TEXTURE CLUSTERING OF SATELLITE IMAGES USING SELF-ORGANIZING NEURAL NETWORK
DOI:
https://doi.org/10.47839/ijc.7.3.519Keywords:
Self-organizing neural network, clustering, texture, remote sensing dataAbstract
The goal of this paper is to present a texture clustering system for remote sensing image data. Texture information is useful for image data browsing and retrieval. Authors present the results of self-organizing neural network design for solving the clustering task of gray scale remote sensing image data. The architecture of neural network and the learning algorithms for this network such as: algorithm WTA (Winner Takes All), algorithm CWTA (Winner Takes All with Conscience) and classic Kohonen algorithm WTM (Winner Takes Most - the Winner receives more) are considered. Some experimental results using textures of the Brodatz album, multi-spectral and radar images are also represented.References
M.M. Lukashevich, R.Kh. Sadykhov. Synthesis of a Self-Organizing Neural Network in a Problem of Clustering of Gray Level Remote Sensing Image Data. Proceedings of the Fifth International Conference “Neural Networks and Artificial Intelligence” (ICNNAI’2008), Minsk, Belarus 27-30 May 2008, pp. 306-309.
R.Kh. Sadykhov, M.M. Lukashevich. The Algorithm to Process the Earth Images on the Base of the Energetical Texture Features. (in Russian). Proceedings of the Belarussian Space Congress, Minsk, Belarus 23-25 October 2007, pp. 144-148.
S. Osowski. Neural networks for information processing (in Russian). Finances and statistics. Moscow, 2002. – p. 344.
S. Haykin. Neural Networks: A Comprehensive Foundation (2nd Edition) (in Russian). Publishing house “Vil’yams”. Moscow, 2006. – p. 1104.
V.A. Golovko. Neural networks: learning, organization and application: train aid for the higher institutes. IPRZHR. Moscow, 2001. – p. 256.
J. Ven Rayzin. Classification and cluster (in Russian). Mir. Moscow, 1980. – p. 389.
E. Khant. Artificial intelligence (in Russian). Mir. Moscow, 1978. – p. 558.
D. Hebb. Organization of behavior. J. Wiley. New York, 1949. – p. 335.
J. Hertz, A. Krogh, R. Palmer. Introduction to the theory of neural computation. Addison-Wesley. New York, 1991. – p. 327.
T. Kohonen. Self-organization and associative memory. Springer-Verlag. New York, 1989. – p. 312.
T. Kohonen. Self-organized formation of topologically correct feature maps, Biol. Cybernetics 43 (1982). p. 56-69.
T. Kohonen. Self-organizing maps (2-nd edition). Springer. Berlin, 1997. – p. 426.
T. Kohonen, Self-Organizing maps (3rd edition), vol. 30. Springer. Berlin, Heidelberg, 2001. – p. 501.
R.Kh. Sadykhov, M.E. Vatkin. Algorithm of gray scale images processing of integral microcircuits based on the “Neokognitron” neural network. Digital image processing. Collected scientific papers, Number 5. Minsk, 2001. – p. 68-75.
A.V. Zamyatin. Using of artificial neural networks for multi-spectral aerospace images classification. Proceedings of the VI all-russian scientific practical conference, Moscow 2004, – p. 239-246.
M.M. Lukashevich, R.Kh. Sadykhov The Algorithm of Texture Segmentation with the Use Energetical Characteristics. (in Russian) BSUIR Reports 6 (36) Minsk (2008). – pp. 109-116.
M. Tuceryan, A.K. Jain. Texture Analysis. The handbook of Pattern Recognition and Computer Vision (2nd Edition). World Scientific Publishing Co. Singapore, 1998. – p. 207–248.
A. Materka, M. Strzelecki. Texture Analysis Methods – A Review. Technical University of Lodz, Institute of Electronics, COST B11 report. Brussels, 1998. – p. 33.
L.G. Shapiro, G.C. Stockman. Computer Vision(in Russian). BINOM. Moscow, 2006. – p. 752.
R. Sadykhov, M. Lukashevich. Texture Segmentation Of Satellite Images By Neural Network Approach. Proceedings of the Second International Conference “Problem of Cybernetics and Informatics (PCI’2008)”, Baku, Azerbaijan 10-12 September 2008, – pp. 167-170.
Downloads
Published
How to Cite
Issue
Section
License
International Journal of Computing is an open access journal. Authors who publish with this journal agree to the following terms:• Authors retain copyright and grant the journal right of first publication with the work simultaneously licensed under a Creative Commons Attribution License that allows others to share the work with an acknowledgement of the work's authorship and initial publication in this journal.
• Authors are able to enter into separate, additional contractual arrangements for the non-exclusive distribution of the journal's published version of the work (e.g., post it to an institutional repository or publish it in a book), with an acknowledgement of its initial publication in this journal.
• Authors are permitted and encouraged to post their work online (e.g., in institutional repositories or on their website) prior to and during the submission process, as it can lead to productive exchanges, as well as earlier and greater citation of published work.