Combining GLCM Features and Markov Random Field Model for Colour Textured Image Segmentation

In this paper, we propose a new approach for color textured image segmentation. It is a two stage technique, where in the first stage, textural features using gray level co-occurrence matrix (GLCM) are computed for regions of interest (ROI)considered for each class. ROI act as ground truths for the classes. Ohta model (I1, I2, I3) is the colour model used for segmentation. Mean at inter pixel distance (IPD) 1 of I2 component was found to be the optimized textural feature for further segmentation. In the second stage, the feature matrix obtained is assumed to be the degraded version of the image labels and Markov random field model is employed to model the unknown image labels. The labels are estimated through maximum a posteriori estimation criterion using iterated conditional modes algorithm. The performance of the proposed approach is compared with that of using GLCM and Maximum Likelihood classifier and with the one which uses GLCM and MRF in RGB colour space. The proposed method is found to be better in terms of accuracy than the other two methods.

[1]  B. Kartikeyan,et al.  A segmentation approach to classification of remote sensing imagery , 1998 .

[2]  Mohan M. Trivedi,et al.  Segmentation of a high-resolution urban scene using texture operators , 1984, Comput. Vis. Graph. Image Process..

[3]  J. Besag On the Statistical Analysis of Dirty Pictures , 1986 .

[4]  Zoltan Kato,et al.  A Markov random field image segmentation model for color textured images , 2006, Image Vis. Comput..

[5]  Anne Puissant,et al.  The utility of texture analysis to improve per‐pixel classification for high to very high spatial resolution imagery , 2005 .

[6]  Zoltan Kato,et al.  Multicue MRF image segmentation: combining texture and color features , 2002, Object recognition supported by user interaction for service robots.

[7]  P. Mather,et al.  Classification Methods for Remotely Sensed Data , 2001 .

[8]  M.,et al.  Statistical and Structural Approaches to Texture , 2022 .

[9]  Ludong Wang,et al.  A new statistical approach for texture analysis , 1990 .

[10]  P. Nanda,et al.  Constrained Markov Random Field Model for Color and Texture Image Segmentation , 2008, 2008 International Conference on Signal Processing, Communications and Networking.

[11]  Robert M. Haralick,et al.  Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..

[12]  Max Mignotte,et al.  A stochastic method for Bayesian estimation of hidden Markov random field models with application to a color model , 2005, IEEE Transactions on Image Processing.

[13]  R. Dwivedi,et al.  Textural analysis of IRS-1D panchromatic data for land cover classification , 2002 .