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Land cover classification analysis of volcanic island in Aleutian Arc using an artificial neural network (ANN) and a support vector machine (SVM) from Landsat imagery

机译:利用人工神经网络(ANN)和Landsat Imagery and Angian Arc弧形火山岛的土地覆盖分类分析

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Land cover (LC) mapping is an important research topic with many applications in remote sensing. Especially, for volcanic areas where direct field access is difficult, remote sensing data are needed to map LC. Volcanic areas are attractive targets for LC mapping because any spread of volcanic eruptions must be monitored. When creating LC maps, it is important to minimize errors because such errors compromise analyses using these maps. Here, we analyzed multispectral data from Mount Kanaga, Mount Fourpeaked, Mount Pavlof, and Mount Augustine using two different classifiers, an artificial neural network (ANN) and a support vector machine (SVM). To this end, we employed Landsat 8 imagery, which features four LC classes: outcrops (pyroclastic deposits, volcanic rock, sand, etc.), vegetation, water bodies, and snow. We found that the SVM was more accurate than the ANN. For Mount Kanaga, the SVM afforded the best classification accuracy (98.08%), 9.14% better than the ANN (88.94%); for the other volcanoes, the accuracy of the two methods did not differ significantly. Overall, both classifiers accurately distinguished products of volcanic eruption (outcrops) from other LC. Thus, both the ANN and SVM can be used for LC classification.
机译:陆地覆盖(LC)映射是一个重要的研究主题,具有许多在遥感中的应用。特别是,对于难以直接现场访问的火山区域,需要遥感数据来映射LC。火山区域是LC映射的有吸引力的目标,因为必须监控任何火山爆发的传播。创建LC映射时,重要的是最小化错误,因为此类错误会妥协使用这些映射的分析。在这里,我们使用两种不同的分类器,人工神经网络(ANN)和支持向量机(SVM)分析了从kanaga山,坐的kanaga,四个,座椅的多光谱数据和奥古斯丁安装的多光谱数据。为此,我们采用了Landsat 8图像,其中包含四种LC类:露头(Pyroclastic沉积物,火山岩,沙子等),植被,水体和雪。我们发现SVM比ANN更准确。对于Kanaga Mount,SVM提供了最好的分类准确性(98.08%),比ANN更好9.14%(88.94%);对于其他火山,两种方法的准确性没有显着差异。总体而言,两种分类器都准确地区分了来自其他LC的火山喷发产品(露出)。因此,ANN和SVM都可以用于LC分类。

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