局部最大边缘嵌入在人脸识别中的应用

Cairong Zhao, Zhihui Lai, Yuelei Sui, Yi Chen
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引用次数: 6

摘要

信息处理中的许多问题都涉及某种形式的降维。本文提出了一种新的高维数据降维方法——局部极大边际嵌入(LMME),用于流形学习和模式识别。LMME可以看作是一种基于多流形的学习框架的线性方法,它整合了邻居和阶级关系的信息。LMME对局部最大边缘散点和局部类内紧度进行表征,寻求一个最大化局部最大边缘和最小化局部类内散点的投影。这一特点使得LMME比最新的边际费雪分析(Marginal Fisher Analysis, MFA)更强大,并保持了MFA的所有优点。将该算法应用于人脸识别,并使用Yale、AR、ORL和人脸图像数据库进行了验证。实验结果表明,由于LMME具有局部判别性,其性能始终优于PCA、LDA和MFA。这表明LMME是一种有效的人脸识别方法。
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Local Maximal Marginal Embedding with Application to Face Recognition
Many problems in information processing involve some form of dimensionality reduction. This paper develops a new approach for dimensionality reduction of high dimensional data, called local maximal marginal (interclass) embedding (LMME), to manifold learning and pattern recognition. LMME can be seen as a linear approach of a multimanifolds-based learning framework which integrates the information of neighbor and class relations. LMME characterize the local maximal marginal scatter as well as the local intraclass compactness, seeking to find a projection that maximizes the local maximal margin and minimizes the local intraclass scatter. This characteristic makes LMME more powerful than the most up-to-data method, Marginal Fisher Analysis (MFA), and maintain all the advantages of MFA. The proposed algorithm is applied to face recognition and is examined using the Yale, AR, ORL and face image databases. The experimental results show LMME consistently outperforms PCA, LDA and MFA, owing to the locally discriminating nature. This demonstrates that LMME is an effective method for face recognition.
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