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Outlier-robust dimension reduction and its impact on hyperspectral endmember extraction

机译:异常鲁棒的降维及其对高光谱端元提取的影响

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Hyperspectral endmember extraction is a process to extract end-member signatures from the observed hyperspectral data of an area. The presence of outliers in the data has been proved to pose a serious problem in endmember extraction. In this paper, unlike conventional outlier detectors which may be sensitive to window settings, we propose a robust affine set fitting (RASF) algorithm for joint dimension reduction and outlier detection without any window setting. Given the number of endmembers in advance, the RASF algorithm is to find a data-representative affine set from the corrupted data, while making the effects of outliers minimum, in the least-squares error sense. The proposed RASF algorithm is then combined with Neyman-Pearson hypothesis testing, termed RASF-NP, to further estimate the number of outliers present in the data. Computer simulations demonstrate the efficacy of the proposed method, and its impact on existing endmember extraction algorithms.
机译:高光谱终端成员提取是从一个区域的观察高光谱数据中提取终端成员特征的过程。事实证明,数据中存在异常值对端成员提取构成了严重的问题。在本文中,与可能对窗口设置敏感的常规离群值检测器不同,我们提出了一种鲁棒的仿射集拟合(RASF)算法,用于在不进行任何窗口设置的情况下进行联合尺寸缩减和离群值检测。预先给定末端成员的数量,RASF算法将从损坏的数据中找到一个数据表示的仿射集,同时在最小二乘误差意义上使离群值的影响最小。然后,将提出的RASF算法与称为RASF-NP的Neyman-Pearson假设检验相结合,以进一步估计数据中存在的异常值。计算机仿真证明了该方法的有效性,及其对现有端元提取算法的影响。

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