171 research outputs found
User habitation in keystroke dynamics based authentication
Most computer systems use usernames and passwords for authentication and access control. For long, password security has been framed as a tradeoff between user experience and password security. Trading off one for the other appears to be an inevitable dilemma for single password based security applications. As a new biometric for authenticating access, keystroke dynamics offers great promises in hardening the password mechanism. Our research first investigate the keystroke dynamics based password security by conducting an incremental study on user\u27s habituation process for keystroke dynamics analysis using two distinct types of passwords. The study shows that (1) long and complex passwords are more efficient to be employed in keystroke dynamics systems; and (2) there is a habituation and acclimation process before the user obtains a stable keystroke pattern and the system collects enough training data. Then, based on our findings, we propose a two passwords mechanism that attempts to strike the right balance over user experience and password security by adopting a conventional easy-to-memorize password followed by a long-and-complex phrase for keystroke dynamics verification. Analysis and experimental studies successfully demonstrate the effectiveness of our proposed approach
Password secured sites: stepping forward with keystroke dynamics
Computer Authentication is a critical component of
most computer systems ā especially those used in e-
Commerce activities over the internet. Global access
to information makes security, namely the
authentication process, a critical design issue in these
systems. In what concerns to authentication, what is
required is a reliable, hardware independent and
efficient security system. In this paper, we propose an
extension to a keystroke dynamics based security
system. We provide evidence that completely software
based systems can be as effective as expensive and
cumbersome hardware based systems. Our system is a
behavioral based system that captures the normal
typing patterns of a user and uses that information, in
addition to standard login/password security to
provide a system that is user-friendly and very effective
at detecting imposters. The results provide a means of
dealing with enhanced security that is growing in
demand in web-based applications based on ECommerce
Keystroke dynamics in the pre-touchscreen era
Biometric authentication seeks to measure an individualās unique physiological attributes for the purpose of identity verification. Conventionally, this task has been realized via analyses of fingerprints or signature iris patterns. However, whilst such methods effectively offer a superior security protocol compared with password-based approaches for example, their substantial infrastructure costs, and intrusive nature, make them undesirable and indeed impractical for many scenarios. An alternative approach seeks to develop similarly robust screening protocols through analysis of typing patterns, formally known as keystroke dynamics. Here, keystroke analysis methodologies can utilize multiple variables, and a range of mathematical techniques, in order to extract individualsā typing signatures. Such variables may include measurement of the period between key presses, and/or releases, or even key-strike pressures. Statistical methods, neural networks, and fuzzy logic have often formed the basis for quantitative analysis on the data gathered, typically from conventional computer keyboards. Extension to more recent technologies such as numerical keypads and touch-screen devices is in its infancy, but obviously important as such devices grow in popularity. Here, we review the state of knowledge pertaining to authentication via conventional keyboards with a view toward indicating how this platform of knowledge can be exploited and extended into the newly emergent type-based technological contexts
Username and password verification through keystroke dynamics
Most computer systems rely on usernames and passwords as a mechanism for access control and authentication of authorized users. These credential sets offer marginal protection to a broad scope of applications with differing levels of sensitivity. Traditional physiological biometric systems such as fingerprint, face, and iris recognition are not readily deployable in remote authentication schemes. Keystroke dynamics provide the ability to combine the ease of use of username/password schemes with the increased trustworthiness associated with biometrics. Our research extends previous work on keystroke dynamics by incorporating shift-key patterns. The system is capable of operating at various points on a traditional ROC curve depending on application specific security needs. A 1% False Accept Rate is attainable at a 14% False Reject Rate for high security systems. An Equal Error Rate of 5% can be obtained in lower security systems. As a username password authentication scheme, our approach decreases the penetration rate associated with compromised passwords by 95--99%
Enhancing login security through the use of keystroke input dynamics
Security is a critical component of most computer systems ā especially those used in E-commerce activities over the Internet. Global access to information makes security a critical design issue in these systems. Deployment of sophisticated hardware based authentication systems is prohibitive in all but the most sensitive installations. What is
required is a reliable, hardware independent and efficient security system. In this paper, we propose an extension to a keystroke dynamics based security system. We provide evidence that completely software based systems based on keystroke input dynamics can be as effective as expensive and cumbersome hardware based systems. Our system is a behavioral based system that captures the typing patterns of a user and uses that information, in addition to
standard login/password security to provide a system that is user-friendly and very effective at detecting imposters.
