Manoj Kumar Pandey Profile Manoj Kumar Pandey

A review on image segmentation

  • Authors Details :  
  • Sushma Jaiswal,  
  • Manoj Kumar Pandey

Journal title : Rising Threats in Expert Applications and Solutions

Publisher : Springer Singapore

Online ISSN : 2194-5365

Page Number : 233-240

478 Views Conference

Along with computer technology, the demand of digital image processing is too high and it is used massively in every sector like organization, business, medical etc. Image segmentation enables us to analyze any given image in order to extract information from the image. There are numerous algorithm and techniques have been industrialized in the field of image segmentation. Segmentation has become one of the prominent tasks in machine vision. Machine vision enables the machine to vision the real world problems like human does and also act accordingly to solve the problem so it is utmost important to come up with the techniques that can be applied for the image segmentations. Invention of modern segmentation methods like instance, semantic and panoptic segmentation have advances the concept of machine vision. This paper focuses on the various methods of image segmentation along with its advantages and disadvantages.

Article DOI & Crossmark Data

DOI : https://doi.org/10.1007/978-981-15-6014-9_27

Article Subject Details


Article Keywords Details



Article File

Full Text PDF


Article References

  • (1). K.K. Singh, A. Singh, A study of image segmentation algorithms for different types of images. IJCSI Int. J. Comput. Sci. 7(5) (2010)
  • (2). LNCS Homepage, https://www.analyticsvidhya.com/blog/2019/04/introduction-imagesegmentation-techniques-python/ . Last accessed 17 Oct 2019
  • (3). J. Senthilnath, S.N. Omkar, V. Mani, N. Tejovanth, P.G. Diwakar, B. Archana Shenoy, Hierarchical clustering algorithm for land cover mapping using satellite images. IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens. 5(3) (2012)
  • (4). D. Wang, A Multiscale gradient algorithm for image segmentation using watersheds. Pattern Recognit. Sci. Direct 2043–-2052 (1997)
  • (5). M. Zhang, L. Zhang, H.D. Cheng, A neutrosophic approach to image segmentation based on watershed method. Signal Process. 90(5), 1510–1517 (2010)
  • (6). F. Yi, I. Moon, Image segmentation: a survey of graph-cut methods, in 2012 International Conference on Systems and Informatics (ICSAI 2012) (IEEE, 2012), pp. 1936–1941
  • (7). M.A. Wani, B.G. Batchelor, Edge-region-based segmentation of range image. IEEE Trans. Pattern Anal. Mach. Intell. 16(3), 314–319 (1994)
  • (8). R.C. Gonzalez, Richard, Digital Image Processing, 3rd edn. (Hardcover, 2007)
  • (9). A. Alazzawi, H. Alsaadi, A. Shallal, S. Albawi, Edge detection-application of (first and second) order derivative in image processing, in Second Engineering Scientific Conference College of Engineering–University of Diyala (2015), pp. 430–440
  • (10). A. Kale, H. Yadav, A. Jain, A review: image segmentation using genetic algorithm. Int. J. Sci. Eng. Res. 5(2), 455–458 (2014)
  • (11). M. Peixeiro, Introduction to Support Vector Machine (2019). Home page https://towardsdatascience.com/introduction-to-support-vector-machine-svm4671e2cf3755 . Last accessed 21 Oct 2019
  • (12). T.F. Karim, M.S.H. Lipu, L. Rahman, F. Sultana, Face recognition using PCA-based method, in IEEE International Conference on Advanced Management Science (2010), pp. 158–162
  • (13). M. Mignotte, Segmentation by fusion of histogram-based K means clusters in different color spaces. IEEE Trans. Image Process. 17(5), 780–787 (2008)
  • (14). LNCS Homepage, https://in.mathworks.com/help/vision/ug/getting-started-with-semanticsegmentation-using-deep-learning.html . Last accessed 17 Oct 2019
  • (15). A. Kirillov, K. He, R. Girshick, C. Rother, P. Dollar, Panoptic Segmentation, arXiv: 1801.00868v3, (April 2019)
  • (16). J. Gonzalez, U. Ozguner, Lane detection using histogram-based segmentation and decision trees, in IEEE Intelligent Transportation Systems Conference Proceedings (Dearborn (MI), 2000)
  • (17). Orlando Tobias, Seara, Rui: image segmentation by histogram thresholding using fuzzy sets. IEEE Trans. Image Process. 11, 1457–1465 (2002)
  • (18). M.C.J. Christ, R.M.S. Parvathi, Fuzzy c-means algorithm for medical image segmentation, in 3rd International Conference on Electronics Computer Technology (2011), pp. 33–36
  • (19). J. Yan, Remote sensing image segmentation based on ant colony optimized fuzzy C-means clustering. J. Chem. Pharm. Res. 6(6), 2675–2679 (2014)



More Article by Manoj Kumar Pandey

Deep artificial neural network based blind color image watermarking

Digital data is growing enormously as the year passes and therefore there is a need of mechanism to protect the digital contents. image watermarking is one of the important tools f...