IJSTR

International Journal of Scientific & Technology Research

Home About Us Scope Editorial Board Blog/Latest News Contact Us
0.2
2019CiteScore
 
10th percentile
Powered by  Scopus
Scopus coverage:
Nov 2018 to May 2020

CALL FOR PAPERS
AUTHORS
DOWNLOADS
CONTACT

IJSTR >> Volume 1 - Issue 4, May 2012 Edition



International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616



COLOUR IMAGE SEGMENTATION TECHNIQUES AND ISSUES: AN APPROACH

[Full Text]

 

AUTHOR(S)

Nikita Sharma, Mahendra Mishra, Manish Shrivastava

 

KEYWORDS

Image Segmentation, Clustering, Thresholding , Edge Detection, Region Growing,

 

ABSTRACT

Due to the advent of computer technology image-processing techniques have become increasingly important in a wide variety of applications. Image segmentation is a classic subject in the field of image processing and also is a hotspot and focus of image processing techniques. With the improvement of computer processing capabilities and the increased application of color image, the color image segmentation are more and more concerned by the researchers. Several general-purpose algorithms and techniques have been developed for image segmentation. Since there is no general solution to the image segmentation problem, these techniques often have to be combined with domain knowledge in order to effectively solve an image segmentation problem for a problem domain. This paper presents a comparative study of the basic image segmentation techniques i.e, Edge-Based, KMeans Clustering, Thresholding and Region-Based techniques.

 

REFERENCES

[1] Rafael C. Gonzalez, Richard E. Woods, “Digital Image Processing”, Second Edition, Pearson Education.

[2] M. Ameer Ali, Gour C. Karmakar, Laurence S. Dooley, “Fuzzy Clustering For Image Segmentation Using Generic Shape
Information”, Malaysian Journal of Computer Science, Vol. 21(2), 2008

[3] Deeplai Kelkar and Surendra Gupta,” Improved Quadtree Method for Split Merge Image Segmentation”, Emerging Trends in
Engineering and Technology, 2008 ICETET.

[4] Deeplai Kelkar and Surendra Gupta,” Improved Quadtree Method for Split Merge Image Segmentation”, Emerging Trends in
Engineering and Technology, 2008 ICETET.

[5] Wenchao Cai, JueWu, Albert C. S. Chung,” shape-based image segmentation using normalized cuts”, ICIP ,2006 ,IEEE.

[6]R. Nicole, “Study on the matlab segmentation image segmentation,”J.Name Stand. Abbrev., in press.
[7] Ahmed, J., V.T. Coppola, and D.S. Bernstein, Segmentation of Blood Cells Image Based on Support Vector Machines Control, and Dynamics, 1998.21(5): p. 684-691.
[8] T.Chiang and Y.-Q. Zhang, “A new rate control scheme using quadratic rate distortion model,” IEEE Trans. Circuits Syst. Video Technol., vol. 7, no. 1, pp. 246–250, Feb. 1997.
[9] Z. G. Li, F. Pan, K. P. Lim, and S. Rahardja, “Semi-automatic ROI Extraction Based on Medical Image Segmentation,” in Proc. IEEE Int. Conf. Image Process., Oct. 2004, pp. 745–748.