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基于主分量特征与独立分量特征的人脸识别实验 被引量:9

Face recognition experiment based on principal components and independent components
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摘要 PCA是一种基于二阶统计的最小均方误差意义上的最优维数压缩技术,PCA方法所抽取特征的各分量之间是统计不相关的。ICA方法使用数据的二阶和高阶信息抽取数据的独立分量特征。在人脸图象识别的实际应用中,PCA与ICA方法各有胜负。PCA方法抽取出的主分量特征与ICA方法抽取出的独立分量特征是对原数据的两类不同描述,并设计出一个基于这两类特征的分类器组合方案;联合使用这两类特征,实验得出的人脸识别结果显示,基于分类器组合方案的识别结果优于单独使用PCA特征或ICA特征的单分类器方法。 PCA (principal component analysis) is the optimal dimension compression technique based on second-order information, in the sense of mean-square error. Features extracted by PCA are statistically uncorrelated to each other. ICA (independent component analysis) extracts features for data using their second-order and higher-order information. In the applications on face image recognition, it is hard to say that PCA is superior to ICA or ICA is superior to PCA. The two kinds of features extracted by PCA and ICA represent data are from different points of view. A hybrid classifier is proposed. The hybrid classifier based on PCA feature and ICA feature of face images have achieved good classification result, and the hybrid classifier outperforms the nearest neighbor classifier and the cosine classifier only using PCA feature or ICA feature.
出处 《计算机工程与设计》 CSCD 北大核心 2005年第5期1155-1157,1184,共4页 Computer Engineering and Design
基金 国家自然科学基金项目(60072034)
关键词 人脸识别 特征抽取 主分量分析 独立分量分析 PCA 最优维数压缩技术 face recognition feature extraction PCA ICA
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参考文献14

  • 1Comon E Independent component analysis: A new concept[J],Signal Processing, 1994,36(3):287-314.
  • 2Li Y, Powers D, Peach J. Comparison of blind source separation algorithms[Z]. Advances in Neural Networks and Applications,World Scientific Engineering Society,2000.18-23.
  • 3Bartlett M S, Lades H M, Sejnowski T J. Independent component representations for face recognition [J]. Proceedings of SPIE, 1998,2399(3):528-539.
  • 4刘青山,卢汉清,马颂德.综述人脸识别中的子空间方法[J].自动化学报,2003,29(6):900-911. 被引量:117
  • 5杨竹青,李勇,胡德文.独立成分分析方法综述[J].自动化学报,2002,28(5):762-772. 被引量:148
  • 6Liu C J, Wechsler H. Comparative assessments of independent analysis(ICA) for face recognition[C]. In: Proceedings of International Conference on Audio and Video-Based Biometric Person Authentication, USA:Washington DC,1999.
  • 7Baek K, Draper B A, Beveridge J R, et al. PCA vs. ICA: A comparison on the FERET data set[C]. In: Proceedings of International Conference on Computer Vision. Pattern Recognition and Image Proceedings, North Carolina:Durham,2002.
  • 8Hyvarinen A. Fast and robust fixed-point algorithms for independent component analysis[J].IEEE Trans on Network, 1999,10(3 ):626-634.
  • 9Hyvarinen A. Survey on independent component analysis [J].Neural Computing Surveys, 1999,(2):94-128.
  • 10曾生根,朱宁波,包晔,夏德深.一种改进的快速独立分量分析算法及其在图象分离中的应用[J].中国图象图形学报(A辑),2003,8(10):1159-1165. 被引量:26

二级参考文献76

  • 1孙即祥.数字图像处理[M].石家庄:河北教育出版社,1993..
  • 2焦李成.神经网络的应用与实现[M].西安:西安电子科技大学出版社,1996..
  • 3Hjelmas E, Low B K. Face detection: A survey. Journal of Computer Vision and Image Understanding, 2001, 83(3) : 236-274.
  • 4Yang M H, Ahuja N, Kriegman D. Detecting faces in images: A survey. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2002, 24(1): 34-58.
  • 5Toyama K. Prolegomena for robust face tracking. MSR- Tech-Report-98-65, Microsoft, 1998.
  • 6Samal A, lyengar P. Automatic recognition and analysis of human faces and facial expressions: A survey. Pattern recognition, 1992, 25(1) : 65--77.
  • 7Zhao W, Chellappa R, Rosenfeld A, Phillips P J. Face recognition- A literature survey. CS-Tech Report-4167, University of Maryland, 2000.
  • 8Zhou J, Lu C Y, Zhang C S, Li Y D. A survey of face recognition. Acta Electronica Sinica, 2000, 28(4) : 102--106(in Chinese).
  • 9Chellappa R, Wilson C L, Sirohey S. Human and machine recognition of faces: A survey. Proceedings of the IEEE,1995, 83(5): 705--740.
  • 10Bledsoe W. Man-machine facial recognition. Tech Report PRI-22, Panoramic Research Inc., Palo Alto, CA, 1966.

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