首页> 外文会议>International Conference on Affective Computing and Intelligent Interaction(ACII 2005); 20051022-24; Beijing(CN) >A Novel Regularized Fisher Discriminant Method for Face Recognition Based on Subspace and Rank Lifting Scheme
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A Novel Regularized Fisher Discriminant Method for Face Recognition Based on Subspace and Rank Lifting Scheme

机译:基于子空间和秩提升方案的正则化Fisher判别新方法

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The null space N(S_t) of total scatter matrix S_t contains no useful information for pattern classification. So, discarding the null space N(S_t) results in dimensionality reduction without loss discriminant power. Combining this subspace technique with proposed rank lifting scheme, a new regularized Fisher discriminant (SL-RFD) method is developed to deal with the small sample size (S3) problem in face recognition. Two public available databases, namely FERET and CMU PIE databases, are exploited to evaluate the proposed algorithm. Comparing with existing LDA-based methods in solving the S3 problem, the proposed SL-RFD method gives the best performance.
机译:总散射矩阵S_t的零空间N(S_t)不包含用于模式分类的有用信息。因此,丢弃零空间N(S_t)会导致尺寸降低,而不会损失判别力。将该子空间技术与提出的等级提升方案相结合,开发了一种新的正则化Fisher判别式(SL-RFD)方法来处理人脸识别中的小样本量(S3)问题。利用两个公共可用数据库,即FERET和CMU PIE数据库,来评估所提出的算法。与现有的基于LDA的方法解决S3问题相比,所提出的SL-RFD方法具有最佳性能。

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