Process of Fingerprint Authentication using Cancelable Biohashed Template

M. K R, Radhika K R
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Abstract

Template protection using cancelable biometrics prevents data loss and hacking stored templates, by providing considerable privacy and security. Hashing and salting techniques are used to build resilient systems. Salted password method is employed to protect passwords against different types of attacks namely brute-force attack, dictionary attack, rainbow table attacks. Salting claims that random data can be added to input of hash function to ensure unique output. Hashing salts are speed bumps in an attacker’s road to breach user’s data. Research proposes a contemporary two factor authenticator called Biohashing. Biohashing procedure is implemented by recapitulated inner product over a pseudo random number generator key, as well as fingerprint features that are a network of minutiae. Cancelable template authentication used in fingerprint-based sales counter accelerates payment process. Fingerhash is code produced after applying biohashing on fingerprint. Fingerhash is a binary string procured by choosing individual bit of sign depending on a preset threshold. Experiment is carried using benchmark FVC 2002 DB1 dataset. Authentication accuracy is found to be nearly 97\%. Results compared with state-of art approaches finds promising.
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使用可取消的生物隐藏模板进行指纹验证的过程
使用可取消的生物识别技术进行模板保护,可防止数据丢失和黑客入侵存储的模板,从而提供相当高的私密性和安全性。散列和加盐技术用于建立弹性系统。加盐密码方法用于保护密码免受不同类型的攻击,即暴力攻击、字典攻击和彩虹表攻击。加盐技术声称,可以将随机数据添加到散列函数的输入中,以确保输出的唯一性。散列盐是攻击者入侵用户数据的拦路虎。研究提出了一种当代的双因素验证器,称为 "生物洗码"。生物洗码程序是通过对伪随机数生成器密钥的重述内积以及由细微特征组成的指纹特征网络来实现的。在基于指纹的销售柜台中使用的可取消模板验证可加快付款过程。Fingerhash 是对指纹进行生物洗码后产生的代码。指纹密码是一个二进制字符串,根据预设的阈值选择符号的各个位。实验使用基准 FVC 2002 DB1 数据集进行。验证准确率接近 97%。与最先进的方法相比,结果很有希望。
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