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改进的双边二维线性判别分析的手背静脉识别

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针对双边二维线性判别分析(B2D-LDA:Bilateral Two-Dimensional Linear Discriminant Analysis)方法中多类类别均值和总体均值接近时难以分类的问题,提出了一种改进的B2D-LDA(MB2D-LDA:Modified B2D-LDA)方法,并将其运用到手背静脉特征提取中.重新定义了类间离散度矩阵,融入了每两类类间的距离,当类别均值与总体均值接近时,则用该类和其他各类类间距离组成离散度矩阵.采用基于欧氏距离的最近邻分类器进行匹配识别.结果表明,在不增加识别时间的情况下,MB2D-LDA平均识别率比B2D-LDA高2%,证明了该算法的有效性.
Modified Bilateral Two-Dimensional Linear Discriminant Analysis for Dorsal-Hand Vein Recognition
For B2D-LDA (Bilateral Two-Dimensional Linear Discriminant Analysis),when the class mean and the global mean are close,it is hard to classify.A new method for extracting discriminant features in dorsal hand vein recognition,termed MB2D-LDA (Modified Bilateral Two-dimensional Linear Discriminant Analysis),is proposed.MB2D-LDA integrates the cluster information in each class by redefining the between-class scatter matrix,if the distance between the class mean and the global mean is close,the distance between the two classes incorporated into the scatter matrix.A nearest neighbor classifier for dorsal-hand vein matching based on Euclidean distance is used.Experimental results show that our presented MB2D-LDA clearly outperforms B2D-LDA,the average recognition rate of MB2D-LDA is 2% higher than that of B2D-LDA without increasing the recognition time.

dorsal hand vein recognitionfeature extractionbilateral two-dimensional linear discriminant analysisnearest-neighbor classifier

王贺、邓茂云、姜守坤、李明明、宗宇轩、刘富

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吉林大学通信工程学院,长春130022

西南石油大学机械电子工程学院,四川南充637001

吉林大学网络中心,长春130022

手背静脉识别 特征提取 双边二维线性判别分析 最近邻分类器

吉林省科学技术厅基金

2014020404666GX

2017

吉林大学学报(信息科学版)
吉林大学

吉林大学学报(信息科学版)

CSTPCD
影响因子:0.607
ISSN:1671-5896
年,卷(期):2017.35(1)
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