人脸识别的Principal Gabor滤波器

V. Štruc, Rok Gajsek, N. Pavesic
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引用次数: 41

摘要

Gabor滤波器已被证明是一种强大的面部特征提取工具。文献中提出的大量识别技术利用这些滤波器来实现鲁棒人脸识别。然而,虽然Gabor滤波器表现出理想的特性,如定向选择性或空间局域性,但它也有一些缺点,这些缺点严重影响了给定人脸图案的Gabor表示的特征和大小。在这些缺点中,滤波器不是彼此正交的,因此是相关的,这可能是最重要的。这使得Gabor人脸表示中包含的信息冗余,也影响了表示的大小。为了克服这个问题,我们在本文中提出使用原始Gabor滤波器的正交线性组合而不是滤波器本身来推导Gabor人脸表示。这些滤波器被称为主Gabor滤波器,因为它们是通过主成分分析计算的,在XM2VTS和YaleB数据库上进行的人脸识别实验中进行了评估,取得了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Principal Gabor filters for face recognition
Gabor filters have proven themselves to be a powerful tool for facial feature extraction. An abundance of recognition techniques presented in the literature exploits these filters to achieve robust face recognition. However, while exhibiting desirable properties, such as orientational selectivity or spatial locality, Gabor filters have also some shortcomings which crucially affect the characteristics and size of the Gabor representation of a given face pattern. Amongst these shortcomings the fact that the filters are not orthogonal one to another and are, hence, correlated is probably the most important. This makes the information contained in the Gabor face representation redundant and also affects the size of the representation. To overcome this problem we propose in this paper to employ orthonormal linear combinations of the original Gabor filters rather than the filters themselves for deriving the Gabor face representation. The filters, named principal Gabor filters for the fact that they are computed by means of principal component analysis, are assessed in face recognition experiments performed on the XM2VTS and YaleB databases, where encouraging results are achieved.
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