Research on Nondestructive Image Compression Technology Based on Genetic Algorithm

Article Preview

Abstract:

Based on nondestructive and block iteration function the characteristics of the system, and put forward a kind of improved the global optimal solution from similar partition adaptive genetic algorithm is proposed. In the algorithm for the father the searching space of the individual pieces by gray coding method; Definition of father and son of minimum error for the match fitness function; Genetic algorithm is put forward the improvement of the linear adaptive crossover and mutation probability; Take excellent protection strategy choice. The experimental results show that this method in the similar image guarantee the quality and the compression ratio decompression also can obviously reduce compressed time, effectively improve the searching efficiency.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

789-794

Citation:

Online since:

February 2012

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2012 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] SRINIVASM,PATNAIK LM. Adaptive probabilities of crossover and mutution in genetic algorithms[J]. IEEE Trans on Syst Man and Cybemetics, 2010, 24(4): 342-352.

Google Scholar

[2] HUTCHINSON JE. Fractals and Self Sinilarity[J]. Indian University Mathematics Journal, 2009, 3(5): 713-747.

Google Scholar

[3] KIM T. VAN DYCK RE, MILLER DJ. Hybrid fractal zerotree wavelet image coding[J]. Signal Processing Image Communication, 2009, 17(4): 347-360.

DOI: 10.1016/s0923-5965(02)00003-6

Google Scholar

[4] BarnsIey M F. Iterated Function Systems and the GIobaI Construction of FractaIs[C]. London:Proc. of Roy. Soc. ,2009. 243-275.

Google Scholar

[5] JacguinA E. A NoveI FractaI BIock-coding Technigue for Digital Image[C]. Proceedings of ICASSP IEEE InternationaI Conference onASSP,2008. 2225-2228.

Google Scholar

[6] Austin DonneIIy. Ethernet TopoIogy Discovery withoutNetwork Assistance[C]. Proceedings of the 12th IEEE International Conference on Network ProtocoIs,2010: 328-339.

Google Scholar

[7] NALINI K. RATHA,SHAOYN CHEN and ANIL K. JAIN[C]. Adaptive Flow Orientation Based Feature Extraction InFingerprint Images. Pattern Recognition,2010: 1153-1157.

DOI: 10.1016/0031-3203(95)00039-3

Google Scholar

[8] D.K. Isenor and S.G. ZAKY. Fingerprint Identification UsingGraph Matching[C]. Pattern Recognition. 2006: 3205-3208.

Google Scholar

[9] B. Moayer and K.S. Fu. A tree System Approach for Fingerprint[C]. Pattern Recognition,IEEE Trans. Pattern Ana1. Mach. 2009: 457-459.

DOI: 10.1109/tpami.1986.4767798

Google Scholar