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Classification of Hyperspectral Imagery Using GPs and the OAD Covariance Function with Automated Endmember Extraction

机译:使用GP和OAD协方差函数以及自动末端成员提取对高光谱图像进行分类

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In this paper we use a machine learning algorithm based on Gaussian Processes (GPs) and the Observation Angle Dependent (OAD) covariance function to classify hyper spectral imagery for the first time. This paper demonstrates the potential of the GP-OAD method for use in autonomous mining to identify and map geology and mineralogy on a vertical mine face. We discuss the importance of independent training data (i.e. a spectral library) to map any mine face without a priori knowledge. We compare an independent spectral library to other libraries, based on image data, and evaluate their relative performances to distinguish ore bearing zones from waste. Results show that the algorithm yields high accuracies (90%) and F-scores (77%), the best results are achieved when libraries are combined. We also demonstrate mapping of geology using imagery under different conditions of illumination (e.g. shade).
机译:在本文中,我们首次使用基于高斯过程(GPs)和观测角相关(OAD)协方差函数的机器学习算法对高光谱图像进行分类。本文演示了GP-OAD方法在自动采矿中识别垂直矿面上的地质和矿物学并将其绘制成图的潜力。我们讨论了在没有先验知识的情况下使用独立训练数据(即光谱库)绘制任何矿井面的重要性。我们根据图像数据将一个独立的光谱库与其他库进行比较,并评估它们的相对性能以区分含矿区和废物区。结果表明,该算法具有较高的准确度(90%)和F分数(77%),将库组合起来可获得最佳结果。我们还演示了在不同光照条件下(例如阴影)使用图像进行地质绘制的方法。

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