人脸识别的可取消生物特征过滤器

M. Savvides, B. Kumar, P. Khosla
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引用次数: 311

摘要

在本文中,我们解决了生产可取消的生物识别模板的问题;这是部署任何生物识别认证系统的必要特征。我们提出了一种新的方案,对用于合成单个最小平均相关能量滤波器的训练图像进行加密。我们从理论上证明,在构建生物特征滤波器之前,用任意随机卷积核对训练图像进行卷积不会改变产生的相关输出峰旁瓣比,从而保持认证性能。然而,通过改变卷积核,可以从相同的生物特征中获得不同的模板,从而实现模板的可取消性。我们使用CMU姿态、照明和表情(PIE)人脸数据集的照明子集来评估所提出的方法。从模式识别理论的角度来看,我们提出的方法非常有趣,因为我们能够“加密”数据并在加密域中执行识别,无论使用哪种加密内核,其性能与未加密情况一样好;我们分析表明,识别性能保持不变的加密方案,同时保留所需的相关滤波器的移位不变性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cancelable biometric filters for face recognition
In this paper, we address the issue of producing cancelable biometric templates; a necessary feature in the deployment of any biometric authentication system. We propose a novel scheme that encrypts the training images used to synthesize the single minimum average correlation energy filter for biometric authentication. We show theoretically that convolving the training images with any random convolution kernel prior to building the biometric filter does not change the resulting correlation output peak-to-sidelobe ratios, thus preserving the authentication performance. However, different templates can be obtained from the same biometric by varying the convolution kernels thus enabling the cancelability of the templates. We evaluate the proposed method using the illumination subset of the CMU pose, illumination, and expressions (PIE) face dataset. Our proposed method is very interesting from a pattern recognition theory point of view, as we are able to 'encrypt' the data and perform recognition in the encrypted domain that performs as well as the unencrypted case, regardless of the encryption kernel used; we show analytically that the recognition performance remains invariant to the proposed encryption scheme, while retaining the desired shift-invariance property of correlation filters.
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