Wang Yongjin, Plataniotis Konstantinos N
The Edward S. Rogers Sr. Department of Electrical and Computer Engineering, University of Toronto, Toronto, ON M5S 3G4, Canada.
IEEE Trans Syst Man Cybern B Cybern. 2010 Oct;40(5):1280-93. doi: 10.1109/TSMCB.2009.2037131. Epub 2010 Jan 15.
Changeability and privacy protection are important factors for widespread deployment of biometrics-based verification systems. This paper presents a systematic analysis of a random-projection (RP)-based method for addressing these problems. The employed method transforms biometric data using a random matrix with each entry an independent and identically distributed Gaussian random variable. The similarity- and privacy-preserving properties, as well as the changeability of the biometric information in the transformed domain, are analyzed in detail. Specifically, RP on both high-dimensional image vectors and dimensionality-reduced feature vectors is discussed and compared. A vector translation method is proposed to improve the changeability of the generated templates. The feasibility of the introduced solution is well supported by detailed theoretical analyses. Extensive experimentation on a face-based biometric verification problem shows the effectiveness of the proposed method.
可变性和隐私保护是基于生物特征识别的验证系统广泛部署的重要因素。本文对一种基于随机投影(RP)的方法进行了系统分析,以解决这些问题。所采用的方法使用一个随机矩阵对生物特征数据进行变换,该随机矩阵的每个元素都是独立同分布的高斯随机变量。详细分析了变换域中生物特征信息的相似性和隐私保护特性以及可变性。具体而言,讨论并比较了在高维图像向量和降维特征向量上的随机投影。提出了一种向量平移方法来提高生成模板的可变性。详细的理论分析充分支持了所引入解决方案的可行性。在基于面部的生物特征验证问题上进行的大量实验表明了该方法的有效性。