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NPSA:非正交主偏度分析。

NPSA: Nonorthogonal Principal Skewness Analysis.

作者信息

Geng Xiurui, Wang Lei

出版信息

IEEE Trans Image Process. 2020 Apr 13. doi: 10.1109/TIP.2020.2984849.

DOI:10.1109/TIP.2020.2984849
PMID:32286979
Abstract

Principal skewness analysis (PSA) has been introduced for feature extraction in hyperspectral imagery. As a thirdorder generalization of principal component analysis (PCA), its solution of searching for the local maximum skewness direction is transformed into the problem of calculating the eigenpairs (the eigenvalues and the corresponding eigenvectors) of a coskewness tensor. By combining a fixed-point method with an orthogonal constraint, the new eigenpairs are prevented from converging to the same previously determined maxima. However, in general, the eigenvectors of the supersymmetric tensor are not inherently orthogonal, which implies that the results obtained by the search strategy used in PSA may unavoidably deviate from the actual eigenpairs. In this paper, we propose a new nonorthogonal search strategy to so lve this problem and the new algorithm is named nonorthogonal principal skewness analysis (NPSA). The contribution of NPSA lies in the finding that the search space of the eigenvector to be determined can be enlarged by using the orthogonal complement of the Kronecker product of the previous eigenvector with itself, instead of its orthogonal complement space. We also give a detailed theoretical proof on why we can obtain the more accurate eigenpairs through the new search strategy by comparison with PSA. In addition, after some algebraic derivations, the complexity of the presented algorithm is also greatly reduced. Experiments with both simulated data and real multi/hyperspectral imagery demonstrate its validity in feature extraction.

摘要

主偏度分析(PSA)已被引入用于高光谱图像的特征提取。作为主成分分析(PCA)的三阶推广,其寻找局部最大偏度方向的解决方案被转化为计算共偏度张量的特征对(特征值和相应的特征向量)的问题。通过将定点方法与正交约束相结合,可防止新的特征对收敛到先前确定的相同最大值。然而,一般来说,超对称张量的特征向量并非天生正交,这意味着PSA中使用的搜索策略所获得的结果可能不可避免地偏离实际特征对。在本文中,我们提出了一种新的非正交搜索策略来解决这个问题,新算法被命名为非正交主偏度分析(NPSA)。NPSA的贡献在于发现,可以通过使用先前特征向量与其自身的克罗内克积的正交补,而不是其正交补空间,来扩大待确定特征向量的搜索空间。我们还通过与PSA比较,详细理论证明了为什么通过新的搜索策略可以获得更准确的特征对。此外,经过一些代数推导,所提出算法的复杂度也大大降低。对模拟数据和真实多光谱/高光谱图像的实验证明了其在特征提取中的有效性。

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