Symmetrical 2DLDA Using Different Measures in Face Recognition

Jicheng Meng, Li Feng
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引用次数: 3

Abstract

Facial symmetry can be regarded as a not absolute but useful and natural feature. In this paper, this symmetrical feature is applied to two-dimensional linear discriminant analysis (2DLDA) for face image feature extraction, furthermore, the distance measure (DM) and Frobenius-norm measure(FM) are also developed to classify faces. Symmetrical 2DLDA (S2DLDA) used pure statistical mathematical technique (just like 2DLDA), as well as the characters of face image (just like SLDA), to improve the recognition performance. The typical similarity measure used in 2DLDA is applied to S2DLDA, which is the sum of the Euclidean distance between two feature vectors in feature matrix, called DM. The similarity measure based on Frobenius-norm is also developed to classify face images for S2DLDA. To test their performance, experiments are performed on YALE and ORL face databases. The experimental results show that when DM is used, S2DLDA has the potential to outperform 2DLDA.
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对称2DLDA在人脸识别中的应用
面部对称可以被看作是一个不是绝对的,但有用的和自然的特征。本文将这种对称特征应用于二维线性判别分析(2DLDA)中进行人脸图像特征提取,并进一步发展了距离测度(DM)和Frobenius-norm测度(FM)对人脸进行分类。对称2DLDA (S2DLDA)利用纯统计数学技术(与2DLDA相同)和人脸图像的特征(与SLDA相同)来提高识别性能。将2DLDA中使用的典型相似度度量应用于S2DLDA,即特征矩阵中两个特征向量之间欧几里德距离的和,称为DM,并开发了基于frobenius -范数的相似度度量用于S2DLDA的人脸图像分类。为了验证其性能,在YALE和ORL人脸数据库上进行了实验。实验结果表明,当使用DM时,S2DLDA具有优于2DLDA的潜力。
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