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Mineral identification in hyperspectral imaging using Sparse-PCA

机译:使用稀疏PCA的高光谱成像中的矿物质识别

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Hyperspectral imaging has been considerably developed during the recent decades. The application of hyperspectral imagery and infrared thermography, particularly for the automatic identification of minerals from satellite images, has been the subject of several interesting researches. In this study, a method is presented for the automated identification of the mineral grains typically used from satellite imagery and adapted for analyzing collected sample grains in a laboratory environment. For this, an approach involving Sparse Principle Components Analysis (SPCA) based on spectral abundance mapping techniques (i.e. SAM, SID, NormXCorr) is proposed for extraction of the representative spectral features. It develops an approximation of endmember as a reference spectrum process through the highest sparse principle component of the pure mineral grains. Subsequently, the features categorized by kernel Extreme Learning Machine (Kernel- ELM) classify and identify the mineral grains in a supervised manner. Classification is conducted in the binary scenario and the results indicate the dependency to the training spectra.
机译:高光谱成像已经在近几十年来得到很大的发展。高光谱图像和红外热成像中的应用,特别是用于从卫星图像矿物的自动识别,已经几个有趣的研究的主题。在这项研究中,一种方法,提出了典型地从卫星图像使用,并且适于在实验室环境中分析所收集样品的晶粒的矿物颗粒的自动识别。对于这一点,涉及基于频谱丰度映射技术(即SAM,SID,NormXCorr)稀疏主成分分析(SPCA)的方法,提出了代表光谱特征提取。它通过纯粹的矿物颗粒的最高稀疏主成分开发端元作为基准频谱处理的近似。随后,通过内核极限学习机(内核级ELM)分类的特征分类和识别在监督方式的矿物颗粒。分类是二进制的场景进行,结果表明依赖于训练光谱。

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