A Neuronal Planar Modeling for Handwriting Signature based on Automatic Segmentation

This paper deals with offline handwriting signature verification.We propose a planar neuronal model of signature image. Planarmodelsare generally based on delimiting homogenous zones ofimages; we propose in this paper an automatic segmentationapproach into bands of signature images. Signature image ismodeled by a planar neuronal model with horizontal secondarymodels and a verticalprincipal model. The proposed methodhas been tested on two databases. The first is the one we havecollected; it includes 6000 signaturescorresponding to 60writers. The second is the public GPDS-300 database including16200 signature corresponding to 300 persons. The achievedresults are promising.

READ FULL TEXT

page 3

page 4

research
03/07/2011

A Directional Feature with Energy based Offline Signature Verification Network

Signature used as a biometric is implemented in various systems as well ...
research
03/23/2022

Fast on-line signature recognition based on VQ with time modeling

This paper proposes a multi-section vector quantization approach for on-...
research
12/13/2014

The application of the Bayes Ying Yang harmony based GMMs in on-line signature verification

In this contribution, a Bayes Ying Yang(BYY) harmony based approach for ...
research
12/25/2018

An Algorithm for computing the t-signature of two-state networks

Due to the importance of signature vector in studying the reliability of...
research
03/07/2022

Signature and Log-signature for the Study of Empirical Distributions Generated with GANs

In this paper, we develop a new and systematic method to explore and ana...
research
11/08/2017

Offline signature authenticity verification through unambiguously connected skeleton segments

A method for offline signature verification is presented in this paper. ...
research
10/07/2021

IaaS Signature Change Detection with Performance Noise

We propose a novel framework to detect changes in the performance behavi...

Please sign up or login with your details

Forgot password? Click here to reset