1) dual principle analysis
二元主义分析
2) Two-dimensional Principal Component Analysis(2DPCA)
二维主元分析
1.
In combination with Wavelet Transform(WT),Two-dimensional Principal Component Analysis(2DPCA) and Ellipsoidal Basis Function(EBF),a fingerprint recognition algorithm based on WT,2DPCA and EBF neural network(EBFNN) is proposed.
结合小波变换(WT)、二维主元分析(2DPCA)和椭球基函数(EBF)特点,提出了一种基于WT、2DPCA和EBF神经网络指纹识别方法。
2.
Combined with Discrete Cosine Transform(DCT) and Two-Dimensional Principal Component Analysis(2DPCA),a novel method in face recognition was presented in this paper.
提出了一种对角离散余弦变换(Discrete Cosine Transform,DCT)和二维主元分析(Two-Dimensional Principal Component Analysis,2DPCA)相结合的人脸识别方法。
3.
Combined with the characteristics of two-dimensional principal component analysis(2DPCA),2DPCA algorithm is applied in face recognition.
结合二维主元分析(two-dimensionalprincipalcomponentanalysis,2DPCA)的特点,将2DPCA算法用于人脸识别。
3) 2DPCA
二维主元分析
1.
Two-dimensional Principle Component Analysis (2DPCA) is used to compute covariance matrix directly according to two-dimensional matrix of face image, which is not be transformed into vector, and computation of eigenvalues and eigen.
二维主元分析(Two-dimensional Principle Component Analysis,2DPCA)无须将人脸图像矩阵转换成向量,直接利用二维人脸图像矩阵求协方差矩阵,其特征值与特征向量的计算得到简化。
2.
Some of face recognition methods based on Principal Component Analysis(PCA),Two-dimensional Principal Component Analysis(2DPCA) and Fisher s Linear Discriminant Analysis(FLDA) are comparatively studied in this paper.
对基于主元分析(PCA)、二维主元分析(2DPCA)和Fisher线性判别分析(FLDA)的人脸识别方法进行了比较研究。
4) 2~(nd)-order PCA
二次主元分析
5) Two-dimensional Principle Component Analysis(2DPCA)
二维主元分析(2DPCA)
6) two-dimensional image principal component analysis
二维广义主成分分析
1.
Face recognition based on two-dimensional image principal component analysis;
基于二维广义主成分分析的人脸识别
补充资料:垄断资本主义或帝国主义是过渡的资本主义
垄断资本主义或帝国主义是过渡的资本主义:(1)垄断使生产走向最全面的社会化,这是社会主义的最重要的物质准备;(2)垄断为社会主义准备着社会的管理机构;(3)垄断成为资本变为社会财产的过渡点。所以列宁认为:%26#8220;国家垄断资本主义是社会主义的最充分的物质准备,是社会主义的前阶。%26#8221;
说明:补充资料仅用于学习参考,请勿用于其它任何用途。
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