- G. W. Stimson, âIntroduction to Airborne Radarâ; Mendham
- New Jersey,1998.
- G. Franceschetti, R. Lanari; âSynthetic. Aperture Radar
- Processingâ, published by CRC Press, 1999.
- A. I. Mohungoo, âAn Airborne SAR Receiver Design and
- Implementationâ; University of Cape Town, 2004.
- D. G. Coetzer, âDesign and Implementation of a X-band
- Transmitter and Frequency Distribution Unit for a Synthetic
- Aperture Radarâ; Masters thesis, University of Cape Town,
-
- M. Y. Chua and V. C. Koo, âFpga-based chirp generator for
- high resolution uav SARâ, Progress In Electromagnetics
- Research; Faculty of Engineering and
- Technology,Multimedia University,Jalan Ayer Keroh Lama,
- Melaka 75450, Malaysia, 2009.
- R. C. Gonzalez and R. E. Woods, âDigital Image Processing
- (2nd ed.), Prentice-Hall, 2003.
- J. B. MacQueen; âSome Methods for classification and
- Analysis of Multivariate Observationsâ; Proceedings of 5-th
- Berkeley Symposium on Mathematical Statistics and
- Probability, Berkeley, University of California Press, 1967,
- -297.
- E. Alpaydin, âIntroduction to Machine Learningâ; the MIT
- Press, 2004.
- J. Sander, âPrinciples of Knowledge Discovery in Data:
- Clustering Iâ; Department of Computing Science University
- of Alberta, Tutorial Slides, 2003.
- M. Halkidi, Y. Batistakis and M. Vazirgiannis; âOn
- Clustering Validation Techniquesâ, Journal of Intelligent
- Systems, vol. 17:2/3, pp 107-145, 2001.
- R. Duda, P. Hart; âPattern Classification and Scene
- Analysisâ; John Wiley & Sons, 1973.
- G. E. Tsekouras and H. Sarimveis; âA New Approach for
- Measuring the Validity of the Fuzzy C-Means Algorithmâ,
- Advances in Engineering Software, vol. 35, pp. 567â575,
-
- N. Zahid, M. Limouri and A. Essaid, âA New Cluster-
- Validity for Fuzzy Clusteringâ, Pattern Recognition , vol. 32,
- pp. 1089-1097, 1999.
- J. Kennedy and R. Eberhart, âParticle Swarm Optimizationâ;
- Proceedings of IEEE International Conference on Neural
- Networks, pp. 1942â1948, 1995.
- Y. Zhang and S.Wang, âPathological Brain Detection in
- Magnetic Resonance Imaging Scanning by Wavelet Entropy
- and Hybridization of Biogeography-based Optimization and
- Particle Swarm Optimizationâ. Progress in Electromagnetics
- Research, Pier, vol. 152, pp. 41â58, 2015.
- R. C. Eberhart and Y. Shi, âComparing inertia weights and
- constriction factors in particle swarm optimizationâ. Proc.
- Congress on Evolutionary Computation 2000, San Diego,
- CA, pp. 84-88, 2000.
- Y. Shi and R. C. Eberhart, âA Modified Particle Swarm
- Optimizerâ, IEEE International Conference of Evolutionary
- Computation, Anchorage, Alaska, May 1998.
- A. Salman M. Omran and A. Engelbrecht; âImage
- classification using particle swarm optimizationâ, in
- Conference on Simulated Evolution and Learning,
- Singapore, vol. 1, pp. 370â374, 2002.
- X. Cui, T. E. Potok, and P. Palathingal, âDocument
- Clustering using Particle Swarm Optimizationâ , Applied
- Software Engineering Research Group Computational
- Sciences and Engineering Division Oak Ridge National
- Laboratory, IEEE International Conference , 2005.
- R. G. Congalton, R. G. Oderwald, and R. A. Mead,
- âAssessing Landsat classification accuracy using discrete
- multivariate statistical techniquesâ; Photogramm. Eng.
- Remote Sens, 1983, 1671-1678.
- T. Blackwell and J. Branke, and X. Li, âParticle swarms for
- Dynamic optimization problems Swarm Intelligenceâ;
- Springer Berlin Heidelberg, pp. 193-217, 2008.
- Y. Mimoun and F. Benhamida, âGenetic Algorithm-Particle
- Swarm Optimization (GA-PSO) for Economic Load
- Dispatchâ; p. 369, 2011.
- D. H. Kim; âImprovement of Genetic Algorithm Using PSO
- and Euclidean Data Distanceâ; intjit.org, Special Issue on
- Intelligent Computing, vol. 12, pp.142â148, 2006.
|