基于SIFT和MRLBP描述符的年龄不变人脸识别

K. Hina, K. Jondhale
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引用次数: 1

摘要

人脸自动识别是一个重要的问题,但年龄不变的人脸识别是一个主要的挑战。随着年龄的增长,一个人的容貌会发生很大的变化。本文提出了一种判别模型来匹配被试不同年龄的人脸图像。基于适当的特征表示和分类,建立年龄不变人脸识别的判别模型。其中局部特征描述用于特征表示,分类使用MFDA完成。在该方法中,通过设计一个局部特征描述方案来表示每个人脸。它由尺度不变特征变换(SIFT)和作为局部描述符的多尺度鲁棒局部二值模式(MRLBP)组成。在MFDA中,构建了多个基于lda的分类器,并使用融合规则将这些分类器组合在一起以生成鲁棒决策。通过FGNET数据库验证了该方法的优越性。对于SIFT和MRLBP相结合的判别模型,识别准确率为92.38%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SIFT & MRLBP Descriptors Based Age Invariant Face Recognition
Automatic face recognition is an important problem, but age invariant face recognition is a major challenge. The face appearance of a person is subject to significant change due to age progression over time. In this paper, the discriminative model is proposed to match face images of a subject at different ages. To develop a discriminative model for age invariant face recognition based on an appropriate feature representation and classification. Where Local Feature Description is used for feature representation and classification is done using MFDA. In this approach, each face is represented by designing a local feature description scheme. It consists of Scale Invariant Feature Transform (SIFT) and Multi-scale Robust Local Binary Patterns (MRLBP) which serve as local descriptors. In MFDA, multiple LDA-based classifiers are constructed and these classifiers are combined to generate a robust decision by using a fusion rule. The superiority of proposed method is examined and demonstrated through FGNET database. For the discriminative model with SIFT and MRLBP, the recognition accuracy is 92.38%.
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