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Multimodal biometric system using face, ear and gait biometrics

机译:使用面部,耳朵和步态生物特征的多模式生物特征系统

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摘要

In this paper, a novel multimodal biometric recognition system using three modalities including face, ear and gait, based on Gabor+PCA feature extraction method with fusion at matching score level is proposed. The performance of our approach has been studied under three different normalization methods (min-max, median- MAD and z-score) and two different fusion methods (weighted sum and weighted product). Our new method has been successfully tested using 360 images corresponding to 120 subjects from three databases including ORL face database, USTB ear database, and CASIA gait database. Because of these biometric traits, our proposed method requires no significant user cooperation and also can work from a long distance. According to the experimental results our proposed method exhibits excellent recognition performance and outperforms unimodal systems. The best recognition performance that our proposed method achieved is %97.5.
机译:本文提出了一种基于Gabor + PCA特征提取方法并在匹配评分水平上融合的基于面部,耳朵和步态三种模式的新型多模式生物特征识别系统。我们在三种不同的归一化方法(最小-最大,中位数MAD和z得分)和两种不同的融合方法(加权总和和加权乘积)下研究了我们方法的性能。我们的新方法已成功使用来自360个图像的360个图像进行了测试,这些图像来自三个数据库,包括ORL人脸数据库,USTB耳朵数据库和CASIA步态数据库。由于具有这些生物特征,我们提出的方法不需要用户的大力合作,并且可以在很长的距离内工作。根据实验结果,我们提出的方法具有出色的识别性能,并且优于单峰系统。我们提出的方法实现的最佳识别性能为%97.5。

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