使用细节描述符和纠错码的基于Voronoi邻居结构的指纹密码系统

Cai Li, Jiankun Hu
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引用次数: 0

摘要

基于局部结构的指纹密码系统为身份认证和指纹保护提供了一种创新的解决方案。然而,有两个挑战需要解决。首先,基于细节局部结构的指纹匹配算法只使用相对的局部细节特征(旋转和平移不变量),与传统指纹匹配算法中使用的全局和局部特征相比,这些特征的显著性较差。缺乏独特特征将导致更高的FAR,因为不同的指纹很可能具有相似的微小局部结构。此外,指纹模板的相似度度量不能直接适用于现有的生物密码体系结构。尽管已经有很多工作使用量化来处理非线性失真并将原始模板转换为适用于生物密码系统的格式,但量化过程本身绝不是保持相似度的转换。具体来说,最初彼此接近/远离的特征可能被映射到不同/相同的量化区间。本文提出了一种基于Voronoi邻居结构的指纹密码系统,该系统使用细节描述符和纠错码。细节描述符的使用显著提高了细节局部结构的独特性,而纠错码则有效地纠正了非线性失真,在很大程度上保持了指纹的相似性。因此,所提出的系统在公开可用的指纹数据库上远远优于其他一些基于局部结构的指纹密码系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Voronoi neighbor structure-based fingerprint cryptosystem using minutiae descriptors and error-correcting codes
Minutiae local structure-based fingerprint cryptosystems provide an innovative solution for identity authentication as well as fingerprint protection. However, there are two challenges that need to be addressed. First, minutiae local structure-based fingerprint matching algorithms only use relative local minutiae features (rotation and translation invariant), which are less distinctive compared with both global and local features used in conventional fingerprint matching algorithms. The lack of distinctive features will lead to higher FAR because different fingerprints are very likely to have similar minutiae local structures. Besides, similarity measures for fingerprint templates are not directly applicable to existing bio-cryptosystem constructions. Though there has been much work using quantization to handle nonlinear distortion and transform original templates to bio-cryptosystem-applicable formats, the quantization process itself is by no means a similarity-preserving transformation. In specifics, features that are originally close to/far from each other may be mapped to different/same quantization intervals. In this paper, we propose a Voronoi neighbor structure-based fingerprint cryptosystem using minutiae descriptors and error-correcting codes. The use of minutiae descriptors significantly increases the distinctiveness of minutiae local structures while error-correcting codes effectively rectify nonlinear distortion and preserve fingerprint similarity to a great extent. As a result, the proposed system far outperforms some other minutiae local structure-based fingerprint cryptosystems over the publicly available fingerprint databases.
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