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MULTI-LABEL CLASSIFICATION FOR DRILL-CORE HYPERSPECTRAL MINERAL MAPPING

机译:钻核高光谱矿物测绘的多标签分类

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A multi-label classification concept is introduced for the mineral mapping task in drill-core hyperspectral data analysis. As opposed to traditional classification methods, this approach has the advantage of considering the different mineral mixtures present in each pixel. For the multi-label classification, the well-known Classifier Chain method (CC) is implemented using the Random Forest (RF) algorithm as the base classifier. High-resolution mineralogical data obtained from Scanning Electron Microscopy (SEM) instrument equipped with the Mineral Liberation Analysis (MLA) software are used for generating the training data set. The drill-core hyperspectral data used in this paper cover the visible-near infrared (VNIR) and the short-wave infrared (SWIR) range of the electromagnetic spectrum. The quantitative and qualitative analysis of the obtained results shows that the multi-label classification approach provides meaningful and descriptive mineral maps and outperforms the single-label RF classification for the mineral mapping task.
机译:在钻机核心高光谱数据分析中引入了多标签分类概念,为矿物映射任务引入。与传统的分类方法相反,这种方法具有考虑每个像素中存在的不同矿物混合物的优点。对于多标签分类,使用随机林(RF)算法作为基本分类器来实现众所周知的分类器链方法(CC)。从配备矿物解放分析(MLA)软件的扫描电子显微镜(SEM)仪器获得的高分辨率矿物学数据用于生成培训数据集。本文中使用的钻核高光谱数据覆盖了近近红外(VNIR)和电磁谱的短波红外(SWIR)范围。所得结果的定量和定性分析表明,多标签分类方法提供了有意义和描述性矿物地图,优于矿物映射任务的单标签RF分类。

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