Abstract

One of the biometric methods in authentication systems is the writer verification/identification using password handwriting. The main objective of this paper is to present a robust writer verification system by using cursive texts as well as block letter words. To evaluate the system, two datasets have been used. One of them is called Secure Password DB 150, which is composed of 150 users with 18 samples of single character words per user. Another dataset is public and called IAM online handwriting database, and it is composed of 220 users of cursive text samples. Each sample has been defined by a set of features, composed of 67 geometrical, statistical, and temporal features. In order to get more discriminative information, two feature reduction methods have been applied, Fisher Score and Info Gain Attribute Evaluation. Finally, the classification system has been implemented by hold-out cross validation and k-folds cross validation strategies for three different classifiers, K-NN, Naïve Bayes and Bayes Net classifiers. Besides, it has been applied for verification and identification approaches. The best results of 95.38% correct classification are achieved by using the k-nearest neighbor classifier for single character DB. A feature reduction by Info Gain Attribute Evaluation improves the results for Naïve Bayes Classifier to 98.34% for IAM online handwriting DB. It is concluded that the set of features and its reduction are a strong selection for the based-password handwritten writer identification in comparison with the state-of-the-art.

Highlights

  • The new and different kinds of sensors open up the option to modern societies to analyze and collect different data in all fields

  • The main objective of this paper is to find a discriminative, strong and novel set of features, which can be used for writer verification/identification using handwritten words composed of single character as well as cursive text

  • The results show the grade of the robustness and its analysis

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Summary

Introduction

The new and different kinds of sensors open up the option to modern societies to analyze and collect different data in all fields. Many security and encryption methods are developed. Software security systems are developed by humans and they can be decrypted by humans. This is one reason for the increasing interest in using biometric methods in authentication systems in recent years. In this proposal, a writer verification is developed using their online handwriting information. In Proceedings of the 2016 12th IAPR Workshop on Document Analysis Systems (DAS), Santorini, Greece, 11–14 April 2016; pp. Combining Local Features for Offline Writer Identification. 14th International Conference on Frontiers in Handwriting Recognition, Heraklion, Greece, 1–4 September. Recognition of online handwritten mathematical formulas using probabilistic SVMs and stochastic context free grammars.

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