A novel approach for user authentication using keystroke dynamics

Kirty Shekhawat, Devershi Pallavi Bhatt
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引用次数: 4

Abstract

Abstract One Time Password (OTP) and Text Password are becoming less important in the current age of cybercrime because of the rapid development of new security systems. A user authentication system that is easy, robust, scalable, and cost-effective is a must. For both security and surveillance purposes, keystroke biometrics is a viable option. Behavior biometrics, of which keystroke biometrics is a subset, is used to identify individuals based on the way they type. Typing habits are not set in stone and are subject to change depending on the scenario, the device being used, and the user’s emotional state. As a result, the performance of a keystroke biometrics-based user authentication system is influenced by how well the retrieved information from typing and classification algorithms is processed. Using a keyboard with an array of pressure sensors, this research presents a unique way to keystroke dynamics-based authentication. The goal of this study is to develop user profiles that are unique and different in order to improve the suggested system’s efficiency. A real-world dataset is used to test the suggested method. The outcome is achieved with a 97% success rate in experiments.
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一种使用击键动力学进行用户身份验证的新方法
摘要在当前网络犯罪时代,由于新的安全系统的快速发展,一次性密码和文本密码变得越来越不重要。一个简单、健壮、可扩展且具有成本效益的用户身份验证系统是必不可少的。出于安全和监视的目的,按键生物识别是一个可行的选择。行为生物识别技术是其中的一个子集,用于根据个人的打字方式识别他们。打字习惯不是一成不变的,可能会根据场景、使用的设备和用户的情绪状态而改变。因此,基于击键生物特征的用户认证系统的性能受到从打字和分类算法检索到的信息的处理程度的影响。使用一个带有压力传感器阵列的键盘,这项研究提供了一种独特的基于击键动力学的身份验证方法。本研究的目标是开发独特和不同的用户档案,以提高建议系统的效率。使用真实世界的数据集来测试所建议的方法。实验成功率达97%。
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来源期刊
CiteScore
3.10
自引率
21.40%
发文量
126
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