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Behavioral Biometrics for Human Identity Corroboration based on Gesture-Signature with Deep Learning

机译:基于深入学习的手势签名的人身份证实行为生物学学

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Identity corroboration has gained a substantial deal of attention with the high usage of smart devices and dedicated systems accommodating sensitive data and applications magnitudes. In this paper, we develop a behavioral biometric authentication system based on deep learning. Specifically, an android application is developed as a dedicated tool for capturing the touch behavioral biometrics information, the electronic signature information alongside their corresponding accelerometer and gyroscope sensor readings. Finally, the generated sensor readings are fed into a multi-input convolutional neural network architecture for classification. Extensive experimental results show that our proposed approach uniquely identifies users with a classification performance of 93.46% as compared to other baseline approaches, where only a single sensor reading is considered.
机译:身份粗制性的智能设备的高使用率和适应敏感数据和应用量大的专用系统获得了大量的关注。在本文中,我们开发了基于深度学习的行为生物识别认证系统。具体地,Android应用程序被开发为用于捕获触摸行为生物识别信息的专用工具,电子签名信息与其相应的加速度计和陀螺传感器读数旁边。最后,将产生的传感器读数馈入以进行分类的多输入卷积神经网络架构。广泛的实验结果表明,与其他基线方法相比,我们所提出的方法唯一地将用户识别93.46%的分类性能,其中仅考虑单个传感器读数。

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