An Analysis of Image Segmentation Techniques for Image Processing Applications

Authors

S. Bhuvaneswari

Madurai Kamaraj University, Bodinayakanur, Tamilnadu, India (India)

M. Sulthan Ibrahim

Madurai Kamaraj University, Bodinayakanur, Tamilnadu, India (India)

Article Information

DOI: 10.51244/IJRSI.2026.1303000073

Subject Category: Digital Marketing

Volume/Issue: 13/3 | Page No: 824-829

Publication Timeline

Submitted: 2026-03-11

Accepted: 2026-03-16

Published: 2026-03-31

Abstract

Image processing techniques are a crucial component of modern computer technologies, playing a significant role in various applications such as the medical field, object detection, video surveillance systems, and computer vision. A key aspect of image processing is image segmentation, which involves dividing images into smaller parts known as segments. This process simplifies image representation to facilitate analysis. Numerous algorithms have been developed for image segmentation, each based on specific pixel features. This paper reviews and analyzes different segmentation algorithms, ultimately comparing them. Such a comparative study is valuable for enhancing the accuracy and performance of segmentation methods across various image processing domains.

Keywords

Image Segmentation, Digital Image Processing, K-Means Clustering

Downloads

References

1. ZhenZhou Wang, “Image segmentation by combining the global and local properties”, Elsevier, Expert Systems with Applications (2017), Vol-87, PP- 30-40. [Google Scholar] [Crossref]

2. Lahouaoui Lalaoui, Tayeb. Mohamadi and Abdelhak Djaalab, “New Method for Image Segmentation”, Elsevier, Procedia - Social and Behavioral Sciences (2015), Vol-195, PP- 1971–1980. [Google Scholar] [Crossref]

3. V. Rajinikanth, and M. S. Couceiro, “RGB Histogram based Color Image Segmentation Using Firefly Algorithm”, Elsevier, Procedia Computer Science (2015), Vol-46, PP- 1449–1457. [Google Scholar] [Crossref]

4. Huang Ying, Li Kai, and Yang Ming, “An Improved Image Inpainting Algorithm based on Image Segmentation”, Elsevier, Procedia Computer Science (2017), Vol-107, PP- 796–801. [Google Scholar] [Crossref]

5. Gupta Mehul, Patel Ankita, Dave Namrata, Goradia Rahul and Saurin Sheth,” Text-Based Image Segmentation Methodology”, Elsevier, Procedia Computer Science (2014), Vol-14, PP- 465–472. [Google Scholar] [Crossref]

6. Gupta Mehul, Patel Ankita, Dave Namrata, Goradia Rahul and Saurin Sheth, “Text-Based Image Segmentation Methodology”, Elsevier, Procedia Computer Science (2014), Vol-14, PP- 465–472. [Google Scholar] [Crossref]

7. Mamta Mittal, Amit Verma, Iqbaldeep Kaur, Bhavneet Kaur, Meenakshi Sharma, Lalit Mohan Goyal, Sudipta Roy and Tai-Hoon Kim, “An Efficient Edge Detection Approach to Provide Better Edge Connectivity for Image Analysis”, IEEE Access (2019), Vol-7, PP- 33240–33255. [Google Scholar] [Crossref]

8. Ahmed H. Abdel-Gawad, Lobna A. Said, Dave Namrata, and Ahmed G. Radwan, “Optimized Edge Detection Technique for Brain Tumor Detection in MR Images”, IEEE Access (2020), Vol-8, PP136243–136259. [Google Scholar] [Crossref]

9. Kristina P. Sinaga and Miin-Shen Yang, “Unsupervised K-Means Clustering Algorithm”, IEEE Access (2020), Vol-8, PP- 80716–80727. [Google Scholar] [Crossref]

10. Heming Jia Jun Ma and Wenlong Song, “Multilevel Thresholding Segmentation for Color Image Using Modified Moth-Flame Optimization”, IEEE Access (2019), Vol-7, PP- 44097–44134. [Google Scholar] [Crossref]

11. Heming Jia Jun Ma and Wenlong Song, “Multilevel Thresholding Segmentation for Color Image Using Modified Moth-Flame Optimization”, IEEE Access (2019), Vol-7, PP- 44097–44134. [Google Scholar] [Crossref]

12. Ahmed A. Ewees, Mohamed Abd Elaziz, Mohammed A. A. Al-Qaness, Hassan A. Khalil and Sunghwan Kim,“ Two-Step CNN Framework for Text Line Recognition in Camera-Captured Images”, IEEE Access (2020), Vol-8, PP- 26304–26315. [Google Scholar] [Crossref]

13. Soosan Beheshti, Edward Nidoy, and Faizan Rahman, “K-MACE and Kernel K-MACE Clustering”,IEEE Access (2020), Vol-8, PP- 17390–17403. [Google Scholar] [Crossref]

14. Dan Wang, Guoqing Hu, Qianbo Liu, Chengzhi Lyu, and Md Mojahidul Islam, “Region-Based Nonparametric Model for Interactive Image Segmentation”, IEEE Access (2019), Vol-7, PP- 111124– 111134. [Google Scholar] [Crossref]

15. Jianyu Lin,“A New Perspective on Improving the Lossless Compression Efficiency for Initially Acquired Images”, IEEE Access (2019), Vol-7, PP- 144895–144906. [Google Scholar] [Crossref]

16. Hongnan Liang, Heming Jia, Zhikai Xing, Jun Ma, And Xiaoxu Peng, “Modified Grasshopper Algorithm-Based Multilevel Thresholding for Color Image Segmentation”, IEEE Access (2019), Vol-7, PP- 11258–11295. [Google Scholar] [Crossref]

17. Heming Jia, Jun Ma, And Wenlong Song, “Multilevel Thresholding Segmentation for Color Image Using Modified Moth-Flame Optimization”, IEEE Access (2019), Vol-7, PP- 44097–44134. [Google Scholar] [Crossref]

18. Zhicheng Zhang And Jianqin Yin, “Bee Foraging Algorithm Based Multi-Level Thresholding For Image Segmentation”, IEEE Access (2020), Vol-8, PP- 16269–16280. [19] Zhen Zheng , Bingting Zha, Hailu Yuan, Youshi Xuchen, Yanliang Gao, And He Zhang, “Adaptive Edge Detection Algorithm Based on Improved Grey Prediction Model”, IEEE Access (2020), Vol-8, PP- 102165–102176. [Google Scholar] [Crossref]

19. Hanxiao Rong, Alex Ramirez-Serrano, Lianwu Guan, And Yanbin Gao, “Image Object Extraction Based on Semantic Detection and Improved K-Means Algorithm”, IEEE Access 2020 vol-8 PP171129-17113 [Google Scholar] [Crossref]

Metrics

Views & Downloads

Similar Articles