Please use this identifier to cite or link to this item: http://hdl.handle.net/10553/135470
Title: Neural network modelling of kinematic and dynamic features for signature verification
Authors: Diaz, Moises 
Ferrer, Miguel A. 
Quintana, Jose J. 
Wolniakowski, Adam
Trochimczuk, Roman
Miatliuk, Kanstantsin
Castellano, Giovanna
Vessio, Gennaro
Keywords: Prediction
Ur5 Robotic Arm
Neural Networks
Kinematic And Dynamic Features
Signature Verification
Issue Date: 2025
Journal: Pattern Recognition Letters 
Abstract: Online signature parameters, which are based on human characteristics, broaden the applicability of an automatic signature verifier. Although kinematic and dynamic features have previously been suggested, accurately measuring features such as arm and forearm torques remains challenging. We present two approaches for estimating angular velocities, angular positions, and force torques. The first approach involves using a physical UR5e robotic arm to reproduce a signature while capturing those parameters over time. The second method, a cost-effective approach, uses a neural network to estimate the same parameters. Our findings demonstrate that a simple neural network model can extract effective parameters for signature verification. Training the neural network with the MCYT300 dataset and cross-validating with other databases, namely, BiosecurID, Visual, Blind, OnOffSigDevanagari-75 and OnOffSigBengali-75 confirm the model's generalization capability. The trained model is available at: https://github.com/gvessio/SignatureKinematics.
URI: http://hdl.handle.net/10553/135470
ISSN: 0167-8655
DOI: 10.1016/j.patrec.2024.11.021
Source: Pattern Recognition Letters[ISSN 0167-8655],v. 187, p. 130-136, (Enero 2025)
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