Abstract

In this paper we have segmented an image by using a k-clustering algorithm, using the Gaussian Mixture Model cluster to generate the initial centroid. Many types of research have been done in the area of image segmentation using clustering especially medical images, these techniques help medical scientists in the diagnosis of diseases thereby to cure this diseases K-means clustering algorithm one of these techniques, it is an unsupervised algorithm and it is used to segment the interest area from the background. We used also partial contrast stretching to improve the quality of the original image. And the final segmented result is comparing with the k-means clustering algorithm and we can conclude that the proposed clustering algorithm has better segmentation. Finally, MSE and PSNR are checked and discovered that they have small and large value respective, which are the condition for good image segmentation quality. And comparison for MSE and PSNR are done for the proposed method and classical K-means algorithm and it is found that the proposed method has better performance result.

Highlights

  • Image segmentation is a very important technology for image processing

  • Partial contrast stretching is used to improve the quality of the original image

  • The final segmented result is comparing with the k-means clustering algorithm and we can conclude that the proposed clustering algorithm has better segmentation

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Summary

Introduction

Image segmentation is a very important technology for image processing. There are many applications whether on the synthesis of the objects or computer graphic images require precise segmentation. There square measure completely different techniques for image segmentation like threshold based, edge-based, cluster-based, neural network based. Image segmentation becomes one of an important tool in the medical area where it is used to extract or region of interest from the background. The popular techniques used for image segmentation are thresholding technique, edge detection-based techniques, region-based techniques, clustering based techniques, watershed-based techniques, partial differential equation based mostly and artificial neural network-based techniques etc. These all techniques are different from each other with respect to the method used by these for segmentation.

Literature Review of Image Segmentation
Contrast Enhancement Using Partial Contrast Stretching
Gaussian Mixture Models
K-Means Clustering Algorithm
Proposed Algorithm
Results
Conclusion

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