The results provide a means of dealing with enhanced security that is growing in demand in web-based applications such as E-commerce.(undefined
PILOT: Password and PIN Information Leakage from Obfuscated Typing Videos
This paper studies leakage of user passwords and PINs based on observations
of typing feedback on screens or from projectors in the form of masked
characters that indicate keystrokes. To this end, we developed an attack called
Password and Pin Information Leakage from Obfuscated Typing Videos (PILOT). Our
attack extracts inter-keystroke timing information from videos of password
masking characters displayed when users type their password on a computer, or
their PIN at an ATM. We conducted several experiments in various attack
scenarios. Results indicate that, while in some cases leakage is minor, it is
quite substantial in others. By leveraging inter-keystroke timings, PILOT
recovers 8-character alphanumeric passwords in as little as 19 attempts. When
guessing PINs, PILOT significantly improved on both random guessing and the
attack strategy adopted in our prior work [4]. In particular, we were able to
guess about 3% of the PINs within 10 attempts. This corresponds to a 26-fold
improvement compared to random guessing. Our results strongly indicate that
secure password masking GUIs must consider the information leakage identified
in this paper
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Non-conventional keystroke dynamics for user authentication
This paper introduces an approach for user authentication using free-text keystroke dynamics which incorporates the use of non-conventional keystroke features. Semi-timing features along with editing features are extracted from the userās typing stream. Decision trees were exploited to classify each of the userās data. In parallel for comparison, support vector machines (SVMs) were also used for classification in association with an ant colony optimization (ACO) feature selection technique. The results obtained from this study are encouraging as low false accept rates (FAR) and false reject rates (FRR) were achieved in the experimentation phase. This signifies that satisfactory overall system performance was achieved by using the typing attributes in the proposed approach. Thus, the use of non-conventional typing features improves the understanding of human typing behavior and therefore, provides significant contribution to the authentication system
Establishing the digital chain of evidence in biometric systems
Traditionally, a chain of evidence or chain of custody refers to the chronological documentation, or paper trail, showing the seizure, custody, control, transfer, analysis, and disposition of evidence, physical or electronic. Whether in the criminal justice system, military applications, or natural disasters, ensuring the accuracy and integrity of such chains is of paramount importance. Intentional or unintentional alteration, tampering, or fabrication of digital evidence can lead to undesirable effects. We find despite the consequences at stake, historically, no unique protocol or standardized procedure exists for establishing such chains. Current practices rely on traditional paper trails and handwritten signatures as the foundation of chains of evidence.;Copying, fabricating or deleting electronic data is easier than ever and establishing equivalent digital chains of evidence has become both necessary and desirable. We propose to consider a chain of digital evidence as a multi-component validation problem. It ensures the security of access control, confidentiality, integrity, and non-repudiation of origin. Our framework, includes techniques from cryptography, keystroke analysis, digital watermarking, and hardware source identification. The work offers contributions to many of the fields used in the formation of the framework. Related to biometric watermarking, we provide a means for watermarking iris images without significantly impacting biometric performance. Specific to hardware fingerprinting, we establish the ability to verify the source of an image captured by biometric sensing devices such as fingerprint sensors and iris cameras. Related to keystroke dynamics, we establish that user stimulus familiarity is a driver of classification performance. Finally, example applications of the framework are demonstrated with data collected in crime scene investigations, people screening activities at port of entries, naval maritime interdiction operations, and mass fatality incident disaster responses
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