端到端深度生物识别的安全三重丢失

João Ribeiro Pinto, Jaime S. Cardoso, M. V. Correia
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引用次数: 7

摘要

尽管深度学习被广泛应用于模式识别的各个领域,但其在安全和可取消生物特征识别方面的应用目前仅限于特征提取和生物特征数据预处理,限制了可实现的性能。在本文中,我们提出了一种新的三重丢失方法,称为安全三重丢失,它可以使用端到端卷积神经网络实现生物识别模板的取消性,使用易于更改的密钥。经过对基于心电图的生物识别技术的训练和评估,该网络显示易于使用改进的三重态损失进行优化,并且与最先进的网络相比(与UofTDB数据库918名受试者的数据相比,平均错误率为10.63%)取得了卓越的性能。此外,它还保证了生物识别模板的安全性和有效的模板取消性。虽然需要进一步的努力来避免模板链接性,但所提出的安全三重丢失在利用卷积神经网络的全部功能的同时,在模板可取消性和生物特征识别的不可逆转性方面显示出了希望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure Triplet Loss for End-to-End Deep Biometrics
Although deep learning is being widely adopted for every topic in pattern recognition, its use for secure and cancelable biometrics is currently reserved for feature extraction and biometric data preprocessing, limiting achievable performance. In this paper, we propose a novel formulation of the triplet loss methodology, designated as secure triplet loss, that enables biometric template cancelability with end-to-end convolutional neural networks, using easily changeable keys. Trained and evaluated for electrocardiogram-based biometrics, the network revealed easy to optimize using the modified triplet loss and achieved superior performance when compared with the state- of-the-art (10.63% equal error rate with data from 918 subjects of the UofTDB database). Additionally, it ensured biometric template security and effective template cancelability. Although further efforts are needed to avoid template linkability, the proposed secure triplet loss shows promise in template cancelability and non-invertibility for biometric recognition while taking advantage of the full power of convolutional neural networks.
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