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Evaluation of intrinsic dimensionality methods using residual and change-point analyses

机译:使用残差和变点分析评估内在维度方法

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The number of endmembers (NOE) in hyperspectral imagery plays an important role in image analysis applications such as classification, clustering and unmixing. Over the last years, different algorithms have been proposed to estimate the NOE. Nonetheless, each method depends on its own parameters' values, and as a result, leads to different values for intrinsic dimensionality (ID). In this study a statistical-based method is proposed to evaluate different results of ID algorithms. In this method, the reasonable candidates of ID are selected using both residual analysis (RA) and Change-Point analysis (CPA). Different values for ID are then compared with these candidates. If these values are equal or close to these candidates they may be considered as the ID. Although the proposed method can be used for every ID method, here, the results of two new methods, namely, SML, and O-GENE-AH algorithms have been investigated on Pavia Center hyperspectral dataset.
机译:高光谱图像中的endmembers(NOE)的数量在图像分析应用中起重要作用,例如分类,聚类和解密。在过去几年中,已经提出了不同的算法来估计NOE。尽管如此,每个方法都取决于其自己的参数值,结果导致内部维度(ID)的不同值。在本研究中,提出了一种基于统计的方法来评估ID算法的不同结果。在该方法中,使用剩余分析(RA)和变化点分析(CPA)来选择合理的ID候选者。然后将ID的不同值与这些候选者进行比较。如果这些值等于或靠近这些候选者,则可以被视为ID。虽然所提出的方法可以用于每个ID方法,但是在这里,已经在帕维亚中心高光谱数据集上研究了两种新方法,即SML和O-Gene-AH算法的结果。

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