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Palmprint and Face Multi-Modal Biometric Recognition Based on SDA-GSVD and Its Kernelization

机译:基于SDA-GSVD的掌纹和面部多模态生物特征识别及其核化

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摘要

When extracting discriminative features from multimodal data, current methods rarely concern themselves with the data distribution. In this paper, we present an assumption that is consistent with the viewpoint of discrimination, that is, a person's overall biometric data should be regarded as one class in the input space, and his different biometric data can form different Gaussians distributions, i.e., different subclasses. Hence, we propose a novel multimodal feature extraction and recognition approach based on subclass discriminant analysis (SDA). Specifically, one person's different bio-data are treated as different subclasses of one class, and a transformed space is calculated, where the difference among subclasses belonging to different persons is maximized, and the difference within each subclass is minimized. Then, the obtained multimodal features are used for classification. Two solutions are presented to overcome the singularity problem encountered in calculation, which are using PCA preprocessing, and employing the generalized singular value decomposition (GSVD) technique, respectively. Further, we provide nonlinear extensions of SDA based multimodal feature extraction, that is, the feature fusion based on KPCA-SDA and KSDA-GSVD. In KPCA-SDA, we first apply Kernel PCA on each single modal before performing SDA. While in KSDA-GSVD, we directly perform Kernel SDA to fuse multimodal data by applying GSVD to avoid the singular problem. For simplicity two typical types of biometric data are considered in this paper, i.e., palmprint data and face data. Compared with several representative multimodal biometrics recognition methods, experimental results show that our approaches outperform related multimodal recognition methods and KSDA-GSVD achieves the best recognition performance.
机译:从多峰数据中提取判别特征时,当前的方法很少关注数据分布。在本文中,我们提出一个与歧视观点一致的假设,即一个人的整体生物特征数据应视为输入空间中的一类,而他的不同生物特征数据可以形成不同的高斯分布,即不同的子类。因此,我们提出了一种基于子类判别分析(SDA)的新颖的多峰特征提取和识别方法。具体而言,将一个人的不同生物数据视为一个类的不同子类,并计算转换后的空间,其中属于不同人的子类之间的差异最大,每个子类内部的差异最小。然后,将获得的多峰特征用于分类。提出了两种解决方案来克服计算中遇到的奇异性问题,分别是使用PCA预处理和采用广义奇异值分解(GSVD)技术。此外,我们提供了基于SDA的多峰特征提取的非线性扩展,即基于KPCA-SDA和KSDA-GSVD的特征融合。在KPCA-SDA中,在执行SDA之前,我们首先将内核PCA应用于每个单一模式。在KSDA-GSVD中,我们通过应用GSVD直接执行内核SDA以融合多峰数据,从而避免出现奇异问题。为简单起见,在本文中考虑了两种典型的生物特征数据,即掌纹数据和面部数据。与几种代表性的多峰生物特征识别方法相比,实验结果表明,我们的方法优于相关的多峰生物识别方法,KSDA-GSVD取得了最佳的识别性能。

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