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Face and palmprint pixel level fusion and Kernel DCV-RBF classifier for small sample biometric recognition

机译:人脸和掌纹像素级融合和核DCV-RBF分类器,用于小样本生物特征识别

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Recently, multi-modal biometric fusion techniques have attracted increasing attention and interest among researchers, in the hope that the supplementary information between different biometrics might improve the recognition performance in some difficult biometric problems. The small sample biometric recognition problem is such a research difficulty in real-world applications. So far, most research work on fusion techniques has been done at the highest fusion level, i.e. the decision level. In this paper, we propose a novel fusion approach at the lowest level, i.e. the image pixel level. We first combine two kinds of biometrics: the face feature, which is a representative of contactless biometric, and the paimprint feature, which is a typical contacting biometric. We perform the Gabor transform on face and palmprint images and combine them at the pixel level. The correlation analysis shows that there is very small correlation between their normalized Gabor-transformed images. This paper also presents a novel classifier, KDCV-RBF, to classify the fused biometric images. It extracts the image discriminative features using a Kernel discriminative common vectors (KDCV) approach and classifies the features by using the radial base function (RBF) network. As the test data, we take two largest public face databases (AR and FERET) and a large paimprint database. The experimental results demonstrate that the proposed biometric fusion recognition approach is a rather effective solution for the small sample recognition problem. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:近来,多模式生物特征融合技术引起了研究人员的越来越多的关注和兴趣,希望不同生物特征之间的补充信息可以提高在一些困难的生物特征问题中的识别性能。小样本生物特征识别问题是现实应用中的此类研究难题。到目前为止,有关融合技术的大多数研究工作都是在最高融合级别(即决策级别)上完成的。在本文中,我们提出了一种在最低级别(即图像像素级别)的新颖融合方法。我们首先结合两种生物特征:代表非接触式生物特征的脸部特征和典型的接触生物特征即paimprint特征。我们对人脸和掌纹图像执行Gabor变换,并将它们在像素级别进行组合。相关分析表明,它们的标准化Gabor变换图像之间的相关性很小。本文还提出了一种新颖的分类器KDCV-RBF,用于对融合的生物特征图像进行分类。它使用核判别公共矢量(KDCV)方法提取图像判别特征,并使用径向基函数(RBF)网络对特征进行分类。作为测试数据,我们采用了两个最大的人脸数据库(AR和FERET)和一个大型的paimprint数据库。实验结果表明,提出的生物识别融合识别方法是一种解决小样本识别问题的有效方法。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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