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- Title
The Improved Biometric Identification of Keystroke Dynamics Based on Deep Learning Approaches.
- Authors
Wyciślik, Łukasz; Wylężek, Przemysław; Momot, Alina
- Abstract
In an era marked by escalating concerns about digital security, biometric identification methods have gained paramount importance. Despite the increasing adoption of biometric techniques, keystroke dynamics analysis remains a less explored yet promising avenue. This study highlights the untapped potential of keystroke dynamics, emphasizing its non-intrusive nature and distinctiveness. While keystroke dynamics analysis has not achieved widespread usage, ongoing research indicates its viability as a reliable biometric identifier. This research builds upon the existing foundation by proposing an innovative deep-learning methodology for keystroke dynamics-based identification. Leveraging open research datasets, our approach surpasses previously reported results, showcasing the effectiveness of deep learning in extracting intricate patterns from typing behaviors. This article contributes to the advancement of biometric identification, shedding light on the untapped potential of keystroke dynamics and demonstrating the efficacy of deep learning in enhancing the precision and reliability of identification systems.
- Subjects
BIOMETRIC identification; DEEP learning; OPEN scholarship; SYSTEM identification; RELIABILITY in engineering
- Publication
Sensors (14248220), 2024, Vol 24, Issue 12, p3763
- ISSN
1424-8220
- Publication type
Article
- DOI
10.3390/s24123763