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Robust combination method for privacy protection using fingerprint and face biometrics

机译:使用指纹和面部生物识别技术的鲁棒组合保护隐私的方法

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Secure advance system for fingerprint privacy protection by combining different biometrics fingerprint and face into a new identity is proposed. In an enrollment, one fingerprint and face images are captured from same person. Then the minutiae positions and orientation from fingerprint and the reference points from both biometrics are extracted. LDN extracts directional information from face. To compute LDN features from face, face image is divided into some parts. LDN features allocation is taken out from face-parts. Then concatenate these features into feature vector, and use it as a face descriptor. Based on this extracted information and proposed coding strategies, combined template is generated and then stored in a database. In the verification, the system requires two queries; one fingerprint and one face from the same person. The two-step fingerprint matching algorithm is used for matching the fingerprint of same person against the generated combined minutiae template. For the face, chi-square dissimilarity measure is used for matching feature vectors of the person which are compared with all feature vectors of persons present in dataset. Fingerprint-face reconstruction approach is used to create combined fingerprint-face image from combined template. Hence, a virtual identity is nothing but the reconstructed image created from the two biometrics one fingerprint and one face and is used for matching purpose. FRR and FAR of the proposed system is low and is 1% each. Work proposed can create better identity when fingerprint-face images are randomly taken.
机译:提出了一种通过将不同的生物特征指纹和人脸组合成一个新的身份来进行指纹隐私保护的安全高级系统。在一次注册中,从同一个人捕获一个指纹和面部图像。然后从指纹中提取细节位置和方向,并从两个生物特征中提取参考点。 LDN从面部提取方向信息。为了从人脸计算LDN特征,人脸图像被分为几个部分。 LDN功能分配是从面部零件中提取的。然后将这些特征连接到特征向量中,并将其用作面部描述符。根据提取的信息和建议的编码策略,生成组合模板,然后将其存储在数据库中。在验证中,系统需要两个查询。同一个人的一张指纹和一张脸。两步指纹匹配算法用于将同一人的指纹与生成的组合细节模板进行匹配。对于脸部,使用卡方差异度度量来匹配人的特征向量,将其与数据集中存在的人的所有特征向量进行比较。指纹人脸重建方法用于从组合模板创建组合的指纹人脸图像。因此,虚拟身份不过是由两个生物特征数据(一个指纹和一个脸部)创建的重建图像,用于匹配目的。拟议系统的FRR和FAR较低,均为1%。当随机拍摄指纹面部图像时,建议的工作可以创建更好的身份。

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