Institute of Automation, Chinese Academy of Sciences, Beijing.
University of Oulu, Oulu.
IEEE Trans Pattern Anal Mach Intell. 2014 Feb;36(2):289-302. doi: 10.1109/TPAMI.2013.112.
Local feature descriptor is an important module for face recognition and those like Gabor and local binary patterns (LBP) have proven effective face descriptors. Traditionally, the form of such local descriptors is predefined in a handcrafted way. In this paper, we propose a method to learn a discriminant face descriptor (DFD) in a data-driven way. The idea is to learn the most discriminant local features that minimize the difference of the features between images of the same person and maximize that between images from different people. In particular, we propose to enhance the discriminative ability of face representation in three aspects. First, the discriminant image filters are learned. Second, the optimal neighborhood sampling strategy is soft determined. Third, the dominant patterns are statistically constructed. Discriminative learning is incorporated to extract effective and robust features. We further apply the proposed method to the heterogeneous (cross-modality) face recognition problem and learn DFD in a coupled way (coupled DFD or C-DFD) to reduce the gap between features of heterogeneous face images to improve the performance of this challenging problem. Extensive experiments on FERET, CAS-PEAL-R1, LFW, and HFB face databases validate the effectiveness of the proposed DFD learning on both homogeneous and heterogeneous face recognition problems. The DFD improves POEM and LQP by about 4.5 percent on LFW database and the C-DFD enhances the heterogeneous face recognition performance of LBP by over 25 percent.
局部特征描述符是人脸识别的一个重要模块,诸如 Gabor 和局部二值模式(LBP)等方法已被证明是有效的人脸描述符。传统上,此类局部描述符的形式是通过手工方式预先定义的。在本文中,我们提出了一种数据驱动的方法来学习判别式人脸描述符(DFD)。其思想是学习最具判别力的局部特征,这些特征使得同一个人不同图像之间的特征差异最小,而不同人之间的图像特征差异最大。具体来说,我们提出从三个方面增强人脸表示的判别能力。首先,学习判别式图像滤波器。其次,软确定最优邻域采样策略。最后,从统计上构建主导模式。通过判别式学习来提取有效和鲁棒的特征。我们进一步将所提出的方法应用于异构(跨模态)人脸识别问题,并以耦合方式学习 DFD(耦合 DFD 或 C-DFD),以减小异构人脸图像特征之间的差距,从而提高这一具有挑战性问题的性能。在 FERET、CAS-PEAL-R1、LFW 和 HFB 人脸数据库上进行的广泛实验验证了所提出的 DFD 学习方法在同质和异构人脸识别问题上的有效性。DFD 可将 LFW 数据库上的 POEM 和 LQP 分别提高约 4.5%,C-DFD 可将 LBP 的异构人脸识别性能提高 25%以上。