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Person Authentication by Gait Data from Smartphone Sensors Using Convolutional Autoencoder

机译:使用卷积AutoEncoder的智能手机传感器的步态数据认证

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Biometric authentication is a security process that relies on the unique biological characteristics of an individual to verify who he or she is. Human gait serves as an important non invasive biometric modality for an authentication tool in various security applications. Recently due to increased use of smartphones and easy capturing of human gait characteristics by embedded smartphone sensors, human gait related activities can be utilized to develop user authentication model. In this work, a new method for user authentication from smartphone sensor data by a hybrid deep network model named convolutional autoencoder has been proposed and the performance of the model is compared with other machine learning including deep learning based techniques by simulation experiments with bench mark data sets. It is found that our proposed authetication method from smartphone sensor data with convolutional autoencoder reduces the time for authentication and also produces fair authentication accuracy and EER. It can be potentially used for person authentication in real time.
机译:生物识别认证是一种安全过程,依赖于个人的独特生物学特征来验证他或她是谁。人态步态是各种安全应用中的认证工具的重要非侵入生物识别模型。最近由于智能手机的使用增加,并且通过嵌入式智能手机传感器轻松捕获人体步态特征,可以利用人体步态相关活动来开发用户认证模型。在这项工作中,已经提出了一种通过混合深网络模型的智能手机传感器数据的用户认证的新方法,并将模型的性能与其他机器学习进行比较,包括通过仿真实验与替补标记数据进行模拟实验套。发现,我们提出的来自智能手机传感器数据的提出的Authetication方法,带有卷积的AutoEncoder减少了身份验证的时间,并产生了公平的认证精度和eer。它可以实时用于人员身份验证。

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