二元生物特征模板的可猜测性:一种实用的基于猜测熵的方法

Guangcan Mai, M. Lim, P. Yuen
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引用次数: 3

摘要

由于生物识别技术已被广泛采用为关键系统的安全认证组件,因此生物识别系统的安全索引是必不可少的。大多数采用模板保护方案的生物识别系统都是基于二进制模板的。为了采用目前流行的仅适用于二进制模板的模糊承诺、模糊提取等模板保护方案,需要将非二进制模板(如实值、基于点集的模板)转换为二进制模板。然而,现有的基于二进制模板的生物识别系统的安全措施要么不能反映实际的攻击困难,要么计算成本太高而不实用。本文提出了一种加速猜测熵的方法,它反映了攻击基于二元模板的生物识别系统的预期猜测次数。这种加速得益于计算重用和修剪。在两个数据集上的实验结果表明,在不同的系统设置下,在不损失估计精度的情况下,该算法的加速速度分别超过6倍、20倍和200倍。
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On the guessability of binary biometric templates: A practical guessing entropy based approach
A security index for biometric systems is essential because biometrics have been widely adopted as a secure authentication component in critical systems. Most of bio-metric systems secured by template protection schemes are based on binary templates. To adopt popular template protection schemes such as fuzzy commitment and fuzzy extractor that can be applied on binary templates only, non-binary templates (e.g., real-valued, point-set based) need to be converted to binary. However, existing security measurements for binary template based biometric systems either cannot reflect the actual attack difficulties or are too computationally expensive to be practical. This paper presents an acceleration of the guessing entropy which reflects the expected number of guessing trials in attacking the binary template based biometric systems. The acceleration benefits from computation reuse and pruning. Experimental results on two datasets show that the acceleration has more than 6x, 20x, and 200x speed up without losing the estimation accuracy in different system settings.
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