TypeNet: Scaling up Keystroke Biometrics
- URL: http://arxiv.org/abs/2004.03627v2
- Date: Sun, 19 Apr 2020 09:01:58 GMT
- Title: TypeNet: Scaling up Keystroke Biometrics
- Authors: Alejandro Acien, John V. Monaco, Aythami Morales, Ruben
Vera-Rodriguez, and Julian Fierrez
- Abstract summary: We first analyze to what extent our method based on a Recurrent Neural Network (RNN) is able to authenticate users when the amount of data per user is scarce.
With 1K users for testing the network, a population size comparable to previous works, TypeNet obtains an equal error rate of 4.8%.
Using the same amount of data per user, as the number of test users is scaled up to 100K, the performance in comparison to 1K decays relatively by less than 5%.
- Score: 79.19779718346128
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We study the suitability of keystroke dynamics to authenticate 100K users
typing free-text. For this, we first analyze to what extent our method based on
a Siamese Recurrent Neural Network (RNN) is able to authenticate users when the
amount of data per user is scarce, a common scenario in free-text keystroke
authentication. With 1K users for testing the network, a population size
comparable to previous works, TypeNet obtains an equal error rate of 4.8% using
only 5 enrollment sequences and 1 test sequence per user with 50 keystrokes per
sequence. Using the same amount of data per user, as the number of test users
is scaled up to 100K, the performance in comparison to 1K decays relatively by
less than 5%, demonstrating the potential of TypeNet to scale well at large
scale number of users. Our experiments are conducted with the Aalto University
keystroke database. To the best of our knowledge, this is the largest free-text
keystroke database captured with more than 136M keystrokes from 168K users.
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