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http://dx.doi.org/10.5307/JBE.2013.38.2.149

Multi-Level Thresholding based on Non-Parametric Approaches for Fast Segmentation  

Cho, Sung Ho (Department of Bio-Mechatronic Engineering, College of Biotechnology & Bioengineering, Sungkyunkwan University)
Duy, Hoang Thai (Department of Bio-Mechatronic Engineering, College of Biotechnology & Bioengineering, Sungkyunkwan University)
Han, Jae Woong (Division of Bio-Industry Engineering, Koungju National University)
Hwang, Heon (Department of Bio-Mechatronic Engineering, College of Biotechnology & Bioengineering, Sungkyunkwan University)
Publication Information
Journal of Biosystems Engineering / v.38, no.2, 2013 , pp. 149-162 More about this Journal
Abstract
Purpose: In image segmentation via thresholding, Otsu and Kapur methods have been widely used because of their effectiveness and robustness. However, computational complexity of these methods grows exponentially as the number of thresholds increases due to the exhaustive search characteristics. Methods: Particle swarm optimization (PSO) and genetic algorithms (GAs) can accelerate the computation. Both methods, however, also have some drawbacks including slow convergence and ease of being trapped in a local optimum instead of a global optimum. To overcome these difficulties, we proposed two new multi-level thresholding methods based on Bacteria Foraging PSO (BFPSO) and real-coded GA algorithms for fast segmentation. Results: The results from BFPSO and real-coded GA methods were compared with each other and also compared with the results obtained from the Otsu and Kapur methods. Conclusions: The proposed methods were computationally efficient and showed the excellent accuracy and stability. Results of the proposed methods were demonstrated using four real images.
Keywords
Bacteria foraging; Image segmentation; Multilevel thresholding; Particle swarm optimization; Real-coded genetic algorithm;
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1 Maitra, M and A. Chatterjee. 2008. A hybrid cooperativecomprehensive learning based PSO algorithm for image segmentation using multilevel thresholding, Expert Systems with Applications 34(2):1341-1350.   DOI   ScienceOn
2 Mishra, S. 2005. A hybrid least square-fuzzy bacterial foraging strategy for harmonic estimation, IEEE Transactions on Evolutionary Computation 9(1):61-73.   DOI   ScienceOn
3 Niknam, T and B. Amiri. 2010. An efficient hybrid approach based on PSO, ACO and k-means for cluster analysis. Applied Soft Computing 10:183-197.   DOI   ScienceOn
4 Otsu, N. 1997. A threshold selection method from grey level histogram. IEEE Transactions on Systems, Man, and Cybernetics. SMC-9(1):62-66.
5 Passino, K. M. 2002. Biomimicry of bacterial foraging for distributed optimization and control. Control Systems Magazine. IEEE 22(3):52-67.   DOI
6 Sahoo, P., C. Wilkins and J. Yeager. 1997. Threshold seclection using Renyi's entropy. Pattern Recognition 30(1): 71-84.   DOI   ScienceOn
7 Scheunders, P. 1997. A genetic c-means clustering algorithm applied to color image quantization. Pattern Recognition 30(6):859-866.   DOI   ScienceOn
8 Tao, W. B., J. W. Tian and J. Liu. 2003. Image segmentation by three-level thresholding based on maximum fuzzy entropy and genetic algorithm. Pattern Recognition Letters 24:3069-3078.   DOI   ScienceOn
9 Yin, P. Y. 1999. A fast scheme for optimal thresholding using genetic algorithms. Signal Processing 72:85-95.   DOI   ScienceOn
10 Zahara, E., S. K. S. Fan and D. M. Tsai. 2005. Optimal multi-thresholding using a hybrid optimization approach, Pattern Recognition Letters 26(8):1082-1095.   DOI   ScienceOn
11 Albuquerque, M. P., I. A. Esquef and A. R. G. Mello. 2004. Image thresholding using Tsaillis entropy. Pattern Recognition letters 25(9):1059-1065.   DOI   ScienceOn
12 Barron, U. G and F. Butler. 2006. A comparison of seven thresholding techniques with the k-means clustering algorithm for measurement of bread-crumb features by digital image analysis. Journal of Food Engineering 74:268-278.   DOI   ScienceOn
13 Brink, A. D and N. E. Pendock. 1996. Minimum cross-entropy threshold selection. Pattern Recognition 29(1):179-188.   DOI   ScienceOn
14 Cao, L., P. Bao and Z. Shi. 2008. The strongest schema learning GA and its application to multilevel thresholding. Image and Vision Computing 26:716-724.   DOI   ScienceOn
15 Chengxin, Y., N. Sang and T. Zhang. 2003. Local entropybased transition region extraction and thresholding. Pattern Recognition letters 24:2935-2941.   DOI   ScienceOn
16 Cheng, H. D., J. R. Chen and J. G. Li. 1998. Threshold selection based on fuzzy c-Partition entropy approach. Pattern Recognition 31(7):857-870.   DOI   ScienceOn
17 Das, S., A. Abraham and S. K. Sarkar. 2006. A Hybrid Rough Set-Particle Swarm Algorithm for Image Pixel Classification. Hybrid Intelligent Systems, HIS '06. Sixth International Conference on.
18 Fan, S. K. S and Y. Lin. 2007. A multi-level thresholding approach using a hybrid optimal estimation algorithm. Pattern Recognition Letters 28:662-669.   DOI   ScienceOn
19 Hammouche, K., M. Diaf and P. Siarry. 2008. A multilevel automatic thresholding method based on a genetic algorithm for a fast image segmentation. Computer Vision and Image Understanding 109:163-175.   DOI   ScienceOn
20 Kapur, J. N., P. K. Sahoo and A. K. C. Wong. 1985. A new method for gray level picture thresholding using the entropy of the histogram. Computing Vision Graphics Image Process 29(3):273-285.   DOI   ScienceOn
21 Li, L and D. Li. 2008. Fuzzy entropy image segmentation based on particle swarm optimization. Progress in Natural Science 18:1167-1171.   DOI   ScienceOn
22 Lievers, W. B and A. K. Pilkey. 2004. An evaluation of global thresholding techniques for the automatic image segmentation of automotive aluminum sheet alloys. Materials Science and Engineering A 381:134-142.   DOI   ScienceOn