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首页> 外文期刊>Research journal of applied science, engineering and technology >Multimodal Biometrics Based on Fingerprint and Finger Vein
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Multimodal Biometrics Based on Fingerprint and Finger Vein

机译:基于指纹和手指静脉的多峰生物特征识别

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摘要

Biometric systems identify a person through physical traits or verify his/her identify through automatic processes. Various systems were used over years including systems like fingerprint, iris, facial images, hand geometry and speaker recognition. For biometric systems successful implementation, it has to address issues like efficiency, accuracy, applicability, robustness and universality. Single modality based recognition verifications are not robust while combining information from different biometric modalities ensures better performance. Multimodal biometric systems use multiple biometrics and integrate information for identification. It compensates unimodal biometric systems limitations. This study considers multimodal biometrics based on fingerprint and finger veins. Gabor features are extracted from finger vein using Gabor filter with orientation of 0, 15, 45, 60 and 75°, respectively. For fingerprint images, energy coefficients are attained using wavelet packet tree. Both features are normalized using min max normalization and fused with concatenation. Feature selection is through PCA and kernel PCA. Classification is achieved through KNN, Naieve Bayes and RBF Neural Network Classifiers.
机译:生物识别系统通过身体特征来识别一个人,或者通过自动过程来验证其身份。多年来使用了各种系统,包括指纹,虹膜,面部图像,手形和说话人识别等系统。为了成功实施生物识别系统,它必须解决效率,准确性,适用性,鲁棒性和通用性等问题。基于单一模式的识别验证不可靠,同时结合来自不同生物特征模式的信息可确保更好的性能。多峰生物特征识别系统使用多个生物特征识别并集成信息以进行识别。它弥补了单峰生物识别系统的局限性。这项研究考虑了基于指纹和手指静脉的多模式生物特征识别。使用方向分别为0、15、45、60和75°的Gabor滤波器从手指静脉提取Gabor特征。对于指纹图像,使用小波包树获得能量系数。这两个功能都使用min max归一化进行归一化,并与串联融合。通过PCA和内核PCA进行功能选择。通过KNN,Naieve Bayes和RBF神经网络分类器实现分类。

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