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A Comparison of Supervised and Unsupervised Dimension Reduction Methods for Hyperspectral Image Classification

机译:有监督和无监督降维方法在高光谱图像分类中的比较

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Hyperspectral images are extensively used, now-a-days, for governing several geo-spatial fields. Due to the high number of dimensions or spectral bands the classification accuracy demotes which is known as the “Hughes Phenomenon” or the “Curse of Dimensionality”. To overcome this obstacle dimensionality reduction approaches need to be performed or simply the number of the spectral bands needs to be reduced. As a preprocessing step feature extraction or feature selection can be performed that reduces the computational complexity of the hyperspectral data classification. Highly correlated features are omitted and only the informative ones are considered for the classification. In this paper, we considered the feature extraction approaches, namely, the Principal Component Analysis, the Linear Discriminant Analysis and both of them combined. We have applied these feature extraction methods on the dataset individually and then classified the dataset using Support Vector Machine classifier. The experimental results show that the LDA approach provides the best accuracy (86.53%) among the three dimension reduction techniques applied. All the files and codes used in our work can be found at https://github.com/joybiS31/multiclassSVM classification u sing PCA LDA/.
机译:如今,高光谱图像已被广泛用于管理多个地理空间场。由于维数或光谱带数量众多,分类精度会降低,这被称为“休斯现象”或“维数诅咒”。为了克服该障碍,需要执行降低尺寸的方法,或者仅需要减少光谱带的数量。作为预处理步骤,可以执行特征提取或特征选择,以减少高光谱数据分类的计算复杂性。高度相关的特征将被忽略,并且仅将信息量大的特征用于分类。在本文中,我们考虑了特征提取方法,即主成分分析,线性判别分析和两者的组合。我们将这些特征提取方法分别应用于数据集,然后使用支持向量机分类器对数据集进行分类。实验结果表明,在所应用的三维降维技术中,LDA方法提供了最佳的准确性(86.53%)。使用PCA LDA /可以在https://github.com/joybiS31/multiclassSVM分类中找到我们工作中使用的所有文件和代码。

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