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Secure Triplet Loss for End-to-End Deep Biometrics

机译:端到端深度生物特征识别的三重态损失

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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.
机译:尽管深度学习已被模式识别中的每个主题广泛采用,但目前仍将其用于安全和可取消的生物特征识别中,用于特征提取和生物特征识别数据预处理,从而限制了可实现的性能。在本文中,我们提出了一种三重态损失方法的新颖表述,称为安全三重态损失,该方法可使用易于更改的键,通过端到端的卷积神经网络实现生物特征模板可取消性。经过训练和评估的基于心电图的生物识别技术,该网络显示,使用改良的三重态损失易于优化,并且与最新技术相比(UofTDB数据库的918个受试者的数据均等错误率达10.63%) )。此外,它确保了生物识别模板的安全性和有效的模板可取消性。尽管需要进一步的努力来避免模板可链接性,但是所提出的安全三重态丢失显示了模板可取消性和不可逆性的潜力,可用于生物特征识别,同时充分利用了卷积神经网络的强大功能。

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