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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing. >3-D Receiver Operating Characteristic Analysis for Hyperspectral Image Classification
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3-D Receiver Operating Characteristic Analysis for Hyperspectral Image Classification

机译:3-D接收器的高光谱图像分类操作特性分析

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Hyperspectral image classification (HSIC) faces three major challenging issues, which are generally overlooked. One is how to address the background (BKG) issue due to its unknown complexity. Another is how to deal with imbalanced classes since various classes have different levels of significance, particularly, small classes. A third one is fractional class membership assignment (FCMA) resulting from a soft-decision classifier. Unfortunately, the commonly used classification measures, overall accuracy (OA), average accuracy (AA), or kappa coefficient are generally not designed to cope with these issues. This article develops a 3-D receiver operating characteristic (3-D ROC) analysis from a detection point of view to explore how these three issues can be resolved for HSIC. Specifically, it first develops one-class classifier in BKG (OCCB), called constrained energy minimization (CEM), and multiclass classifier in BKG (MCCB), called linearly constrained minimum variance (LCMV) in conjunction with 3-D ROC analysis to address the BKG issue. Then, by considering a small class as a signal to be detected, its class accuracy can be interpreted as signal detection power/probability so that the 3-D ROC analysis can be used to address the imbalanced class issue. Finally, FCMA can be treated as a detector by converting a soft-decision classifier to a hard-decision classifier in such a manner that the 3-D ROC analysis is also readily applied. The experimental results demonstrate that 3-D ROC analysis provides a very useful evaluation tool to analyze the classification performance.
机译:高光谱图像分类(HSIC)面临三个主要具有挑战性的问题,这通常被忽视。一个是如何解决由于其未知复杂性而解决的背景(BKG)问题。另一个是如何处理不平衡的类,因为各种类具有不同的意义,特别是小类。第三个是由软决策分类器产生的分数类成员分配(FCMA)。不幸的是,通常使用的常用分类措施,总体准确性(OA),平均精度(AA)或Kappa系数通常不设计为应对这些问题。本文从检测的角度开发3-D接收器操作特征(3-D ROC)分析,以探索如何为HSIC解决这三个问题。具体地,它首先在BKG(OCCB)中开发一个类分类器,称为BKG(MCCB)中的被称为约束的能量最小化(CEM)和多键分类器,与3-D ROC分析结合地址,称为线性约束的最小方差(LCMV)。 BKG问题。然后,通过将小类视为要检测的信号,其类精度可以被解释为信号检测功率/概率,以便可以使用3-D ROC分析来解决不平衡的类问题。最后,通过将软判决分类器转换为硬判定分类器,可以易于应用三维ROC分析,可以将FCMA经处理为检测器。实验结果表明,3-D ROC分析提供了一个非常有用的评估工具来分析分类性能。

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