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Evaluating the performance of the wavelet transform in extracting spectral alteration features from hyperspectral images

机译:评估小波变换从高光谱图像中提取光谱变化特征的性能

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With the large number of spectral bands in hyperspectral images, the conventional classification methods commonly used for multispectral images are not effectively applicable. To overcome such difficulty, feature extraction methods could be used to reduce the dimension of hyperspectral images. In this study, the performance of the principal component analysis (PCA) as a widely used technique in feature extraction and the wavelet transform as a powerful decomposition tool on hyperspectral data is compared. In wavelet transform, a non-linear wavelet feature extraction was employed to select efficient features for more classification accuracy. Shortwave infrared bands of Hyperion imagery were selected as input data. The study area includes two well-known porphyry copper deposits, Darrehzar and Sarcheshmeh, located in the Iranian copper belt. Neural networks (NN), Support Vector Machine (SVM), and Spectral Angle Mapper (SAM) were used for multi-class classification based on hydrothermal alteration zones and then trained by mineral spectral features related to typical porphyry copper deposits. In the NN set-up used in this study, one hidden layer was used, with the number of neurons equal to the number of features in the input layer. Conjugate gradient backpropagation was employed as the network training function. Then, the efficiency of feature extraction methods was compared through their classification accuracies. According to the results, although the highest classification accuracy for the PCA method occurs in lower numbers of extracted features compared to wavelet transform, the wavelet transform outperforms the PCA, based on confusion matrix classification. Moreover, NN is stronger than SVM and SAM in discriminating favourable alteration zones associated with porphyry copper mineralization using hyperspectral images.
机译:由于高光谱图像中有大量的光谱带,因此通常不能有效地应用多光谱图像中常用的常规分类方法。为了克服这种困难,可以使用特征提取方法来减小高光谱图像的尺寸。在这项研究中,比较了主成分分析(PCA)作为特征提取中广泛使用的技术以及作为高光谱数据的强大分解工具的小波变换的性能。在小波变换中,采用非线性小波特征提取来选择有效特征以提高分类精度。选择Hyperion影像的短波红外波段作为输入数据。研究区域包括位于伊朗铜矿带的两个著名的斑岩型铜矿床Darrehzar和Sarcheshmeh。神经网络(NN),支持向量机(SVM)和光谱角映射器(SAM)用于基于热液蚀变带的多类分类,然后通过与典型斑岩铜矿床有关的矿物光谱特征进行训练。在本研究中使用的NN设置中,使用了一个隐藏层,其中神经元的数量等于输入层中要素的数量。共轭梯度反向传播被用作网络训练功能。然后,通过分类精度比较了特征提取方法的效率。根据结果​​,尽管与小波变换相比,PCA方法的分类精度最高,但提取的特征数量却较少,但基于混淆矩阵分类,小波变换的性能优于PCA。此外,在使用高光谱图像区分斑岩铜矿化有利的蚀变带方面,NN比SVM和SAM强。

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