估了分类中使用的每个单独特征的重要性。结果表明,NDRE、GNDVI和RTVIcore植被指数以及光谱带(NIR和红边)的重要性得分较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Vegetation Indices and Spectral Features for Vegetation Mapping from Multispectral Satellite Imagery Using AdaBoost and Random Forest Machine Learning Classifiers
Vegetation mapping is an active research area in the domain of remote sensing. This study proposes a methodology for the mapping of vegetation by integrating several vegetation indices along with original spectral bands. The Land Use Land Cover classification was performed by two powerful Machine Learning techniques, namely Random Forest and AdaBoost. The Random Forest algorithm works on the concept of building multiple decision trees for the final prediction. The other Machine Learning technique selected for the classification is AdaBoost (adaptive boosting), converts a set of weak learners into strong learners. Here, multispectral satellite data of Dehradun, India, was utilised. The results demonstrate an increase of 3.87% and 4.32% after inclusion of selected vegetation indices by Random Forest and AdaBoost respectively. An Overall Accuracy (OA) of 91.23% (kappa value of 0.89) and 88.59% (kappa value of 0.86) was obtained by means of the Random Forest and AdaBoost classifiers respectively. Although Random Forest achieved greater OA as compared to AdaBoost, interestingly AdaBoost provided better class-specific accuracy for the Shrubland class compared to Random Forest. Furthermore, this study also evaluated the importance of each individual feature used in the classification. Results demonstrated that the NDRE, GNDVI, and RTVIcore vegetation indices, and spectral bands (NIR, and Red-Edge), obtained higher importance scores.
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来源期刊
Geomatics and Environmental Engineering
Geomatics and Environmental Engineering Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
2.30
自引率
0.00%
发文量
27
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