Feature Extraction Using Laplacian Maximum Margin Criterion

作者:Wankou Yang, Changyin Sun, Helen S. Du, Jingyu Yang

摘要

Feature extraction by Maximum Margin Criterion (MMC) can more efficiently calculate the discriminant vectors than LDA, by avoiding calculation of the inverse within-class scatter matrix. But MMC ignores the local structures of samples. In this paper, we develop a novel criterion to address this issue, namely Laplacian Maximum Margin Criterion (Laplacian MMC). We define the total Laplacian matrix, within-class Laplacian matrix and between-class Laplacian matrix by using the similar weight of samples to capture the scatter information. Laplacian MMC based feature extraction gets the discriminant vectors by maximizing the difference between between-class laplacian matrix and within-class laplacian matrix. Experiments on FERET and AR face databases show that Laplacian MMC works well.

论文关键词:Maximum Margin Criterion, Linear discriminant analysis, Laplacian, Feature extraction, Face recognition

论文评审过程:

论文官网地址:https://doi.org/10.1007/s11063-010-9167-4