Abstract

Personal Identification Numbers (PINs) and pattern drawing have been used as common authentication methods especially on smartphones. Such methods, however, are very vulnerable to the shoulder surfing attack. Thus, keystroke dynamics that authenticate legitimate users based on their typing manner have been studied for years. However, many of the studies have focused on PC keyboard keystrokes. More studies on mobile and smartphones keystroke dynamics are warranted; as smartphones make progress in both hardware and software, features from smartphones have been diversified. In this paper, using various features including keystroke data such as time interval and motion data such as accelerometers and rotation values, we evaluate features with motion data and without motion data. We also compare 5 formulas for motion data, respectively. We also demonstrate that opposite gender match between a legitimate user and impostors has influence on authenticating by our experiment results.

Highlights

  • As we live in the smart era, the number of smartphone users grows every year [1, 2], whereas security measures to authenticate for an owner are standstill

  • Many studies for the keystroke dynamics are in progress to strengthen Personal Identification Numbers (PINs)-based authentication

  • We include features from motion data to see how they are effective in keystroke dynamics authentication

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Summary

Introduction

As we live in the smart era, the number of smartphone users grows every year [1, 2], whereas security measures to authenticate for an owner are standstill. We collected user data samples and experimented keystroke dynamics using the most simple classification algorithm, distance-based algorithm. We experimented with both of Euclidean distance and Manhattan distance and obtained better performance with Manhattan distance, 7.89% EER (equal error rate). Our result can be useful to applications where gender authenticity is very important, for instance, online dating or online same gender competition exam/game This result is not about gender classification, but one observation from keystroke dynamics based user authentication study. The contribution of this result is providing further understanding of keystroke dynamics characteristics.

Related Work
Distance-Based Classification Algorithms
Distance Metrics
Features and Data Collection
Keystroke Data
Motion Sensor
Experiment Results
Conclusion
Full Text
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