ARCHIVES
Human Signature Verification System Using CNN with Tensor flow
Published Online: May-June 2023
Pages: 235-242
Cite this article
↗ https://www.doi.org/10.59256/ijire.2023040381Abstract
Abstract: One of the most popular verification bio metrics is the signature. On checks, forms, letters, applications, minutes, and other documents, handwritten signatures are required. A person's handwritten signature must be individually identified because each individual's signature is unique by nature. Signature verification is a popular technique for confirming anyone's identity while they are not present. Human verification can be inaccurate and occasionally unsure. The use of Convolutional Neural Networks (CNN) for Writer-Dependent models in signature verification is examined in this research. In order to create forged signatures, random distortions were created in real photos using an auto encoder and then fed to the classifier during training. In addition to demonstrating various test outcomes for varying the number of training sets of images, the study describes all image pre-processing procedures that were applied to the image. In the Persian dataset, the system's average test accuracy is 83% after 22 real photos were used to train it. When the model was trained on nine real photos, accuracy dropped by 9.4%.
Related Articles
2023
A Mobile Application to Promote the Idea of Recycling
2023
Web Based Printing Press Management System (WBPPMS)
2023
Review: CFD Analysis Of triangular, square and Circular Shaped Helical Coil Heat Exchanger by Using Titanium Oxide Nano fluid
2023
Review: Steady and Transient Thermal Analysis of 100 Cc Engine at 3000c, 5000c & 7000c
2023
Overview of Advancement of Inventory Models for Deteriorating Items with Time Based Uniform Price
2023