APPLYING PRINCIPAL COMPONENT ANALYSIS, MULTILAYER PERCEPTRON AND SELF-ORGANIZING MAPS FOR OPTICAL CHARACTER RECOGNITION
Journal: ICTACT Journal on Image and Video Processing (IJIVP) (Vol.6, No. 2)Publication Date: 2015-11-01
Authors : Khuat Thanh Tung; Le Thi My Hanh;
Page : 1115-1121
Keywords : Optical Character Recognition; Principal Component Analysis; Multilayer Perceptron; Self-Organizing Maps;
Abstract
Optical Character Recognition plays an important role in data storage and data mining when the number of documents stored as images is increasing. It is expected to find the ways to convert images of typewritten or printed text into machine-encoded text effectively in order to support for the process of information handling effectively. In this paper, therefore, the techniques which are being used to convert image into editable text in the computer such as principal component analysis, multilayer perceptron network, self-organizing maps, and improved multilayer neural network using principal component analysis are experimented. The obtained results indicated the effectiveness and feasibility of the proposed methods.
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