Color Thresholding Method for Image Segmentation of Natural Images

Full Text (PDF, 394KB), PP.28-34

Views: 0 Downloads: 0

Author(s)

Nilima Kulkarni 1,*

1. New Horizon College of Engineering, Bangalore, India

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2012.01.04

Received: 2 Nov. 2011 / Revised: 24 Nov. 2011 / Accepted: 30 Dec. 2011 / Published: 8 Feb. 2012

Index Terms

Color image segmentation, Color thresholding, Multilevel thresholding, Natural images, RGB color information.

Abstract

Most of the thresholding procedures involved setting of boundaries based on grey values or intensities of image pixels. In this paper, the thresholding is to be done based on color values in natural images. The color thresholding technique is being carried out based on the adaptation and slight modification of the grey level thresholding algorithm. Multilevel thresholding has been conducted to the RGB color information of the object extract it from the background and other objects. Different natural images have been used in the study of color information. The results showed that by using the selected threshold values, the image segmentation technique has been able to separate the object from the background.

Cite This Paper

Nilima Kulkarni,"Color Thresholding Method for Image Segmentation of Natural Images", IJIGSP, vol.4, no.1, pp.28-34, 2012. DOI: 10.5815/ijigsp.2012.01.04 

Reference

[1]ZHANG YU-JIN. Image project (media), image analysis. Beijing. Tsinghua University Press, 2005

[2]H. Cheng, X. Jiang, Y. Sun and J. Wang, Color image segmentation: Advances & prospects, Pat. Rec., Vol. 34, No. 12, pp. 2259-2281, Dec. 2001.

[3]J. Wu, H. Yan, and A. Chalmers, “Color image segmentation using fuzzy clustering and supervised learning”, Journal of Elec. Imag., Vol. 3, No. 4, pp. 397–403, Oct. 1994.

[4]P. Schmid, Segmentation of digitized dermatoscopic images by two-dimensional color clustering, IEEE Trans. on Med. Image., Vol. 18, No.2, pp. 164–171, Feb. 1999.

[5]Daily, M.J., J.G. Harris, K.E. Olin, K. Reiser, D.Y. Tseng, and F.M. Vilnrotter, Knowledge-based Vision Techniques Annual Technical Report. U.S. Army ETL, Fort Belvoir, VA, October, 1987.

[6]Healey, G. and T. Binford, The Role and Use of Color in a General Vision System. Proc. of the DARPA IU Workshop, Los Angeles, CA, pp. 599-613, February, 1987.

[7]GONG Sheng-rong, Digital image processing and analysis. Beijing. Tsinghua Unversity Press, 2005

[8]G.Wyszecki and W.Stiles, Color Science: Concepts and Metheds, Quantitative Data and Formulae, 2nd ed. New York: Wiley, 1982.

[9]H.D. Cheng, X.H. Jiang, Y. Sun, et al. “Color image segmentation: advances and prospects”. Pattern Recognition, 2001, pp. 2259- 2281

[10]Qi Yonghong and Zhou Shshenqi, “Review on Uniform color space and Color Difference Formula”, Print World, 2003.9:16-19.

[11]Gong Y.H, Proietti G. Image indexing and retrieval based on human perceptual color clustering. The international conference on computer vision, Munbai, 1998

[12]S. Wesolkowski, M.E. Jernigan, R.D. Dony, “Comparison of color image edge detectors in multiple color space”. ICIP-2000, pp. 796 – 799

[13]J. Maeda, V.V.Anh,T.Ishizaka and y. suzuki, “ Integration of local fractal dimension and boundary edge in segmenting natural images” , Proc. IEEE Int. Conf. on Image Processing, vol.I, pp.845-848, 1996.

[14]J. Maeda, T. Lizawa, T. Ishizaka, C. Ishikawa and Y. Suzuki, “Segmentation diffusion and linking of boundary edges”, Pattern Recognition, vol.31(12), pp.1993-1999, 1998.

[15]Ye Qixiang, Gao Wen, Wang Weiqiang, Hang Tiejun. “A Color Image Segmentation Algorithm by Using Color and Spatial Information”. Journal of Software. 2004, 15(4):522-530.

[16]Hsin-Chia Chen, Sheng-Jyh Wang. “The use of visible color difference in the quantitative evaluation of color image segmentation”. Vision, image and signal processing, IEEE proceedings. 2006, Vol.153, pp.598 - 609.

[17]R. C. Gonzalez, and R. E. Woods, Digital Image Processing, Second Edition. Pearson Education, 2nd Ed., New Jersey, 2002.

[18]M. Sezgin and B. Sankur, “Survey over image thresholding techniques and quantitative performance evaluation,” Journal of Electronic Imaging, Vol. 13, pp. 146–165, 2004.

[19]N. Efford, Digital Image Processing: a practical introduction using Java. Pearson Education, USA, 2000.

[20]M. G. Forero, F. Sroubek, and G. Cristobal. “Identification of tuberculosis bacteria based on shape and color,” Real-Time Imaging Vol. 10, pp. 251-262, Aug. 2004.

[21]N. Otsu, “A threshold selection method from gray level histograms.,” IEEE Transactions on Systems, Man and Cybernetics, Vol. 9, No. 1, pp. 62-66, 1979.

[22]M. G. Forero, G. Cristobal, and J. A. Borrego, “Automatic identification techniques of tuberculosis bacteria,” in: SPIE Proceedings Of The Applications Of Digital Image Processing XXVI, Vol. 5203, pp. 71-81, 2003.

[23]C. Mancas-Thillou, and B. Gosselin, "Color binarization for complex camera-based images", Proc. of the Electronic Imaging Conference of the International Society for Optical Imaging (SPIE/IS&T), San Jose (California, USA), 2005.

[24]Liu He. Digital Image Processing and Application. Beijing: China Electric Power Press, 2006.

[25]Peck, M.ACell Image Segmentation of Gastric Cancer Based on Region-Growing and Watersheds.. 2002. Quebec City, Que.: Univelt Inc.

[26]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.

[27]Wilson, E., C. Lages, and R. Mah. Improved research for overlapping segmentation based on watershed algorithm. 2002. Tulsa, OK, United States: Institute of Electrical and Electronics Engineers Inc.

[28]A. Mojsilovic and B. Rogowitz, ―Capturing image semantics with low- level descriptors, in ‖Proc. Int. Conf. Image Processing, Thessaloniki, Greece, Oct. 2001, pp. 18–21.

[29]Faisal Shafaita, Daniel Keysersa, Thomas M. Breuelb, "Efficient Implementation of Local Adaptive ThresholdingTechniques Using Integral Images", Proceedings of SPIE, 2008.

[30]Tony F. Chan, Member, IEEE, and Luminita A Vese, "Active Contours Without Edges" IEEE Transaction on Image Processing, pp.267-277,No.2, VoLlO, Feb 2001

[31]Chen Wufan. Wavelet Analysis and Its Application on Image Processing. Beijing:Science Press, 2002.

[32]Huang Daren, Bi Lin, Sun Xin. Multi-band Wavelets Analysis. Hangzhou: Zhejiang University Press, 2001.

[33]Sharon E. Hierarchy and Adaptivity in Segmenting Visual Scenes. Nature, 2006, 442(17):810-813.

[34]Zhang Aihua. The Research of Image Segmentation Based on Fuzzy Clustering [D]. Wuhan: A Dissertation of Huazhong University of Science and Technology, 2004, 1-14.

[35]Zhou Liping, Gao Xinbo. Image Segmentation via Fast Fuzzy C-Means Clustering [J]. Computer Engineering and Application, 2004, 40(8):68-70.