面向人脸识别的酉空间加权Gabor特征

Yong Gao, Yangsheng Wang, Xinshan Zhu, Xuetao Feng, Xiaoxu Zhou
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引用次数: 9

摘要

基于Gabor滤波器的特征具有良好的空频定位和方向选择性,是目前人脸识别中最有效的特征。在酉空间中,我们提出了一种结合Gabor幅度和相位特征的加权Gabor复特征。根据幅值和相位特征的识别率确定其权重。同时,将基于子空间的PCA和LDA算法推广到幺正空间,并在基于幺正子空间的识别算法中采用了很少使用的距离度量幺正空间余弦距离。利用广义子空间算法,我们提出的加权Gabor复特征(WGCF)比Gabor幅度特征和Gabor相位特征具有更好的识别效果。在FERET数据库上的实验结果与文献报道的最佳结果相当
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Weighted Gabor features in unitary space for face recognition
Gabor filters based features, with their good properties of space-frequency localization and orientation selectivity, seem to be the most effective features for face recognition currently. In this paper, we propose a kind of weighted Gabor complex features which combining Gabor magnitude and phase features in unitary space. Its weights are determined according to recognition rates of magnitude and phase features. Meanwhile, subspace based algorithms, PCA and LDA, are generalized into unitary space, and a rarely used distance measure, unitary space cosine distance, is adopted for unitary subspace based recognition algorithms. Using the generalized subspace algorithms our proposed weighted Gabor complex features (WGCF) produce better recognition result than either Gabor magnitude or Gabor phase features. Experiments on FERET database show good results comparable to the best one reported in literature
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