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首页> 外文期刊>IEEE Geoscience and Remote Sensing Letters >A Fast Hyperspectral Feature Selection Method Based on Band Correlation Analysis
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A Fast Hyperspectral Feature Selection Method Based on Band Correlation Analysis

机译:基于带相关分析的快速高光谱特征选择方法

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摘要

Band selection (BS) tries to find a few useful bands to represent the whole hyperspectral image cube. This letter proposes a novel unsupervised BS method based on the band correlation analysis (BCA). The BCA method tries to find a subset of bands that can well represent the whole image data set. To avoid the exhaustive search, the BCA method iteratively adds the band with the good representative ability and low redundancy into the selected band set, until the sufficient quantity of bands has been obtained. The redundancy and the representative ability of one band are computed by its correlation with the currently selected bands and the remaining unselected bands, respectively. Through constructing a correlation matrix of total bands, the BCA method can find the bands that with large amounts of information and low redundancy, which ensures that the selected bands are useful for the further applications like pixels classification. Experimental results on three different data sets demonstrate that the proposed method is very effective and can achieve the best performance among the competitors.
机译:波段选择(BS)试图找到一些有用的波段来代表整个高光谱图像立方体。这封信提出了一种基于频带相关分析(BCA)的新型无监督BS方法。 BCA方法试图找到可以很好地代表整个图像数据集的波段子集。为了避免穷举搜索,BCA方法将具有良好代表能力和低冗余度的频段迭代添加到所选频段集中,直到获得足够数量的频段为止。一个频带的冗余度和代表能力分别通过其与当前选定频带和其余未选定频带的相关性来计算。通过构造总频带的相关矩阵,BCA方法可以找到信息量大,冗余度低的频带,从而确保所选频带可用于像素分类等其他应用。在三个不同数据集上的实验结果表明,该方法非常有效,可以在竞争对手中获得最佳性能。

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