Publications

Usage of Autoencoders and Siamese Networks for Online Handwritten Signature Verification

Abstract

In this paper, we propose a novel writer-independent global feature extraction framework for the task of automatic signature verification which aims to make robust systems for automatically distinguishing negative and positive samples. Our method consists of an autoencoder for modeling the sample space into a fixed-length latent space and a siamese network for classifying the fixed-length samples obtained from the autoencoder based on the reference samples of a subject as being genuine or forged. During our experiments, usage of attention mechanism and applying downsampling significantly improved the accuracy of the proposed framework. We evaluated our proposed framework using SigWiComp2013 Japanese and GPDSsyntheticOnLineOffLineSignature datasets. On the SigWiComp2013 Japanese dataset, we achieved 8.65% equal error rate (EER) that means 1.2% relative improvement …

Date
January 1, 1970
Authors
Kian Ahrabian, Bagher BabaAli
Journal
Neural Computing and Applications
Volume
31
Issue
12
Pages
9321-9334
Publisher
Springer London