Cancelable biometric techniques have been used to prevent the compromise of biometric data by generating and using their corresponding cancelable templates for user authentication. However, the non-invertible distance preserving transformation methods employed in various schemes are often vulnerable to information leakage since matching is performed in the transformed domain. In this paper, we propose a non-invertible distance preserving scheme based on vector permutation and shift-order process. First, the dimension of feature vectors is reduced using kernelized principle component analysis (KPCA) prior to randomly permuting the extracted vector features. A shift-order process is then applied to the generated features in order to achieve non-invertibility and combat similarity-based attacks. The generated hash codes are resilient to different security and privacy attacks whilst fulfilling the major revocability and unlinkability requirements. Experimental evaluation conducted on 6 datasets of FVC2002 and FVC2004 reveals a high-performance accuracy of the proposed scheme better than other existing state-of-the-art schemes.
翻译:现已使用可取消的生物测定技术来防止生物鉴别数据妥协,办法是生成和使用相应的可取消的用户认证模板,然而,各种办法中使用的不可忽略的远程保存转换方法往往容易因在变换域进行匹配而导致信息泄漏;在本文件中,我们提议采用基于病媒变换和转移顺序过程的不可忽略的远程保存办法;首先,在随机调整提取的矢量特征之前,使用内嵌原则组成部分分析(KPCA)减少特性矢量的尺寸;然后,对生成的特性采用转换顺序程序,以便实现非垂直性并打击以类似特性为基础的攻击;产生的散射码在满足主要的复选和不可连通性要求的同时,对不同的安全和隐私攻击具有适应性;对FVC2002和FVC2004的6个数据集进行的实验性评价显示,拟议方案的高性能准确性优于其他现有的最新计划。