Texture-Based Woven Image Classification using Fuzzy C-Means Algorithm

Authors

  • Soetrisno Soetrisno Institut Teknologi Sepuluh Nopember
  • Dwi Ratna Sulistyaningrum Institut Teknologi Sepuluh Nopember
  • Isi Bifawa’idati Institut Teknologi Sepuluh Nopember

Keywords:

Image classification, feature extraction, Gabor f ilters, fuzzy C-Means algorithm

Abstract

There are a lot of texture-based image data stored in the storage media Internet. Most of these data portray the cultural fabric texture results from a State. Because of the many variants of the existing texture, the data need to be easily accessible through the Internet. Moreover, the area of origin of weaving the surface is easily known. Therefore, it is necessary to develop a classification system based on woven image data. The texture of the image data stored in a database on the Internet can be grouped/clustered well, making it easy to access. This study examines a texture-based woven image classification using fuzzy c-means algorithm. This method combines extraction methods Gabor filter, fuzzy c-means algorithm and Euclid distance similarity measure. An experiment was done using the system as many as 60 woven images from Bali, NTT and Central Java areas, each taken as many as 25 images weaving. The test results stated that testing using the test images taken from the images in the database generates a 100% accuracy rate, and testing using test images taken from outside the database produces an accuracy rate of 94%.

References

T. Nguyen, A. Khosravi, D. Creighton, and S. Nahavandi, “Medical data classification using interval type-2 fuzzy logic system and wavelets,” Applied Soft Computing, vol. 30, pp. 812–822, 2015.

C. Perez, J. Saravia, C. Navarro, D. Schulz, C. Aravena, and F. Galdames, “Rock lithological classification using multi-scale gabor features from sub-images, and voting with rock contour information,” International Journal of Mineral Processing, vol. 144, pp. 56–64, 2015.

E. Pusparini, B. Setiyono, and D. Sulistyaningrum, “Bullets defect detection based on digital image processing using line detection and fuzzy sets,” Global Journal of Pure and Applied Mathematics, vol. 11, no. 4, pp. 2215–2222, 2015.

R. Carmona, W.-L. Hwang, and B. Torresani, Practical Time-Frequency Analysis: Gabor and wavelet transforms, with an implementation in S. Academic Press, 1998.

J. Raheja, S. Kumar, and A. Chaudhary, “Fabric defect detection based on glcm and gabor filter: A comparison,” Optik, vol. 124, no. 23, pp. 6469–6474, 2013.

D. Sulistyaningrum, B. Setiyono, J. Anita, and M. Muheimin, “Measurement of crack damage dimensions on asphalt road using gabor filter,” in Journal of Physics: Conference Series, vol. 1752, no. 1, 2021, p. 012086.

K.-L. Mak, P. Peng, and K.-F. Yiu, “Fabric defect detection using multilevel tuned-matched gabor filters,” Journal of Industrial & Management Optimization, vol. 8, no. 2, p. 325, 2012.

J. Bezdek, R. Ehrlich, and W. Full, “Fcm: The fuzzy c-means clustering algorithm,” Computers & geosciences, vol. 10, no. 2-3, pp. 191–203, 1984.

Z. Ji, Y. Xia, Q. Chen, Q. Sun, D. Xia, and D. Feng, “Fuzzy c-means clustering with weighted image patch for image segmentation,” Applied soft computing, vol. 12, no. 6, pp. 1659–1667, 2012.

Downloads

Published

2022-02-15

How to Cite

Soetrisno, S., Sulistyaningrum, D. R., & Bifawa’idati, I. (2022). Texture-Based Woven Image Classification using Fuzzy C-Means Algorithm. (IJCSAM) International Journal of Computing Science and Applied Mathematics, 8(1), 1–4. Retrieved from https://journal.its.ac.id/index.php/ijcsam/article/view/4641

Issue

Section

Articles