A Privacy-preserving Cancelable Palmprint Template Generation Scheme Using Noise Data

Jian Qiu, Hengjian Li, Jiwen Dong, Guang Feng
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引用次数: 1

Abstract

In order to achieve more secure and privacy-preserving, a new method of cancelable palmprint template generation scheme using noise data is proposed. Firstly, the random projection is used to reduce the dimension of the palmprint image and the reduced dimension image is normalized. Secondly, a chaotic matrix is produced and it is also normalized. Then the cancelable palmprint feature is generated by comparing the normalized chaotic matrix with reduced dimension image after normalization. Finally, in order to enhance the privacy protection, and then the noise data with independent and identically distributed is added, as the final palmprint features. In this article, the algorithm of adding noise data is analyzed theoretically. Experimental results on the Hong Kong PolyU Palmprint Database verify that random projection and noise are generated in an uncomplicated way, the computational complexity is low. The theoretical analysis of nosie data is consistent with the experimental results. According to the system requirement, on the basis of guaranteeing accuracy, adding a certain amount of noise will contribute to security and privacy protection.
一种基于噪声数据的隐私保护可取消掌纹模板生成方案
为了实现更安全、更保密的掌纹模板生成方案,提出了一种基于噪声数据的可取消掌纹模板生成方案。首先利用随机投影法对掌纹图像进行降维处理,并对降维后的掌纹图像进行归一化处理;其次,生成混沌矩阵并对其进行归一化处理。然后将归一化后的混沌矩阵与归一化后的降维图像进行比较,生成可消去的掌纹特征。最后,为了增强对隐私的保护,再加入具有独立、同分布的噪声数据,作为最终的掌纹特征。本文对噪声数据的添加算法进行了理论分析。在香港理工大学掌纹数据库上的实验结果表明,该方法可以简单地生成随机投影和噪声,计算复杂度低。对噪声数据的理论分析与实验结果一致。根据系统要求,在保证准确性的基础上,加入一定的噪声有助于安全和隐私保护。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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