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Lithological Classification Using Sentinel-2A Data in the Shibanjing Ophiolite Complex in Inner Mongolia, China

机译:基于Sentinel-2A数据的内蒙古石板井蛇绿岩复合物岩性分类

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As a source of data continuity between Landsat and SPOT, Sentinel-2 is an Earth observation mission developed by the European Space Agency (ESA), which acquires 13 bands in the visible and near-infrared (VNIR) to shortwave infrared (SWIR) range. In this study, a Sentinel-2A imager was utilized to assess its ability to perform lithological classification in the Shibanjing ophiolite complex in Inner Mongolia, China. Five conventional machine learning methods, including artificial neural network (ANN), k -nearest neighbor ( k -NN), maximum likelihood classification (MLC), random forest classifier (RFC), and support vector machine (SVM), were compared in order to find an optimal classifier for lithological mapping. The experiment revealed that the MLC method offered the highest overall accuracy. After that, Sentinel-2A image was compared with common multispectral data ASTER and Landsat-8 OLI (operational land imager) for lithological mapping using the MLC method. The comparison results showed that the Sentinel-2A imagery yielded a classification accuracy of 74.5%, which was 2.5% and 5.08% higher than those of the ASTER and OLI imagery, respectively, indicating that Sentinel-2A imagery is adequate for lithological discrimination, due to its high spectral resolution in the VNIR to SWIR range. Moreover, different data combinations of Sentinel-2A + ASTER + DEM (digital elevation model) and OLI + ASTER + DEM data were tested on lithological mapping using the MLC method. The best mapping result was obtained from Sentinel-2A + ASTER + DEM dataset, demonstrating that OLI can be replaced by Sentinel-2A, which, when combined with ASTER, can achieve sufficient bandpasses for lithological classification.
机译:作为Landsat与SPOT之间数据连续性的来源,Sentinel-2是由欧洲航天局(ESA)开发的对地观测任务,该任务获取了可见光和近红外(VNIR)到短波红外(SWIR)范围内的13个波段。在这项研究中,Sentinel-2A成像仪被用来评估其在中国内蒙古的石板井蛇绿岩复合物中进行岩性分类的能力。按顺序比较了五种常规机器学习方法,包括人工神经网络(ANN),k近邻(k -NN),最大似然分类(MLC),随机森林分类器(RFC)和支持向量机(SVM)寻找岩性测绘的最佳分类器。实验表明,MLC方法提供了最高的整体精度。之后,使用MLC方法将Sentinel-2A图像与常见的多光谱数据ASTER和Landsat-8 OLI(可操作的陆地成像仪)进行岩性标测。比较结果表明,Sentinel-2A图像的分类精度为74.5%,分别比ASTER和OLI图像的分类精度高2.5%和5.08%,这表明Sentinel-2A图像足以进行岩性识别。在VNIR至SWIR范围内具有很高的光谱分辨率。此外,使用MLC方法在岩性制图上测试了Sentinel-2A + ASTER + DEM(数字高程模型)和OLI + ASTER + DEM数据的不同数据组合。从Sentinel-2A + ASTER + DEM数据集获得了最佳映射结果,表明OLI可以被Sentinel-2A取代,当与ASTER结合使用时,可以实现足够的带通进行岩性分类。

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