基于矩阵随机低秩逼近方法的隐私保护生物特征识别

X. Chen, Luping Zheng, Zengli Liu, Jiashu Zhang
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引用次数: 2

摘要

在本文中,我们提出了一种矩阵随机低秩近似(MRLRA)方法来生成可取消的生物特征模板以保护隐私。MRLRA构造一个随机低秩矩阵来近似生物特征与随机矩阵的杂交。理论分析表明,MRLRA的一个可取消的低秩生物特征模板与原始模板之间的距离非常小,使得MRLRA的验证和认证性能接近原始模板。基于MRLRA的可取消生物特征模板克服了基于随机投影的可取消生物特征模板在相同令牌下性能下降较大的缺点。实验验证了(1)MRLRA可取消的生物特征模板对用于构建随机矩阵的用户特定令牌敏感;(ii) MRLRA可以降低生物特征模板的噪声;(iii)即使在相同令牌的情况下,MRLRA对可取消生物特征模板的性能也不会下降太多。
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Privacy-preserving biometrics using matrix random low-rank approximation approach
In this paper, we propose a matrix random low-rank approximation (MRLRA) approach to generate cancelable biometric templates for privacy-preserving. MRLRA constructs a random low-rank matrix to approximate the hybridization of biometric feature and a random matrix. Theoretically analysis shows the distance between one cancelable low-rank biometric template by MRLRA and its original template is very small, which results to the verification and authentication performance by MRLRA is near that of original templates. Cancelable biometric templates by MRLRA conquer the weakness of random projection based cancelable biometric templates, in which the performance will deteriorate much under the same tokens. Experiments have verified that (i) cancelable biometric templates by MRLRA are sensitive to the user-specific tokens which are used for constructing the random matrix in MRLRA; (ii) MRLRA can reduce the noise of biometric templates; (iii)Even under the condition of same tokens, the performance of cancelable biometric templates by MRLRA doesn't deteriorate much.
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