Color and Texture Feature Extraction Using Gabor Filter - Local Binary Patterns for Image Segmentation with Fuzzy C-Means

Yanuar Wicaksono, Romi Satria Wahono, Vincent Suhartono

Abstract


Image segmentation to be basic for image analysis and recognition process. Segmentation divides the image into several regions based on the unique homogeneous image pixel. Image segmentation classify homogeneous pixels basedon several features such as color, texture and others. Color contains a lot of information and human vision can see thousands of color combinations and intensity compared with grayscale or with black and white (binary). The method is easy to implement to segementation is clustering method such as the Fuzzy C-Means (FCM) algorithm. Features to beextracted image is color and texture, to use the color vector L* a* b* color space and to texture using Gabor filters. However, Gabor filters have poor performance when the image is segmented many micro texture, thus affecting the accuracy of image segmentation. As support in improving the accuracy of the extracted micro texture used method of Local Binary Patterns (LBP). Experimental use of color features compared with grayscales increased 16.54% accuracy rate for texture Gabor filters and 14.57% for filter LBP. While the LBP texture features can help improve the accuracy of image segmentation, although small at 2% on a grayscales and 0.05% on the color space L* a* b*.

 

Keywords: Texture and Color, Image Segmentation, Local Binary Pattern, Gabor Filter, Fuzzy c-Means

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References


Abbadeni, N., Zhou, D., & Wang, S. (2000). Computational measures corresponding to perceptual textural features. Proceedings 2000 International Conference on Image Processing (Cat. No.00CH37101), 897–900.

Aghbari, Z. A., & Al-Haj, R. (2006). Hill-manipulation: An effective algorithm for color image segmentation. Image and Vision Computing, vol. 24, no. 8, 894–903.

Cheng, H. D., Jiang, X. H., Sun, Y., & Wang, J. (2001). Color image segmentation: advances and prospects. Pattern Recognition, vol. 34, no. 12, 2259–2281.

Clausi, D. A., & Jernigan, M. E. (2000). Designing Gabor filters for optimal texture separability. Pattern Recognition, vol. 33, no. 11, 1835–1849.

Cremers, D., Rousson, M., & Deriche, R. (2006). A Review of Statistical Approaches to Level Set Segmentation: Integrating Color, Texture, Motion and Shape. International Journal of Computer Vision, vol.72 no.2, 195–215.

Gonzalez, R. C., & Richard, E. (2002). Digital Image Processing, 2nd ed. Upper Saddle River. New Jersey 07458: Prentice-Hall.

Idrissa, M., & Acheroy, M. (2002). Texture classification using Gabor filters. Pattern Recognition Letters, vol. 23, no. 9, 1095–1102.

Khan, J. F., Adhami, R. R., & Bhuiyan, S. M. (2009). A customized

Gabor filter for unsupervised color image segmentation. Image and Vision Computing, vol. 27, no. 4, 489–501.

Krinidis, S., & Chatzis, V. (2010). A robust fuzzy local information C-Means clustering algorithm. IEEE transactions on image processing: a publication of the IEEE Signal Processing Society, vol. 19, no. 5, 1328–37.

Li, M., & Staunton, R. C. (2008). Optimum Gabor filter design and local binary patterns for texture segmentation. Pattern Recognition Letters, vol. 29, no. 5, 664–672.

Mäenpää, T., & Pietikäinen, M. (2006). Texture Analysis With Local Binary Patterns. In C. H. Chen, & P. S. Wang, Handbook Of Pattern Recognition And Computer Vision, 3rd ed. (pp. 197–216). Singapore: World Scientific Publishing Co. Pte. Ltd.

Manjunath, B. S., Ohm, J.-R., Vasudevan, V. V., & Yamada, A. (2001). Color and texture descriptors. IEEE Transactions on Circuits and Systems for Video Technology, vol. 11, no. 6, 703–715.

Perner, P. (2006). Case Based Reasoning For Image Analysis And Interpretation. In C. H. Wang, Handbook Of Pattern Recognition And Computer Vision, 3rd ed. (pp. 95–114). Singapore: World Scientific Publishing Co. Pte. Ltd.

Qazi, I.-U.-H., Alata, O., Burie, J.-C., Moussa, A., & Fernandez-Maloigne, C. (2011). Choice of a pertinent color space for color texture characterization using parametric spectral analysis. Pattern Recognition, vol. 44, no. 1, 16–31.

Raut, S. A., Raghuwanshi, M., Dharaskar, R. .., & Raut, A. (2009). Image Segmentation – A State-Of-Art Survey for Prediction. 2009 International Conference on Advanced Computer Control, 420–424.

Tlig, L., Sayadi, M., & Fnaiech, F. (2012). A new fuzzy segmentation approach based on S-FCM type 2 using LBP-GCO features. Signal Processing: Image Communication, vol. 27, no. 6, 694–708.

Tuceryan, M., & Jain, A. (1999). Texture analysis. In C. H. Chen, L. F. Pau, & P. S. Wang, Handbook Of Pattern Recognition And Computer Vision, 2nd ed. (pp. 207–248). Singapore: World Scientific Publishing Co. Pte. Ltd.

Vandenbroucke, N., Macaire, L., & Postaire, J.-G. (2003). Color image segmentation by pixel classification in an adapted hybrid color space. Application to soccer image analysis. Computer Vision and Image Understanding, vol. 90, no. 2, 190–216.

Zhang, J., Tan, T., & Ma, L. (2002). Invariant texture segmentation via circular Gabor filters. in Object recognition supported by user interaction for service robots, vol. 2 , 901–904.


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