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Hierarchical Ensemble of Global and Local Classifiers for Face Recognition

机译:用于人脸识别的全局和局部分类器的层次集合

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In the literature of psychophysics and neurophysiology, many studies have shown that both global and local features are crucial for face representation and recognition. This paper proposes a novel face recognition method which exploits both global and local discriminative features. In this method, global features are extracted from the whole face images by keeping the low-frequency coefficients of Fourier transform, which we believe encodes the holistic facial information, such as facial contour. For local feature extraction, Gabor wavelets are exploited considering their biological relevance. After that, Fisher's linear discriminant (FLD) is separately applied to the global Fourier features and each local patch of Gabor features. Thus, multiple FLD classifiers are obtained, each embodying different facial evidences for face recognition. Finally, all these classifiers are combined to form a hierarchical ensemble classifier. We evaluate the proposed method using two large-scale face databases: FERET and FRGC version 2.0. Experiments show that the results of our method are impressively better than the best known results with the same evaluation protocol.
机译:在心理物理学和神经生理学的文献中,许多研究表明,全局和局部特征对于面部表示和识别都是至关重要的。本文提出了一种新颖的人脸识别方法,该方法利用了全局和局部判别特征。在这种方法中,通过保持傅立叶变换的低频系数从全脸图像中提取全局特征,我们相信该低频系数将对整体面部信息(例如面部轮廓)进行编码。对于局部特征提取,考虑到它们的生物学相关性,可以利用Gabor小波。之后,将Fisher线性判别(FLD)分别应用于全局傅里叶特征和Gabor特征的每个局部补丁。因此,获得了多个FLD分类器,每个分类器都体现了用于面部识别的不同面部证据。最后,将所有这些分类器组合在一起,形成一个层次的集成分类器。我们使用两个大型人脸数据库(FERET和FRGC 2.0版)评估提出的方法。实验表明,我们的方法的结果比具有相同评估协议的最著名结果要好得多。

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