多算法融合与模板保护

E. Kelkboom, X. Zhou, J. Breebaart, R. Veldhuis, C. Busch
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引用次数: 71

摘要

生物识别技术的普及及其广泛使用带来了隐私风险。为了降低这些风险,引入了诸如辅助数据系统、模糊保险库、模糊提取器和可取消生物识别等解决方案,也称为模板保护领域。与此同时,融合多种来源的生物特征信息已被证明可以提高生物特征系统的验证性能。在这项工作中,我们分析了两种3D识别算法(多算法融合)在特征、分数和决策级别上的保护模板融合。我们表明,融合可以应用于已知的融合水平与模板保护技术被称为辅助数据系统。我们还说明了Helper-Data系统所需的更改及其相应的限制。此外,我们基于FRGC v2数据集的3D人脸范围图像的实验结果表明,融合确实提高了验证性能。
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Multi-algorithm fusion with template protection
The popularity of biometrics and its widespread use introduces privacy risks. To mitigate these risks, solutions such as the helper-data system, fuzzy vault, fuzzy extractors, and cancelable biometrics were introduced, also known as the field of template protection. In parallel to these developments, fusion of multiple sources of biometric information have shown to improve the verification performance of the biometric system. In this work we analyze fusion of the protected template from two 3D recognition algorithms (multi-algorithm fusion) at feature-, score-, and decision-level. We show that fusion can be applied at the known fusion-levels with the template protection technique known as the Helper-Data System. We also illustrate the required changes of the Helper-Data System and its corresponding limitations. Furthermore, our experimental results, based on 3D face range images of the FRGC v2 dataset, show that indeed fusion improves the verification performance.
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