عنوان المقالة: Handwritten signature identification based on MobileNets model and support vector machine classifier
أ.م.د مصطفى سلام كاظم | Mustafa Salam Kadhm | 15426
Publication Type
ScientificArticle
Arabic Authors
English Authors
Israa Bashir Mohammed, Bashar Saadoon Mahdi, Mustafa Salam Kadhm
Abstract
Biometrics is a field that uses behavioral and biological traits to identify/verify a person. Characteristics include handwrittien signature, iris, gait, and fingerprint. Signature-based biometric systems are common due to their simple collection and non-intrusive. Identify the humans using their handwritten signatures has received an important attention in several modern crucial applications such as in automatic bank check, law-enforcements, and historical documents processing. Therefore, in this paper an accurate handwritten signatures system is proposed. The system uses a proposed preprocessing stage for the input handwritten signatures images. Besides, a new deep learning model called MobileNets, which used for classification process. Support vector machine (SVM) used as a classifier with the MobileNets inorder to get a better identifaction results. Experimental results conducted on standard CEDAR, ICDER, sigcomp handwritten signature datasets report 99.8%, 98.2%, 99.5%, identification accuracy, respectively.
Publication Date
3/14/2023
Publisher
Bulletin of Electrical Engineering and Informatics
Volume No
12
Issue No
4
ISSN/ISBN
2089-3191
DOI
https://doi.org/10.11591/eei.v12i4.4965
Pages
2401-2409
File Link
تحميل (0 مرات التحميل)
External Link
https://beei.org/index.php/EEI/article/view/4965
Keywords
CEDAR, Handwritten signatures, MobileNets, Support vector machine
رجوع