Method of user authentication by keyboard handwriting based on neural networks and genetic algorithm
Author
Pryimak, A.
Yaremchuk, Yu.
Salieva, O.
Karpinets, V.
Kunanets, N.
Приймак, А. В.
Яремчук, Ю. Є.
Салієва, О. В.
Карпінець, В. В.
Кунанець, Н.
Date
2021Metadata
Show full item recordCollections
- Наукові роботи каф. МБІС [406]
Abstract
A method of user authentication based on keyboard handwriting with error injection was
proposed. It is based on a two-level neural network architecture using five-time functions
and built-in sigmoid activation function to increase the efficiency of the neural network.
An error code injection was also introduced, which allowed to collect more accurate data
on human handwriting and increase the accuracy of correct recognition of the user and his
successful authentication by 3-11% compared to existing methods. The use of a hash
function based on a genetic algorithm is proposed, which provides the security of storing
a code word in the database
URI:
http://ir.lib.vntu.edu.ua//handle/123456789/34543