Abstract

The development of handwriting character recognition (HCR) is an interesting area in pattern recognition. HCR system consists of a number of stages which are preprocessing, feature extraction, classification and followed by the actual recognition. It is generally agreed that one of the main factors influencing performance in HCR is the selection of an appropriate set of features for representing input samples. This paper provides a review of these advances. In a HCR, the set of features plays as main issues, as procedure in choosing the relevant feature that yields minimum classification error. To overcome these issues and maximize classification performance, many techniques have been proposed for reducing the dimensionality of the feature space in which data have to be processed. These techniques, generally denoted as feature reduction, may be divided in two main categories, called feature extraction and feature selection. A large number of research papers and reports have already been published on this topic. In this paper we provide an overview of some of the methods and approach of feature extraction and selection. Throughout this paper, we apply the investigation and analyzation of feature extraction and selection approaches in order to obtain the current trend. Throughout this paper also, the review of metaheuristic harmony search algorithm (HSA) has provide.

Highlights

  • Handwriting Character Recognition (HCR) is the ability of a computer to receive and interpret intelligible handwritten input analyzed to many automated process system

  • Feature extraction is related with which technique will be used to extract features from the image character as representations

  • We have reviewed the introduction, concept and stages in the development of handwriting character recognition (HCR)

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Summary

INTRODUCTION

Handwriting Character Recognition (HCR) is the ability of a computer to receive and interpret intelligible handwritten input analyzed to many automated process system. HCR can be divided into three steps namely preprocessing, feature extraction and classification (recognition). This paper only concentrates in the feature extraction stage. Feature extraction in HCR is a very important field of image processing and object recognition. Based on the statement above, this study was conducted to review and examine the approach as extraction and selection method for feature in HCR. This study was conducted to investigate a current trend on approach of feature extraction and selection.

EASE OF USE
Preprocessing
Feature Extraction
Classification
AN OVERVIEW ON FEATURE EXTRACTION
Statistical Features
Structural Features
CURRENT TRENDS IN FEATURE EXTRACTION
OVERVIEW ON FEATURE SELECTION
DISCUSSION AND FUTURE
VIII. CONCLUSION

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