Relative Attention-based One-Class Adversarial Autoencoder for Continuous Authentication of Smartphone Users
Behavioral biometrics-based continuous authentication is a promising authentication scheme, which uses behavioral biometrics recorded by built-in sensors to authenticate smartphone users throughout the session. However, current continuous authentication methods suffer some limitations: 1) behavioral...
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Zusammenfassung: | Behavioral biometrics-based continuous authentication is a promising
authentication scheme, which uses behavioral biometrics recorded by built-in
sensors to authenticate smartphone users throughout the session. However,
current continuous authentication methods suffer some limitations: 1)
behavioral biometrics from impostors are needed to train continuous
authentication models. Since the distribution of negative samples from diverse
attackers are unknown, it is a difficult problem to solve in real-world
scenarios; 2) most deep learning-based continuous authentication methods need
to train two models to improve authentication performance. A deep learning
model for deep feature extraction, and a machine learning-based classifier for
classification; 3) weak capability of capturing users' behavioral patterns
leads to poor authentication performance. To solve these issues, we propose a
relative attention-based one-class adversarial autoencoder for continuous
authentication of smartphone users. First, we propose a one-class adversarial
autoencoder to learn latent representations of legitimate users' behavioral
patterns, which is trained only with legitimate smartphone users' behavioral
biometrics. Second, we present the relative attention layer to capture richer
contextual semantic representation of users' behavioral patterns, which
modifies the standard self-attention mechanism using convolution projection
instead of linear projection to perform the attention maps. Experimental
results demonstrate that we can achieve superior performance of 1.05% EER,
1.09% EER, and 1.08% EER with a high authentication frequency (0.7s) on three
public datasets. |
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DOI: | 10.48550/arxiv.2210.16819 |