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首页> 外文期刊>Geoscience and Remote Sensing, IEEE Transactions on >Hyperspectral Signal Subspace Identification in the Presence of Rare Signal Components
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Hyperspectral Signal Subspace Identification in the Presence of Rare Signal Components

机译:存在稀有信号分量的高光谱信号子空间识别

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In this paper, we investigate the problem of signal subspace identification (SSI) and dimensionality reduction in hyperspectral images. We consider two recently proposed SSI algorithms: the Maximum Orthogonal Complement Analysis (MOCA) algorithm and the Robust Signal Subspace Estimator (RSSE) algorithm. Such algorithms are robust to the presence of rare signal components and are particularly effective in reducing the number of features in the preprocessing step for small target detection applications. In this paper, MOCA and RSSE are briefly revisited and integrated in a common theoretical framework in order to better highlight and understand their peculiarities. Furthermore, their performances are compared in terms of computational complexity and of their ability to address both the abundant and the rare signal components. A modified version of the MOCA is also introduced, which is computationally more efficient than the original algorithm. Results on simulated data are discussed, and a case study is presented concerning real Airborne Visible/Infrared Imaging Spectrometer data.
机译:在本文中,我们研究了高光谱图像中信号子空间识别(SSI)和降维的问题。我们考虑了最近提出的两种SSI算法:最大正交互补分析(MOCA)算法和鲁棒信号子空间估计器(RSSE)算法。这样的算法对于稀有信号分量的存在具有鲁棒性,并且在减少小型目标检测应用的预处理步骤中的特征数量方面特别有效。在本文中,简要回顾了MOCA和RSSE并将其集成在一个通用的理论框架中,以便更好地突出和理解它们的特殊性。此外,根据计算复杂度以及它们处理大量和稀有信号分量的能力来比较它们的性能。还引入了MOCA的修改版本,其计算效率比原始算法高。讨论了模拟数据的结果,并给出了有关实际机载可见/红外成像光谱仪数据的案例研究。

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