Skip to content

A novel data augmentation method based on Cycle-GAN, and a new offline handwritten signature verification system based on CapsNet.

Notifications You must be signed in to change notification settings

mutluYapici/offlineHandwirttenSignatureVerification

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

57 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Deep Leaning Based Data Augmentation Method and Signature Verification System for Offline Handwritten Signature

Verify authenticity of offline handwritten signatures according to the writer dependent approach through digital image processing and neural networks.

There are offline signature examples of two individuals named 0115 and 129 from the databases listed below in the Data folder. In addition, there are also signature samples reconstructed with the proposed data augmentation method in the data folder.

We couldn't upload trained weights here because there is a 100MB file upload limit on GitHub. You can download pre-trained weight from HERE

Step By Step Usage

1- Download all files and folders.

2- If you want to see performance of the system, download pre-trained weight from HERE .Then move the file in /data/Mimza_0115 directory.

3- Run all codes in loadData.py

4- Run all codes in loadModel.py

5- Run the required codes in trainAndAnalysis.py according to the your plans

Built with

Keras
Tensorflow

Requirements

Python 3.6.0
Numpy
Keras 2.2.0
Tensorflow
h5py 2.9.0

Dataset

The dataset used was gotten from the GPDS and MCYT signature databases. More details are available to the links below.

More Information About GPDSsyntheticSignature Dataset

More Information About MCYT-75 Dataset

Accuracy

The model acheived an accuracy of 98.06% F1 Score, 1.99% AER and 2.58% EER with 10 Genuine samples on the MCYT signature dataset.

About

A novel data augmentation method based on Cycle-GAN, and a new offline handwritten signature verification system based on CapsNet.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages