J4 ›› 2009, Vol. 26 ›› Issue (6): 647-653.

• 图像与信息处理 • 上一篇    下一篇

核Fisher鉴别分析在掌纹识别中的应用

裴昱 刘海林   

  1. 广东工业大学应用数学学院 广东 广州 510006
  • 发布日期:2009-11-03
  • 作者简介:裴昱(1986-),女,硕士研究生。主要从事于盲信号分离,图像处理等研究方面。E-mail:peiyu991@163.com
  • 基金资助:

    广东省自然科学基金(8151009001000044)

Kernel Fisher discriminant analysis used in palmprint recognition

PEI Yu, LIU Hai-Lin   

  1. Faculty of Applied Mathematics, Guangdong University of Technology, Guangzhou 510006, China
  • Online:2009-11-03
  • Contact: 刘海林(1963-), 男, 河南安阳市人, 博士后, 教授, 研究方向为盲源分离, 进化计算。 E-mail:lhl@scnu.edu.cn

摘要:

核Fisher的鉴别方法(KFDA)是模式识别中较为突出的提取图像非线性特征的方法。为了更好的提取掌纹图像的非线性特征,将KFDA方法引入到掌纹识别中。首先对掌纹图像做小波变换进行降维,在保留原始图像轮廓信息和特征的基础上,然后进行核Fisher判决方法进行特征提取并引入零空间的核Fisher(ZKFDA)方法解决小样本问题,最后用最小距离分类器进行掌纹匹配。通过PolyU掌纹图像库,实验结果表明,在不同的特征个数下,KFDA方法比二维Fisher准则(2DFLD)方法识别率高;零空间ZKFDA的平均识别率高于KFDA,并且计算量大大减少。在核函数选取上,取RBF核函数的识别性能最佳。

Abstract:

Kernel fisher discriminant analysis(KFDA) method is a more prominent method in pattern recogniztion to extract non-linear characteristics. We introduced kernel fisher discriminal analysis in the palmprint recognition to extract non-linear characteristics. First of all, we used wavelet transform to reduce palmprint images dimension based on retaining the original image information and features. Then, we used kernel Fisher discriminant analysis to extract features and the null-space KFDA method(ZKFDA) was introduced to solve the problem of small samples. Finally, we used a classifier to palmprint match based on minimum distance. Experimental results show that KFDA performs better than Two-Dimensional FLD(2DFLD) when the principal component numbers are different. ZKFDA performs better than KFDA in the average recognition rate, and computation has been significantly decreased. The recognition performance of radial basis function is the best in the selection of kernel functions.

Key words: image processing, Kernel Fisher discriminant analysis, feature extraction, palmprint recognition