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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >A Theory of High-Order Statistics-Based Virtual Dimensionality for Hyperspectral Imagery
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A Theory of High-Order Statistics-Based Virtual Dimensionality for Hyperspectral Imagery

机译:基于高阶统计量的高光谱影像虚拟维数理论

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Virtual dimensionality (VD) has received considerable interest in its use of specifying the number of spectrally distinct signatures present in hyperspectral data. Unfortunately, it never defines what such a signature is. For example, various targets of interest, such as anomalies and endmembers, should be considered as different types of spectrally distinct signatures and have their own different values of VD. Specifically, these targets are insignificant in terms of signal energies due to their relatively small populations. Accordingly, their contributions to second-order statistics (2OS) are rather limited. In this case, 2OS-based methods such as eigen-approaches to determine VD may not be effective in determining how many such type of signal sources as spectrally distinct signatures are. This paper develops a new theory that expands 2OS-VD theory to a high-order statistics (HOS)-based VD, called HOS-VD theory. Since there is no counterpart of the characteristic polynomial equation used to find eigenvalues in 2OS available for HOS, a direct extension is inapplicable. This paper re-invents a wheel by finding actual targets directly from the data rather than eigenvectors/singular vectors used in 2OS-VD theory which do not represent any real targets in the data. Consequently, comparing to 2OS-VD theory which can only be used to estimate the value of VD without finding real targets, the developed HOS-VD theory can accomplish both of tasks at the same time, i.e., determining the value of VD as well as finding actual targets directly from the data.
机译:虚拟维数(VD)在指定高光谱数据中存在的光谱上不同的签名数量方面已经引起了人们的极大兴趣。不幸的是,它从未定义过这样的签名。例如,应将各种感兴趣的目标(例如异常和末端成员)视为不同类型的光谱不同的特征,并具有各自不同的VD值。具体而言,这些目标由于其人口相对较少,因此在信号能量方面并不重要。因此,它们对二阶统计量(2OS)的贡献相当有限。在这种情况下,基于2OS的方法(例如确定VD的本征方法)可能无法有效地确定多少种此类信号源(如频谱不同的签名)。本文开发了一种新理论,将2OS-VD理论扩展为基于高阶统计(HOS)的VD,称为HOS-VD理论。由于没有用于在2OS中找到可用于HOS的特征值的特征多项式方程的对应项,因此直接扩展不适用。本文通过直接从数据中找到实际目标而不是2OS-VD理论中使用的特征向量/奇异向量(在数据中不代表任何实际目标)来重新发明轮子。因此,与只能用于估计VD值而没有找到实际目标的2OS-VD理论相比,已开发的HOS-VD理论可以同时完成两项任务,即确定VD的值以及直接从数据中查找实际目标。

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