Image Matching Using a Bat Algorithm with Mutation

Article Preview

Abstract:

Due to shortcoming of traditional image matching for computing the fitness for every pixel in the searching space, a new bat algorithm with mutation (BAM) is proposed to solve image matching problem, and a modification is applied to mutate between bats during the process of the new solutions updating. This new approach can accelerate the global convergence speed while preserving the strong robustness of the basic BA. The realization procedure for this improved meta-heuristic approach BAM is also presented. To prove the performance of this proposed meta-heuristic method, BAM is compared with BA and other population-based optimization methods, DE and SGA. The experiment shows that the proposed approach is more effective and feasible in image matching than the other model.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

88-93

Citation:

Online since:

October 2012

Export:

Price:

[1] Information on http: /www. cim. mcgill. ca/~dparks/CornerDetector/index. htm.

Google Scholar

[2] Y.S. Zhu and C.M. Guo: The Research of correlation Matching Algorithm Based on Correlation Coefficient. Signal Process. Vol. 19 (2003), pp.531-534.

Google Scholar

[3] T.H. Chen, J. Hung and F.J. Shiou: A GA-based image alignment approach for tissue image matching. Sci. Res. Essays Vol. 6 (2005), p.304–309.

Google Scholar

[4] M. Salomon, G.R. Perrin and F. Heitz: Differential Evolution for Medial Image Registration. in: International Conference on Artificial Intelligence, Las Vegas, USA, 2001, p.201–207.

Google Scholar

[5] F. Liu, H.B. Duan and Y. M Deng: A chaotic quantum-behaved particle swarm optimization based on lateral. Optik, (2012) in press.

DOI: 10.1016/j.ijleo.2011.09.052

Google Scholar

[6] R. Storn, K. Price, Differential evolution - a simple and efficient adaptive scheme for global optimization over continuous space, Technical Report, International Computer Science Institute, Berkley, (1995).

Google Scholar

[7] R. Storn, K. Price, Differential evolution-a simple and efficient heuristic for global optimization over continuous spaces, Journal of Global Optimization 11 (4) (1997) 341–359.

DOI: 10.1023/a:1008202821328

Google Scholar

[8] X.S. Yang, A new metaheuristic bat-inspired algorithm, in: Nature Inspired Cooperative Strategies for Optimization (NISCO 2010), Studies in Computational Intelligence, Vol. 284, 2010, pp.65-74, Springer Berlin.

DOI: 10.1007/978-3-642-12538-6_6

Google Scholar

[9] J.D. Altringham, Bats: Biology and Behaviour, Oxford Univesity Press, Oxford, (1996).

Google Scholar

[10] R.S. Parpinelli, H.S. Lopes, New inspirations in swarm intelligence: a survey, Int. J. Bio-Inspired Computation, 3(2011)1-16.

DOI: 10.1504/ijbic.2011.038700

Google Scholar

[11] P.W. Tsai, J.S. Pan, B.Y. Liao, M.J. Tsai, V. Istanda, Bat algorithm inspired algorithm for solving numerical optimization problems, Applied Mechanics and Materials, 148-149(2012) 134-137.

DOI: 10.4028/www.scientific.net/amm.148-149.134

Google Scholar

[12] S. Kirkpatrick, C.D. Gelatt, M.P. Vecchi, Optimization by simulated annealing, Science, 220(1983) 671–680.

DOI: 10.1126/science.220.4598.671

Google Scholar

[13] W. Khatib, P. Fleming, The stud GA: a mini revolution?, in Parallel Problem Solving from Nature, A. Eiben, T. Back, M. Schoenauer, H. Schwefel, Springer, New York, (1998).

Google Scholar