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Correlation matrix feature extraction based on spectral clustering for hyperspectral image segmentation

机译:基于谱聚类的相关矩阵特征提取用于高光谱图像分割

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摘要

Recently, the correlation matrix is used for dimension reduction by combining the greedy modular eigenspace and the positive Boolean function. However, it is hard to determine the threshold values for the greedy modular eigenspace. In addition, spectral clustering based on a similarity matrix, an affinity matrix, or a kernel matrix has become a popular clustering algorithm. Therefore, in this study, the spectral clustering is applied to the correlation matrix of bands, and the corresponding membership values determine the transformation matrix. Experimental results show that the proposed method achieves good segmentation performance on the Indian Pine site dataset, and the proposed feature extraction outperforms principal component analysis and independent component analysis.
机译:最近,通过将贪婪的模块化特征空间和正布尔函数相结合,将相关矩阵用于降维。但是,很难确定贪婪模块化本征空间的阈值。另外,基于相似度矩阵,亲和度矩阵或核矩阵的谱聚类已经成为流行的聚类算法。因此,在本研究中,将频谱聚类应用于频段的相关矩阵,并由相应的隶属度值确定变换矩阵。实验结果表明,该方法在Indian Pine站点数据集上具有良好的分割效果,并且特征提取优于主成分分析和独立成分分析。

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