Artigo Revisado por pares

A novel label learning algorithm for face recognition

2015; Elsevier BV; Volume: 124; Linguagem: Inglês

10.1016/j.sigpro.2015.09.033

ISSN

1872-7557

Autores

Shigang Liu, Yali Peng, Xianye Ben, Wankou Yang, Guoyong Qiu,

Tópico(s)

Image Retrieval and Classification Techniques

Resumo

Gaussian fields and harmonic functions (GFHF) and flexible manifold embedding (FME) provide effective means to label learning, by virtue of which we can evaluate labels of unknown samples (i.e. samples with unknown labels). When applied to face recognition, they are faced with the challenge that the face image varies with illuminations and facial expressions and poses. Moreover, in face recognition applications, available samples with known labels are almost always not sufficient. Thus it is hard to exploit GFHF or FME to achieve very satisfactory face recognition performance. In this paper, a novel FME algorithm is proposed for face recognition. Our work has two main contributions. Firstly, it devices a score fusion scheme to predict the label of the original unknown sample. Secondly, it obtains mirror images of all original face images and views both mirror images and original face images as available samples. The experimental results demonstrate that algorithm proposed in this paper can perform very well in face recognition.

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