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A new approach to securing passwords using a probabilistic neural network based on biometric keystroke dynamics

机译:一种基于生物识别击键动力学使用概率神经网络保护密码的新方法

摘要

Passwords are a common means of identifying an individual user on a computer system. However, they are only as secure as the computer user is vigilant in keeping them confidential. This thesis presents new methods for the strengthening of password security by employing the biometric feature of keystroke dynamics. Keystroke dynamics refers to the unique rhythm generated when keys are pressed as a person types on a computer keyboard. The aim is to make the positive identification of a computer user more robust by analysing the way in which a password is typed and not just the content of what is typed. Two new methods for implementing a keystroke dynamic system utilising neural networks are presented. The probabilistic neural network is shown to perform well and be more suited to the application than traditional backpropagation method. An improvement of 6% in the false acceptance and false rejection errors is observed along with a significant decrease in training time. A novel time sequenced method using a cascade forward neural network is demonstrated. This is a totally new approach to the subject of keystroke dynamics and is shown to be a very promising method The problems encountered in the acquisition of keystroke dynamics which, are often ignored in other research in this area, are explored, including timing considerations and keyboard handling. The features inherent in keystroke data are explored and a statistical technique for dealing with the problem of outlier datum is implemented.
机译:密码是识别计算机系统上单个用户的常用方法。但是,它们仅与计算机用户保持机密状态一样安全。本文提出了利用按键动态特性的生物特征识别技术来加强密码安全性的新方法。击键动力学是指当人们在计算机键盘上键入时按下键时所产生的独特节奏。目的是通过分析键入密码的方式而不仅仅是键入内容的方式,使对计算机用户的肯定识别更加可靠。提出了两种利用神经网络实现按键动态系统的新方法。与传统的反向传播方法相比,概率神经网络表现良好,并且更适合于应用。观察到错误接受和错误拒绝错误率提高了6%,并且训练时间显着减少。演示了一种使用级联前向神经网络的新型时间排序方法。这是敲击动力学主题的一种全新方法,并且被证明是一种非常有前途的方法。探究了敲击动力学的获取过程中遇到的问题,这些问题在该领域的其他研究中经常被忽略,包括时序注意事项和键盘。处理。探索了击键数据中固有的特征,并采用了一种统计技术来处理离群数据问题。

著录项

  • 作者

    Shorrock Steven Richard;

  • 作者单位
  • 年度 2003
  • 总页数
  • 原文格式 PDF
  • 正文语种 English
  • 中图分类

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