A Framework to Detect Digital Text Using OCR Machine Learning

Main Article Content

Arun Kumar R
Mathanagopal.V
Kaviyarasan.R
Srivaratharaj.K

Keywords

OCR, machine learning, recognition, character recognition, CNN

Abstract

The deep learning algorithm used in this paper to explain optical character recognition Deep learning and character recognition have recently caught the attention of numerous scholars. In many classification and recognition problems, deep neural networks operate at the cutting edge. Ocular character recognition is referred to as OCR. utilizes a character's optical picture as input and outputs that character. Numerous uses for it exist, such as robotics, traffic monitoring, and the digitization of printed materials. OCR can be implemented using Convolutional neural networks are examples of deep neural network designs (CNN),which is a well-known example. Traditional CNN classifiers can classify pictures using the soft-max layer by learning the most important 2D characteristics that are present in the medical images.

Abstract 156 | pdf Downloads 180

References

1. Chaudhuri, Arindam and Mandaviya, Krupa and Badelia, Pratixa and Ghosh, Soumya K and others. (2017) “Optical Character Recognition System. In Optical Character Recognition Systems for Different Languages with Soft Computing Springer: 941.
2. Li, Haixiang and Yang, Ran and Chen, Xiaohui. (2017) “License plate detection using convolutional neural network. 3rd IEEE International Conference on Computer and Communications (ICCC),IEEE:17361740
3. Rajavelu, A and Musavi, Mohamad T and Shirvaikar, Mukul Vassant. (1989) “ A neural network approach to character recognition.Neural Network 5,Elsevier (2): 387393.
4. Bai,Jinfeng and Chen, Zhineng and Feng, Bailan and Xu, Bo.(2014) “Image character recognition using deep convolutional neural network learned from different languages. IEEE International Conference on medical Image Processing (ICIP):25602564.
5. Maitra, Durjoy Sen and Bhattacharya, Ujjwal and Parui, Swapan K. (2015) “CNN based common approach to handwritten character recognition of multiple scripts.13th International Conference on Document Analysis and Recognition (ICDAR),IEEE:10211025.
6. Jakkula,Vikramaditya. (2006)“Tutorial on support vector machine (svm). School of EECS, Washington State University 37.
7. Ciresan, Dan Claudiu and Meier,Ueli and Gambardella,Luca Maria and Schmidhuber,Jurgen. (2011)“Convolutional neural network committees for handwritten character classification. International Conference on Document Analysis and RecognitionIEEE:11351139.