A supervised multimanifold method with locality preserving for face recognition using single sample per person

来源期刊:中南大学学报(英文版)2017年第12期

论文作者:Nabipour Mehrasa Aghagolzadeh Ali Motameni Homayun

文章页码:2853 - 2861

Key words:face recognition; locality preserving; manifold learning; single sample per person

Abstract: Although real-world experiences show that preparing one image per person is more convenient, most of the appearance-based face recognition methods degrade or fail to work if there is only a single sample per person (SSPP). In this work, we introduce a novel supervised learning method called supervised locality preserving multimanifold (SLPMM) for face recognition with SSPP. In SLPMM, two graphs: within-manifold graph and between-manifold graph are made to represent the information inside every manifold and the information among different manifolds, respectively. SLPMM simultaneously maximizes the between-manifold scatter and minimizes the within-manifold scatter which leads to discriminant space by adopting locality preserving projection (LPP) concept. Experimental results on two widely used face databases FERET and AR face database are presented to prove the efficacy of the proposed approach.

Cite this article as: Nabipour Mehrasa, Aghagolzadeh Ali, Motameni Homayun. A supervised multimanifold method with locality preserving for face recognition using single sample per person [J]. Journal of Central South University, 2017, 24(12): 2853–2861. DOI:https://doi.org/10.1007/s11771-017-3700-9.

有色金属在线官网  |   会议  |   在线投稿  |   购买纸书  |   科技图书馆

中南大学出版社 技术支持 版权声明   电话:0731-88830515 88830516   传真:0731-88710482   Email:administrator@cnnmol.com

互联网出版许可证:(署)网出证(京)字第342号   京ICP备17050991号-6      京公网安备11010802042557号