Author:
Hamdan Yasir Babiker,Sathish
Abstract
There are many applications of the handwritten character recognition (HCR) approach still exist. Reading postal addresses in various states contains different languages in any union government like India. Bank check amounts and signature verification is one of the important application of HCR in the automatic banking system in all developed countries. The optical character recognition of the documents is comparing with handwriting documents by a human. This OCR is used for translation purposes of characters from various types of files such as image, word document files. The main aim of this research article is to provide the solution for various handwriting recognition approaches such as touch input from the mobile screen and picture file. The recognition approaches performing with various methods that we have chosen in artificial neural networks and statistical methods so on and to address nonlinearly divisible issues. This research article consisting of various approaches to compare and recognize the handwriting characters from the image documents. Besides, the research paper is comparing statistical approach support vector machine (SVM) classifiers network method with statistical, template matching, structural pattern recognition, and graphical methods. It has proved Statistical SVM for OCR system performance that is providing a good result that is configured with machine learning approach. The recognition rate is higher than other methods mentioned in this research article. The proposed model has tested on a training section that contained various stylish letters and digits to learn with a higher accuracy level. We obtained test results of 91% of accuracy to recognize the characters from documents. Finally, we have discussed several future tasks of this research further.
Publisher
Inventive Research Organization
Reference31 articles.
1. [1] X. Feng, H. Yao, and S. Zhang, ‘‘Focal CTC loss for Chinese optical character recognition on unbalanced datasets’’ Complexity, vol. 2019, Jan. 2019, Art. no. 9345861.
2. [2] L. Xu, Y. Wang, X. Li, and M. Pan, ‘‘Recognition of handwritten Chinese characters based on concept learning,’’ IEEE Access, vol. 7, pp. 102039–102053, 2019.
3. [3] Manoharan, J. Samuel. "Capsule Network Algorithm for Performance Optimization of Text Classification" Journal of Soft Computing Paradigm (JSCP) 3, no. 01 (2021): 1-9.
4. [4] M. Ahmed and A. I. Abidi, ‘‘Performance comparison of ANN and template matching on English character recognition,’’ Int. J. Advance Res., Ideas Innov. Technol., vol. 5, no. 4, pp. 367–372, 2019.
5. [5] Chakrabarty, Navoneel, and Sanket Biswas. "Navo Minority Over-sampling Technique (NMOTe): A Consistent Performance Booster on Imbalanced Datasets." Journal of Electronics 2, no. 02 (2020): 96-136.
Cited by
85 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献