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Multimodal Biometric System Using Fingernail and Finger Knuckle

机译:使用指甲和指节的多峰生物特征识别系统

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Over many decades lines on hands used for astrological and numerology analysis because there is a trust that Lines never lie. Dorsum of the hand can be very useful in personal identification but yet it has not that much extensive attention. Single scan of dorsum hand can give two biometric traits finger-knuckle and finger nail. This paper presents an approach to combine Finger-knuckle and finger-nail features. Finger nail biometric is considered as quite unique biometric trait hence we combine this trait with finger knuckle. Finger knuckle features are extracted using Mel Frequency Cepstral Coefficient (MFCC) technique and the features of finger-nail are extracted from second level wavelet decomposition. We combined these features using feature level fusion and feed forward back propagation neural network for classification. The performance of the system has been tested on our own KVKR-knuckle database that includes 100 subjects dorsal hands. Evaluation results shows that increase in training set gives increased performance rate. The best performance of the proposed system reaches up to 97% with respective training of 90% of total dataset.
机译:数十年来,用于星相学和命理分析的线一直存在,因为人们对Lines永远不会说谎表示信任。手的背面在个人识别中可能非常有用,但并没有引起广泛的关注。一次扫描背手可以提供两个生物特征:指关节和指甲。本文提出了一种结合指关节和指甲特征的方法。指甲的生物特征被认为是非常独特的生物特征,因此我们将这种特征与指关节相结合。使用梅尔频率倒谱系数(MFCC)技术提取指关节特征,并从第二级小波分解中提取指指甲的特征。我们使用特征级融合和前馈传播神经网络将这些特征组合在一起进行分类。该系统的性能已经在我们自己的KVKR指关节数据库中进行了测试,该数据库包含100个对象的背手。评估结果表明,训练集的增加可提高绩效率。在分别训练了总数据集90%的情况下,所提出系统的最佳性能可达到97%。

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