吉林大学学报(理学版)

• 计算机科学 • 上一篇    下一篇

基于判别分析与低秩投影的人脸识别算法

王银花, 王丽萍, 王忠良   

  1. 铜陵学院 电气工程学院, 安徽 铜陵 244000;  光电子应用安徽省工程技术研究中心, 安徽 铜陵 244000
  • 收稿日期:2017-01-06 出版日期:2018-03-26 发布日期:2018-03-27
  • 通讯作者: 王银花 E-mail:wangyinhua_edu@yeah.net

Face Recognition Algorithm Based on Discriminant Analysis and Low Rank Projection

WANG Yinhua, WANG Liping, WANG Zhongliang   

  1. School of Electrical Engineering, Tongling University, Tongling 244000, Anhui Province, China;Engineering Technology Research Center of Anhui Province, Tongling 244000, Anhui Province, China
  • Received:2017-01-06 Online:2018-03-26 Published:2018-03-27
  • Contact: WANG Yinhua E-mail:wangyinhua_edu@yeah.net

摘要: 针对目前人脸识别算法的误识率高、 鲁棒性差等不足, 设计一种基于判别分析与低秩投影的人脸识别算法, 以获得更优的人脸识别结果. 首先对人脸图像进行分块, 提取每个子块的局部特征, 并判别分析提取人脸的全局特征; 然后通过低秩投影选择对人脸识别结果贡献较大的特征组成特征向量; 最后采用最小二乘支持向量机根据“一对多”的原则建立光照人脸识别的多分类器, 并对多个人脸数据库进行仿真实验. 实验结果表明, 该算法可找到最优人脸识别特征子集, 降低光照人脸的误识率, 人脸识别速度得到明显提升, 且人脸识别效果优于其他人脸识别算法.

关键词: 判别分析, 识别速度, 人脸识别, 特征选择, 人脸分类器

Abstract: In view of the shortcomings of high error recognition rate and poor robustness of current face recognition algorithms, we designed a face recognition algorithm based on discriminant analysis and low rank projection to obtain better face recognition results. Firstly, the face images were divided into blocks, the local feature of each sub block was extracted, and the global feature of face was extracted by discriminant analysis. Secondly, we used low rank projection to make up a feature vector that contributed greatly to the face recognition results. Finally, the least squares support vector machine was used to establish multi classifier for light face recognition based on the principle of onetomany, and the simulation experiment was carried out by multiple face database. The experimental results show that the algorithm can find the optimal feature subset of face recognition, reduce the error recognition rate of face, the speed of face recognition is obviously improved, and the effect of face  recognition is better than other face recognition algorithms.

Key words: face classifier, discriminant analysis, speed of recognition, face recognition, feature selection

中图分类号: 

  • TP391