Survey on Existing Techniques for Writer Verification

Authors

  • Welekar R Assistant professor, Dept. of CSE, RCEOM College, Nagpur, Maharashtra, India
  • D. Rao VS PG Student CSE, Dept. of CSE, RCEOM College, Nagpur, Maharashtra, India

Keywords:

character recognition, character segmentation, writer verification, segmentation, feature extraction

Abstract

This paper presents a survey of the literature on handwriting analysis and writer verification schemes and techniques up till date. The paper outlines an overview of the writer identification schemes mainly in English, Arabic, Bangla, Malayalam and Gujrati languages. Taxonomy of different features adopted for online and offline writer identification schemes is also drawn at. The feature extraction methods adopted for the schemes are discussed in length outlining the merits and demerits of the same. In automated writer verification, text independent and text dependent methods are available which is also discussed in this paper. An evaluation of writer verification schemes under multiple languages is also analyzed by comparing the recognition rate. New method proposed for identifying writer using slant, orientation, eccentricity enabling to identify writer‟s mental state by features associated.

References

Jomy John, Kannan Balakrishnan, Pramod K V, “A System for Offline Recognition of Handwritten Characters in Malayalam Script”, I J Image, Graphics and Signal Processing, MECS , vol 4, April 2013 .

Ankush Acharyya, Sandip Rakshit,Ram Sarkar,Subhadip Basu,Mita Nasipuri, “Handwritten Word Recognition Using MLP based Classifier: A Holistic Approach” ,IJSCI, vol 10, issue 2, no 2, March 2013.

Md Mojahidul Islam, Md. Imran Hossain & Md Kislu Noman, “Bangla Character Recognition System is Developed by using Automatic Feature Extraction and XOR operation “ , Global journal of computer science and technology graphics & vision, volume 13, issue 2, version 1.0, 2013.

Shashank Mathur, Vaibhav Aggarwal, Himanshu Joshi, Anil Ahlawat, “Offline Handwriting Recognition using Genetic Algorithm”, International Book Series “ Information Science and Computing”

Seeraj M, Suman Mary Idicula, “ A survey on Writer Identification Schemes” , International Journal of Computer Application(0975-8887), volume 26, no 2, july 2011.

Avani R. Vasant, Sandeep R. Vasant, Dr G. R Kulkarni,“Gujarati Character Recognition : The State of Art Comprehensive Survey”, ISSN : 0975-6760, Volume 02, issue 01 , nov 2011.

D Impedovo, G. Pirlo, R Modugno. “ New Advancements in Zoning –Based Recognition of Handwritten Characters”, International Conference on Frontiers in handwriting Recognition, 2012.

Atallah Mahmoud AL Shatnawi, Farah Hanna AL Zawaideh, Safwan AL Salaimeh, Khairuddin Omar, “Offline Arabic Text Recognition- An overview” ,WCSIT, ISSN 2221-0741,vol 1 , no-5,2011.

J. Pradeep , E. Shrinivasan, S.Himavathi,“ Diagonal Based Feature Extraction for Handwritten Alphabets Recognition System using Neural Network”, IJCSIT, vol 3, no 1, feb 2011.

Hanan A. Aljuaid, Dzulkifi Muhamad ,“Offline Arabic Character Recognition using Genetic Approach : A Survey”, 2008.

Qui-Feng Wang, Fei Yin, Cheng-Lin Liu, “ Handwritten Chinese Text Recognition By Integrating Muliple Contexts”, IEEE, vol 34, no 8, August 2012.

Jawad H. Alkhateeb, Olivier Pauplin, Jinchang Ren, Jianmin Jiang, “ Performance of Hidden Markov model and dynamic Bayesian network classifiers on handwritten Arabic word recognition”, knowledge based systems, vol 24, February 2011.

F. Shahabi, M. Rahmati , “Comparision of Gabor Based Features for Writer identification of Farsi/ Arabic Handwriting”.

Sargur N. Srihari, Sung-Hyuk Cha, Sangjik Lee, “Establishling Handwriting Individuality Using Pattern Recognition Techniques”, IEEE, 2001

G. Louloudis, N. Stamatopoulos, B. Gatos, “ ICDAR 2011 Writer Identification Contest”, ICDAR, 2011.

Marius Popescu, Radu T. Ionescu, “The Story of the characters, the DNA and Native Language”, Proceedings of English Workshop on Innovative Use of NLP for building Educational Applications, June 2013.

Meenu Bhatia, “Offline Handwritten Signature Verification using Neural Network”, IJAIEM, May 2013.

Downloads

Published

2024-02-26

How to Cite

Welekar, R., & D. Rao, V. S. (2024). Survey on Existing Techniques for Writer Verification. COMPUSOFT: An International Journal of Advanced Computer Technology, 3(05), 773–776. Retrieved from https://ijact.in/index.php/j/article/view/136

Issue

Section

Original Research Article

Similar Articles

1 2 3 4 5 6 7 8 9 10 > >> 

You may also start an advanced similarity search for this article.