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Gait-Based Continuous Authentication Using Multimodal Learning

机译:基于步态的持续认证使用多式化学习

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摘要

The ever-growing threats of security and privacy loss from unauthorized access to mobile devices has led to the development of various biometric authentication methods for easier and safer data access. In this work we present a gait-based continuous authentication method using accelerometer and ground contact force data recorded from a pair of smart socks. Multi-modal learning and auto-encoders are used for feature extraction and a multi-task learning approach is used for classification. The effectiveness of the proposed approach has been demonstrated through preliminary experiments on a dataset of 8 subjects.
机译:从未授权访问移动设备的安全和隐私损失的不断增长的威胁导致了各种生物识别认证方法的开发,以便更容易和更安全的数据访问。在这项工作中,我们使用从一对智能袜子记录的加速度计和接地接触力数据呈现了一种基于步态的连续认证方法。多模态学习和自动编码器用于特征提取,并且使用多任务学习方法用于分类。通过8个科目数据集的初步实验证明了所提出的方法的有效性。

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