视频专网中基于击键和鼠标动态的连续认证

Shuyu Wang, Huixiang Zhang, Quanjun Pei, Pengfei Wang, Xiaohui Li
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引用次数: 0

摘要

视频专网作为一种典型的内部网络,承载着各种视频图像资源,涉及到大量的公民隐私。为了防止潜在的内部安全威胁,有必要对视频专网中的运营商进行连续身份认证。本文提出了一种基于击键和鼠标动力学的连续认证系统。收集用户的键盘和鼠标操作,提取用户的操作行为特征。对每个用户构建人工神经网络模型进行身份认证。为了实现连续身份认证,提出了一种新的动态评估用户身份的信任模型。实验结果表明,所提出的方法可以在平均115个动作后识别出冒名顶替者,而只有在平均超过1000个动作后才能将真正的用户分类为冒名顶替者。
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Continuous Authentication Based on Keystroke and Mouse Dynamics in Video Private Network
As a typical internal network, the video private network carries various video image resources and involves a large amount of citizen privacy. To prevent potential internal security threats, it is necessary to carry out continuous identity authentication for operators in the video private network. In this paper, a continuous authentication system based on keystroke and mouse dynamics is proposed. The keystroke and mouse operations of users are collected to extract their operating behavior characteristics. An artificial neural network model for each user is constructed for identity authentication. To achieve continuous identity authentication, a novel trust model is present to evaluate users’ identities dynamically. The experimental results show that the proposed method can identify impostors after an average of 115 actions and classify genuine users as impostors only after an average of more than 1,000 actions.
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