Open Access Open Access  Restricted Access Subscription or Fee Access

Interactive Image Retrieval using Genetic Algorithm and Orthogonal Moments

J.P. Ananth, Dr.V. Subbiah Bharathi

Abstract


Image Retrieval is a field of study concerned with searching and retrieving images from a collection of database. The user participation in image retrieval system gains attention in the recent research in order to reduce the impact of completely depending on discrimination power of image features. In this proposed work, interactive genetic algorithm is employed where user selects one of the retrieved images for the next stage of mutation. Moreover, dual Hahn moments employed in this work, which are orthogonal and rotation invariants are effective image descriptors. Experiments were carried out on COREL images and the average retrieval rate of 88% reveals the efficacy of the proposed work.

Keywords


Moment Features, Image Retrieval, Genetic Algorithm

Full Text:

PDF

References


M. Stricker, and M. Orengo, "Similarity of color images," SPIE: Storage Retrieval Image and Video Database III, Vol. 2420, pp. 381-392, February, 1995.

C. C. Chang and Y. K. Chan, "A Fast Filter for Image Retrieval Based on Color Features," SEMS2000, Baden-Baden, German, pp. 47-51, 2000.

J. M. Fuertes, M. Lucena, N. Peres de la Blanca and J. Chamorro-Martinez, "A Scheme of Color Image Retrieval From Databases," Pattern Recognition, Vol. 22, No. 3, pp. 323-337, 2001.

Y. D. Chun, S. Y. Seo, and N. C. Kim, "Image Retrieval Using BDIP and BVLC Moments," IEEE Transactions on Circuits and Systems for Video Technology, Vol. 13, Issue 9, pp. 951-957, 2003.

H. Nezamabadi-Pour and E. Kabir, "Image Retrieval Using Histograms of Uni-color and Bi-color Blocks and Directional Changes in Intensity Gradient", Pattern Recognition Letters, Vol. 25, Issue 14, pp.1547-1557, 2004.

Y. K. Chan and C. Y. Chen, "Image Retrieval System Based on Color-Complexity and Color-Spatial Features," The Journal of Systems and Software, Vol. 71, Issue 1-2, pp. 65-70, 2004.

B. C. Ko, and H. Byun, "FRIP: A Region-Based Image Retrieval Tool Using Automatic Image Segmentation and Stepwise Boolean AND Matching," IEEE Transactions on multimedia, Vol. 7, No. 1, pp. 105-113, 2005.

Rui Min, H.D. Cheng, "Effective image retrieval using dominant color descriptor and fuzzy support vector Machine," Pattern Recognition, Vol. 42, pp. 147 – 157, 2009.

P. W. Huang, and S. K. Dai, "Image Retrieval by Texture Similarity," Pattern Recognition, Vol. 36, No. 3, pp. 665-679, 2003.

S. Liapis, and G. Tziritas "Color and Texture Image Retrieval Using Chromaticity Histograms and Wavelet Frames," IEEE Transactions on Multimedia, Vol. 6, No. 5, pp. 676-686, 2004.

N. Jhanwar, S. Chaudhurib, G. Seetharamanc, and B. Zavidovique, "Content Based Image Retrieval Using Motif Co-occurrence Matrix," Image and Vision Computing, Vol. 22, pp. 1211-1220, 2004.

H. Abrishami Moghaddam, T.Taghizadeh Khajoie, A.H. Rouhi, and M. Saadatmand Tarzjan, "Wavelet correlogram: A new approach for image

indexing and retrieval," Pattern Recognition, Vol. 38, pp. 2506-2518, 2005.

SitaoWu, M.K.M. Rahman and Tommy W.S.Chow, "Content-based image retrieval using growing hierarchical self-organizing quadtree map," Pattern Recognition, Vol. 38, pp. 707-722, 2005.

Adel Hafiane, Bertrand Zavidovique, "Local relational string and mutual matching for image retrieval," Information Processing and Management, Vol. 44, pp. 1201–1213, 2008.

Guang-Hai Liu, Jing-Yu Yang, "Image retrieval based on the texton co-occurrence matrix," Pattern Recognition, Vol. 41, pp. 3521 – 3527, 2008.

V. N. Gudivada, and V. V. Raghavan, "Design and Evaluation of Algorithms for Image Retrieval by Spatial Similarity," ACM Transactions on Information Systems (TOIS), Vol. 13, No. 2, pp. 115-144, 1995

X. B. Dai, H. Z. Shu, L. M. Luo, G. N. Han and J. L. Coatrieux, Reconstruction of tomographic images from limited range projections using discrete Radon transform and Tchebichef moments, Patt. Recogn. 43 (2010) pp. 1152-1164.

R. Mukundan, Fast computation of geometric moments and invariants using Schlick's approximation, Int. J. Patt. Recogn. Artif. Intell. 22 (2008) pp.1363-1377

G. A. Papakostas, E. G. Karakasis and D. E. Koulouriotis, Novel moment invariants for improved classi¯cation performance in computer vision applications, Patt. Recogn. 43 (2010) pp. 58-68.

B. Wang and Y. Q. Chen, An invariant shape representation: Interior angle chain, Int. J. Patt. Recogn. Artif. Intell. 21 (2007) pp.543-559.

F. Zhang, S.-Q. Liu, D.-B. Wang and W. Guan, Aircraft recognition in infrared image using wavelet moment invariants, Imag. Vis. Comput. 27 (2009) pp.313-318.

J. Žunić, K. Hirota and P. L. Rosin, A Hu moment invariant as a shape circularity measure, Patt. Recogn. 43 (2010) pp.47-57.

M. R. Teague, Image analysis via the general theory of moments, J. Opt. Soc. Amer. 70 (1980) pp. 920-930

Yin, J.H., Pierro, A.R.D., Wei, M., 2002. Analysis for the reconstruction of a noisy signal based on orthogonal moments. Appl. Math. Comput. 132 (2), pp.249–263.

Mukundan, R., Ong, S.H., Lee, P.A., 2001b. Image analysis by Tchebichef moments. IEEE Trans. Image Process. 10 (9), pp.1357–1364.

Mandal, M.K., Aboulnasr, T., Panchanathan, S., 1996. Image indexing using moments and wavelets. IEEE Trans. Consumer Electron. 42 (3), 557–565

Kiryati, N., Bruckstein, A.M., Mizrahi, H., 2000. Comments on: Robust line fitting in a noisy image by the method of moments. IEEE Trans. Pattern Anal. Machine Intell. 12 (11), 1340–1341.

Qing, C., Emil, P., Xiaoli, Y., 2004. A comparative study of Fourier descriptors and Hu’s seven moment invariants for image recognition. Canadian Conf. Electrical Comput. Eng. 1 (2–5), pp. 103–106

Alvarez-Nodarse, R., Smirnov, Y.F., 1996. The dual Hahn q-polynomials in the lattice x(s) = [s]q[s + 1]q and the q-algebras SUq(2) and SUq(1, 1).

Bing Wang, Xin Zhang, Miao Wang, and Pu Zhao, Saliency Distinguishing and applications to semantics extraction and retrieval of Natural image. Proc. Of the Ninth IEEE Int. Conf. on Machine learning and Cybernetics, Qingdao (July 2010)


Refbacks

  • There are currently no refbacks.


Creative Commons License
This work is licensed under a Creative Commons Attribution 3.0 License.