通过遥感增强岩性制图:采用支持向量机、随机树、人工神经网络、MNF和PCA转换

IF 3.7 3区 地球科学 Q2 ENVIRONMENTAL SCIENCES
Mohamed Ali El-Omairi, Manal El Garouani, Abdelkader El Garouani
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引用次数: 0

摘要

本研究考察了三种分类算法——支持向量机(SVM)、随机树(RT)和人工神经网络(ANN)——对Landsat 9和Sentinel-2光谱数据进行岩性制图的性能。研究区域位于反阿特拉斯中部,由1:50 000的Aït Semgane地质图覆盖,具有不同的地质构造,非常适合测试先进的遥感技术。结果表明,支持向量机尤其是最小噪声分数(Minimum Noise Fraction, MNF)变换具有最好的性能。对于Sentinel-2图像,MNF支持向量机实现了较高的用户和生产者精度和明确的岩性边界。RT和ANN也表现出良好的性能,但略逊于SVM, RT对原始Landsat 9波段的Kappa指数为0.84,ANN对经过MNF变换的Sentinel-2数据的Kappa指数最高为0.75。MNF变换通常可以提高支持向量机和人工神经网络的性能,而主成分分析(PCA)的效果往往较差。支持向量机对高维数据的鲁棒性和抗过拟合性使其成为一种很有前途的精确岩性分类工具。这项研究对地质学和地球科学具有实际意义。使用降维技术,特别是MNF技术,可以极大地提高多光谱和高光谱数据的分类质量。这些结果不仅对改进地方和区域尺度的地质填图、矿产勘探和自然资源管理有价值,而且对在不同全球背景下进行大规模地形分析具有重要潜力。这些发现可以支持全球在地质灾害评估、资源管理和环境监测方面的努力,特别是在地质环境具有挑战性的地区。研究还提出了未来的研究方向,如探索新的降维技术,评估不同遥感数据集的分类方法,以及整合地球物理或地球化学数据以进一步提高精度
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhanced lithological mapping via remote sensing: Employing SVM, random trees, ANN, with MNF and PCA transformations
This study examines the performance of three classification algorithms—Support Vector Machines (SVM), Random Trees (RT), and Artificial Neural Networks (ANN)—applied to Landsat 9 and Sentinel-2 spectral data for lithological mapping. The study area, located in the Central Anti-Atlas, is covered by the 1:50,000 geological map of Aït Semgane, featuring diverse geological formations, ideal for testing advanced remote sensing techniques. Results show that SVM, particularly with Minimum Noise Fraction (MNF) transformation, offers the best performance. For Sentinel-2 images, SVM with MNF achieves high user and producer accuracies and well-defined lithological boundaries. While RT and ANN also show good performance, they are slightly inferior to SVM, with RT achieving a Kappa index of 0.84 for raw Landsat 9 bands and ANN obtaining a maximum of 0.75 for Sentinel-2 data transformed with MNF. The MNF transformation generally improves SVM and ANN performance, whereas Principal Component Analysis (PCA) often produces inferior results. The robustness of SVM for high-dimensional data and its resistance to overfitting make it a promising tool for accurate lithological classification. This research has practical implications for geology and Earth sciences. The use of dimensionality reduction, particularly MNF, can greatly enhance classification quality for multispectral and hyperspectral data. These results are not only valuable for improving geological mapping, mineral exploration, and natural resource management at local and regional scales but also have significant potential for large-scale terrain analysis in diverse global contexts. The findings could support global efforts in geological hazard assessments, resource management, and environmental monitoring, particularly in regions with challenging geological settings. The study also proposes future research directions, such as exploring new dimensionality reduction techniques, evaluating classification methods with different remote sensing datasets, and integrating geophysical or geochemical data to further improve accuracy
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来源期刊
CiteScore
8.10
自引率
0.00%
发文量
85
审稿时长
48 weeks
期刊介绍: The Egyptian Journal of Remote Sensing and Space Sciences (EJRS) encompasses a comprehensive range of topics within Remote Sensing, Geographic Information Systems (GIS), planetary geology, and space technology development, including theories, applications, and modeling. EJRS aims to disseminate high-quality, peer-reviewed research focusing on the advancement of remote sensing and GIS technologies and their practical applications for effective planning, sustainable development, and environmental resource conservation. The journal particularly welcomes innovative papers with broad scientific appeal.
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