Litcius/Paper detail

Siamese Neural Network for Keystroke Dynamics-Based Authentication on Partial Passwords

Kamila Lis, Ewa Niewiadomska‐Szynkiewicz, Katarzyna Dziewulska

2023Sensors12 citationsDOIOpen Access PDF

Abstract

The paper addresses issues concerning secure authentication in computer systems. We focus on multi-factor authentication methods using two or more independent mechanisms to identify a user. User-specific behavioral biometrics is widely used to increase login security. The usage of behavioral biometrics can support verification without bothering the user with a requirement of an additional interaction. Our research aimed to check whether using information about how partial passwords are typed is possible to strengthen user authentication security. The partial password is a query of a subset of characters from a full password. The use of partial passwords makes it difficult for attackers who can observe password entry to acquire sensitive information. In this paper, we use a Siamese neural network and n-shot classification using past recent logins to verify user identity based on keystroke dynamics obtained from the static text. The experimental results on real data demonstrate that keystroke dynamics authentication can be successfully used for partial password typing patterns. Our method can support the basic authentication process and increase users' confidence.

Topics & Concepts

PasswordKeystroke dynamicsComputer scienceBiometricsLoginKeystroke loggingAuthentication (law)Cognitive passwordComputer securityHuman–computer interactionPassword policyOne-time passwordS/KEYUser Authentication and Security SystemsBiometric Identification and SecurityAdvanced Malware Detection Techniques