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Pattern recognition in noisy environment using principal component analysis and spectral angle mapping

机译:使用主成分分析和光谱角映射的嘈杂环境中的模式识别

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This paper proposes an algorithm for detecting object of interest in hyperspectral imagery using the principal component analysis (PCA) as preprocessing and spectral angle mapping. PCA has found many applications in multivariate statistics which is very useful method to extract features from higher dimensional dataset. Spectral angle mapper is a widely used method for similarity measurement of spectral signatures. The developed algorithm includes two main processing steps: preprocessing of hyperspectral dataset and detection of object of interest. To improve the detection rate, the preprocessing step is implemented which processes hyperspectral data with a median filter (MF). Then, principal component transform is applied to the output of the MF filter which completes the preprocessing step. Spectral angle mapping is then applied to the output of preprocessing step to detect object with the signature of interest. We have tested the developed detection algorithm with two different hyperspectral datasets. The simulation results indicate that the proposed algorithm efficiently detects object of interest in all datasets.
机译:本文提出了一种用主成分分析(PCA)作为预处理和光谱角映射来检测高光谱图像的感兴趣对象的算法。 PCA在多变量统计中找到了许多应用程序,这是从高维数据集中提取特征的非常有用的方法。光谱角映射器是广泛使用的光谱签名的相似性测量方法。开发的算法包括两个主要处理步骤:高光谱数据集的预处理和感兴趣对象的检测。为了提高检测率,实现预处理步骤,其使用中值滤波器(MF)处理高光谱数据。然后,将主组件变换应用于完成预处理步骤的MF滤波器的输出。然后将光谱角映射应用于预处理步骤的输出,以检测具有感兴趣签名的对象。我们已经使用两个不同的超光谱数据集测试了开发的检测算法。仿真结果表明,所提出的算法有效地检测所有数据集的感兴趣对象。

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