Title
Machine Learning-Based Offline Signature Verification Systems: A Systematic Review
Abstract
The offline signatures are the most widely adopted biometric authentication techniques in banking systems, administrative and financial applications due to its simplicity and uniqueness. Several automated techniques have been developed to anticipate the genuineness of the offline signature. However, the recapitulate of the existing literature on machine learning-based offline signature verification (OfSV) systems are available in a few review studies only. The objective of this systematic review is to present the state-of-the-art machine learning-based models for OfSV systems using five aspects like datasets, preprocessing techniques, feature extraction methods, machine learning-based verification models and performance evaluation metrics. Thus, five research questions were identified and analysed in this context. This review covers the articles published between January 2014 and October 2019. A systematic approach has been adopted to select the 56 articles. This systematic review revealed that recently, the deep learning-based neural network attained the most promising results for the OfSV systems on public datasets. This review consolidates the state-of-the-art OfSV systems performances in selected studies on five public datasets (CEDAR, GPDS, MCYT-75, UTSig and BHSig260). Finally, fifteen open research issues were identified for future development.
Year
DOI
Venue
2021
10.1016/j.image.2021.116139
SIGNAL PROCESSING-IMAGE COMMUNICATION
Keywords
DocType
Volume
Offline signature verification, Feature extraction, Writer identification, Deep convolutional neural network, Handwriting recognition, Signature forgery detection
Journal
93
ISSN
Citations 
PageRank 
0923-5965
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
M. Muzaffar Hameed100.34
Rodina Ahmad2568.82
Miss Laiha Mat Kiah319513.78
G. Murtaza4208.55