Texture Feature Extraction for Batik Images Using GLCM and GLRLM with Neural Network Classification

Authors

  • K. Chandraprabha  Associate Professor and Head of the Department Computer Science and Engineering, Alagappa Chettiar Government College of Engineering and Technology, Karaikudi, India
  • S. Akila  PG Scholar, Department of Master of Computer Application, Alagappa Chettiar Government College of Engineering and Technology, Karaikudi, India

DOI:

https://doi.org//10.32628/CSEIT195322

Keywords:

Batik images, Texture Features, GLCM, GLRLM, Classification, Neural Networks

Abstract

Batik has a vast variety of motifs and colors. Aside from its popularity as being part of Indonesian culture, it has become the source of Indonesia’s income. Batik was more promising in the past years for the business opportunities. Batik has economic and high export value as the commodity. Batik has become the main part of national culture; however there is a lack of understanding for many people, as they are still unaware about batik motifs and patterns. Therefore, it is needed for building a model to identify batik motifs. This study aims to combine the features of texture and the feature of shapes’ ornament in batik to classify images using artificial neural networks. The value of texture features of images in batik is extracted using gray level co-occurrence matrices (GLCM) which include Contrast, Correlation, Homogeneity and Energy. And include the Gray level Run length matrices (GLRLM) which includes Gray Level Non-Uniformity (GLN), Long Run Emphasis (LRE), Short Run Emphasis (SRE), Run Percentage (RP). At this phase of the training and testing, we compare the value of a classification accuracy of neural networks in each class in batik with their texture features, and the combination of GLCM and GLRLM. From the three features used in the classification of batik image with artificial neural networks it includes Probabilistic Neural network, it was obtained that GLCM feature has the lowest accuracy rate of 78% and the combination of GLCM and GLRLM features produces a greater value of accuracy by 84%. The results obtained in this study indicate that there is an increase in accuracy of batik image classification using the probabilistic neural network with the combination of GLCM and GLRLM features in batik image.

References

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Published

2019-06-30

Issue

Section

Research Articles

How to Cite

[1]
K. Chandraprabha, S. Akila, " Texture Feature Extraction for Batik Images Using GLCM and GLRLM with Neural Network Classification, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 5, Issue 3, pp.06-15, May-June-2019. Available at doi : https://doi.org/10.32628/CSEIT195322