Fractal Images Compressing by Estimating the Closest Neighborhood with Using of Schema Theory

Problem statement: One of the methods used for compressing images and especially natural images is by benefiting from fractal features of images. Natural images have properties like Self-Similarity that can be used in image compressing. The basic approach in compressing methods is based on the fractal features and searching the best replacement block for the original image. Approach: In this research with this attitude that the best blocks are the neighborhood blocks, we tried to find the best neighbor blocks; this search process was improved by using genetic algorithms and Schema theory. Compressing images can be considered from three approaches, first the speed of compressing, second: quality of image after Decompressing and the third: Compressing rate. In this research in addition to reducing time for compressing, the desired quality and rate of compressing were also obtained. Results: Totally genetic algorithm increase the speed of convergence for reaching the best block, but using this human knowledge that neighbor blocks always have the best chance to be replaced, were included in genetic algorithms first through neighborhood and then schema theory and this significantly decrease the time for producing a compressed images. Conclusion: Using this algorithms show the improvement in fractal compressing images comparing to other technique in compress ratio, time complexity and quality of final image parameters.

[1]  Jinshu Han Fast Fractal Image Compression Using Fuzzy Classification , 2008, 2008 Fifth International Conference on Fuzzy Systems and Knowledge Discovery.

[2]  Y. Fisher Fractal image compression: theory and application , 1995 .

[3]  B. Aoued Accelerating fractal image compression by domain pool reduction, adaptive partitioning and structural block classification , 2004 .

[4]  Michael F. Barnsley,et al.  Fractals everywhere , 1988 .

[5]  Arnaud E. Jacquin,et al.  Image coding based on a fractal theory of iterated contractive image transformations , 1992, IEEE Trans. Image Process..

[6]  Ming-Sheng Wu,et al.  Schema genetic algorithm for fractal image compression , 2007, Eng. Appl. Artif. Intell..

[7]  Mahdi Jampour,et al.  Compressing Images Using Fractal Characteristics by Estimating the Nearest Neighbor , 2009, 2009 Sixth International Conference on Information Technology: New Generations.

[8]  Qiang Wu,et al.  A New Approach for Fractal Image Compression on a Virtual Hexagonal Structure , 2006, 18th International Conference on Pattern Recognition (ICPR'06).

[9]  M. Yaghoobi,et al.  Compressing of Fingerprint Images by Means of Fractals Feature , 2009, 2009 Second International Conference on Machine Vision.

[10]  Trieu-Kien Truong,et al.  A fast encoding algorithm for fractal image compression using the DCT inner product , 2000, IEEE Trans. Image Process..

[11]  Cangju Xing,et al.  A Hierarchical Classification Matching Scheme for Fractal Image Compression , 2008, 2008 Congress on Image and Signal Processing.

[12]  V.R. Prasad,et al.  Adaptive Gray Level Difference to Speed Up Fractal Image Compression , 2007, 2007 International Conference on Signal Processing, Communications and Networking.

[13]  Lyman P. Hurd,et al.  Fractal image compression , 1993 .

[14]  Suman K. Mitra,et al.  Technique for fractal image compression using genetic algorithm , 1998, IEEE Trans. Image Process..