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Convolutional Neural Network and Data Augmentation for Behavioral-Based Biometric User Identification

机译:基于行为的生物识别用户识别的卷积神经网络和数据增强

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One classification problem that is especially challenging is biometric identification, which links cybersecurity to the analysis of human behavior. Biometric data can be collected through the use of wearable devices, especially smartphones that incorporate a variety of sensors, during the performance of activities by the users. In recent research, numerous identification systems using machine learning classification algorithms have been proposed to provide solutions to this classification problem. However, their ability to perform identification is limited to only suitable selected features of time-series data from the biometric raw data. Therefore, in this study, an architecture for the biometric user identification using walking patterns that employs a convolutional neural network is proposed. Validation of the proposed framework for biometric identification was accomplished through the generation of synthetic data from datasets of samples from public walking. As a result, the framework described in this study provides more effective outcomes in terms of the accuracy of the model and additional metrics than the conventional machine learning utilized for biometric user identification.
机译:一个特别具有挑战性的一个分类问题是生物识别,将网络安全联系起来对人类行为的分析。在使用者的活动期间,可以通过使用可穿戴设备,尤其是包含各种传感器的智能手机来收集生物识别数据。在最近的研究中,已经提出了许多使用机器学习分类算法的识别系统,为此分类问题提供解决方案。然而,它们执行识别的能力仅限于来自生物识别原始数据的时间序列数据的合适选择特征。因此,在本研究中,提出了使用采用卷积神经网络的步行模式的生物识别用户识别的架构。通过从公共行走的样本数据集产生合成数据来完成验证的生物识别框架。结果,本研究中描述的框架在模型的准确性和比用于生物识别用户识别的传统机器学习的准确性和附加指标方面提供了更有效的结果。

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