基于自编码器的运动模式用户生物特征验证研究

Mariia Havrylovych, Valeriy Danylov
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引用次数: 1

摘要

在目前的研究中,我们继续我们之前的研究基于动作的用户生物特征验证,它消耗感官数据。由于主要基于照片或视频输入的生理生物识别方法在实施中遇到了很多困难,基于感官的验证系统赋予了连续认证叙事能力。本研究旨在分析来自加速度计的传感器数据的各个组成部分如何影响和有助于定义独特的人体运动模式的过程,并了解它如何表达不同活动类型的人类行为模式。该研究使用循环长短期记忆自动编码器作为基线模型。模型的选择是基于我们之前的研究。研究结果表明,根据活动类型的不同,各种数据组成部分对验证过程的贡献不同。然而,我们得出结论,单个传感器数据源可能不足以实现健壮的身份验证系统。多模态认证系统的进一步研究应该是利用和聚合来自多个传感器的输入流。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research of autoencoder-based user biometric verification with motion patterns
In the current research, we continue our previous study regarding motion-based user biometric verification, which consumes sensory data. Sensory-based verification systems empower the continuous authentication narrative – as physiological biometric methods mainly based on photo or video input meet a lot of difficulties in implementation. The research aims to analyze how various components of sensor data from an accelerometer affect and contribute to defining the process of unique person motion patterns and understanding how it may express the human behavioral patterns with different activity types. The study used the recurrent long-short-term-memory autoencoder as a baseline model. The choice of model was based on our previous research. The research results have shown that various data components contribute differently to the verification process depending on the type of activity. However, we conclude that a single sensor data source may not be enough for a robust authentication system. The multimodal authentication system should be proposed to utilize and aggregate the input streams from multiple sensors as further research.
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