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Estimation of virtual dimensionality in hyperspectral imagery by linear spectral mixture analysis

机译:通过线性光谱混合分析估计高光谱图像中的虚拟维数

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Virtual dimensionality (VD) was originally developed for estimating the number of spectrally distinct signatures present in hyperspectral data. The effectiveness of the VD is determined by the technique used for VD estimation. This paper develops an orthogonal subspace projection (OSP) technique to estimate the VD. The idea is derived from linear spectral mixture analysis. A similar idea was also previously investigated by the signal subspace estimate (SSE) and later improved by hyperspectral signal subspace identification by minimum error (HySime). Interestingly, with an appropriate interpretation the proposed OSP technique includes the SSE/HySime as its special case. In order to demonstrate its utility experiments using synthetic images and real image data sets are conducted for performance analysis.
机译:虚拟维数(VD)最初是为估计高光谱数据中存在的光谱不同特征码的数量而开发的。 VD的有效性由用于VD估计的技术确定。本文开发了一种正交子空间投影(OSP)技术来估计VD。这个想法是从线性光谱混合分析得出的。以前也通过信号子空间估计(SSE)研究了类似的想法,后来通过最小误差(HySime)的高光谱信号子空间标识进行了改进。有趣的是,通过适当的解释,建议的OSP技术包括SSE / HySime作为其特例。为了演示其实用性实验,使用合成图像和真实图像数据集进行性能分析。

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