期刊
SOFT COMPUTING
卷 14, 期 2, 页码 103-111出版社
SPRINGER
DOI: 10.1007/s00500-009-0443-z
关键词
Feature extraction; Face recognition; Kernel discriminant analysis (KDA); Kernel method; Small sample size (SSS)
资金
- China Postdoctoral Science Foundation [20060390286]
- Postdoctoral Science Foundation of Jiangsu Province of China [0601006B]
Kernel discriminant analysis (KDA) is a widely used tool in feature extraction community. However, for high-dimensional multi-class tasks such as face recognition, traditional KDA algorithms have the limitation that the Fisher criterion is nonoptimal with respect to classification rate. Moreover, they suffer from the small sample size problem. This paper presents a variant of KDA called kernel-based improved discriminant analysis (KIDA), which can effectively deal with the above two problems. In the proposed framework, origin samples are projected firstly into a feature space by an implicit nonlinear mapping. After reconstructing between-class scatter matrix in the feature space by weighted schemes, the kernel method is used to obtain a modified Fisher criterion directly related to classification error. Finally, simultaneous diagonalization technique is employed to find lower-dimensional nonlinear features with significant discriminant power. Experiments on face recognition task show that the proposed method is superior to the traditional KDA and LDA.
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