Vol. 1
Latest Volume
All Volumes
PIERB 109 [2024] PIERB 108 [2024] PIERB 107 [2024] PIERB 106 [2024] PIERB 105 [2024] PIERB 104 [2024] PIERB 103 [2023] PIERB 102 [2023] PIERB 101 [2023] PIERB 100 [2023] PIERB 99 [2023] PIERB 98 [2023] PIERB 97 [2022] PIERB 96 [2022] PIERB 95 [2022] PIERB 94 [2021] PIERB 93 [2021] PIERB 92 [2021] PIERB 91 [2021] PIERB 90 [2021] PIERB 89 [2020] PIERB 88 [2020] PIERB 87 [2020] PIERB 86 [2020] PIERB 85 [2019] PIERB 84 [2019] PIERB 83 [2019] PIERB 82 [2018] PIERB 81 [2018] PIERB 80 [2018] PIERB 79 [2017] PIERB 78 [2017] PIERB 77 [2017] PIERB 76 [2017] PIERB 75 [2017] PIERB 74 [2017] PIERB 73 [2017] PIERB 72 [2017] PIERB 71 [2016] PIERB 70 [2016] PIERB 69 [2016] PIERB 68 [2016] PIERB 67 [2016] PIERB 66 [2016] PIERB 65 [2016] PIERB 64 [2015] PIERB 63 [2015] PIERB 62 [2015] PIERB 61 [2014] PIERB 60 [2014] PIERB 59 [2014] PIERB 58 [2014] PIERB 57 [2014] PIERB 56 [2013] PIERB 55 [2013] PIERB 54 [2013] PIERB 53 [2013] PIERB 52 [2013] PIERB 51 [2013] PIERB 50 [2013] PIERB 49 [2013] PIERB 48 [2013] PIERB 47 [2013] PIERB 46 [2013] PIERB 45 [2012] PIERB 44 [2012] PIERB 43 [2012] PIERB 42 [2012] PIERB 41 [2012] PIERB 40 [2012] PIERB 39 [2012] PIERB 38 [2012] PIERB 37 [2012] PIERB 36 [2012] PIERB 35 [2011] PIERB 34 [2011] PIERB 33 [2011] PIERB 32 [2011] PIERB 31 [2011] PIERB 30 [2011] PIERB 29 [2011] PIERB 28 [2011] PIERB 27 [2011] PIERB 26 [2010] PIERB 25 [2010] PIERB 24 [2010] PIERB 23 [2010] PIERB 22 [2010] PIERB 21 [2010] PIERB 20 [2010] PIERB 19 [2010] PIERB 18 [2009] PIERB 17 [2009] PIERB 16 [2009] PIERB 15 [2009] PIERB 14 [2009] PIERB 13 [2009] PIERB 12 [2009] PIERB 11 [2009] PIERB 10 [2008] PIERB 9 [2008] PIERB 8 [2008] PIERB 7 [2008] PIERB 6 [2008] PIERB 5 [2008] PIERB 4 [2008] PIERB 3 [2008] PIERB 2 [2008] PIERB 1 [2008]
2007-11-06
A SAR Autofocus Algorithm Based on Particle Swarm Optimization
By
Progress In Electromagnetics Research B, Vol. 1, 159-176, 2008
Abstract
In synthetic aperture radar (SAR) processing, autofocus techniques are commonly used to improve SAR image quality by removing its residual phase errors after conventional motion compensation. This paper highlights a SAR autofocus algorithm based on particle swarm optimization (PSO). PSO is a population-based stochastic optimization technique based on the movement of swarms and inspired by social behavior of bird flocking or fish schooling. PSO has been successfully applied in many different application areas due to its robustness and simplicity [1-3]. This paper presents a novel approach to solve the low-frequency high-order polynomial and highfrequency sinusoidal phase errors. The power-to-spreading noise ratio (PSR) and image entropy (IE) are used as the focal quality indicator to search for optimum solution. The algorithm is tested on both simulated two-dimensional point target and real SAR raw data from RADARSAT-1. The results show significant improvement in SAR image focus quality after the distorted SAR signal was compensated by the proposed algorithm.
Citation
Tien Sze Lim, Voon Koo, Hong-Tat Ewe, and Hean-Teik Chuah, "A SAR Autofocus Algorithm Based on Particle Swarm Optimization," Progress In Electromagnetics Research B, Vol. 1, 159-176, 2008.
doi:10.2528/PIERB07102501
References

1. Naka, S., T. Genji, T. Yura, and Y. Fukuyama, "A hybrid particle swarm optimization for distribution state estimation," IEEE Trans. Power Syst., Vol. 18, 60-68, 2003.
doi:10.1109/TPWRS.2002.807051

2. Gaing, Z., "A particle swarm optimization approach for optimum design of PID controller in AVR system," IEEE Trans. Energy Conv., Vol. 19, 384-391, 2004.
doi:10.1109/TEC.2003.821821

3. Cui, S. and D. S. Weile, "Application of a parallel particle swarm optimization scheme to the design of electromagnetic absorbers," IEEE Trans. Antennas Propag., Vol. 53, No. 11, 384-391, 2005.
doi:10.1109/TAP.2005.858866

4. Lim, T. S., V. C. Koo, H. T. Ewe, and H. T. Chuah, "High-frequency phase error reduction in SAR using particle swarm optimization," Journal of Electromagnetic Waves and Applications, Vol. 21, No. 6, 795-810, 2007.
doi:10.1163/156939307780749110

5. Mancill, C. E. and J. M. Swiger, "A mapdrift autofocus technique for correcting higher order SAR phase errors," 27th Annual Tri-Service Radar Symposium Record, 391-400, Monterey, CA, 1981.

6. Jakowatz, C. V. and D. E. Wahl, "Eigenvector method for maximum-likelihood estimation of phase errors in synthetic aperture radar imagery," Optics Letters, Vol. 10, No. 12, 2539-2546, 1993.

7. Wahl, D. E., P. H. Eichel, D. C. Ghiglia, and C. V. Jakowatz, "Phase gradient autofocus ---A robust tool for high resolution SAR phase correction," IEEE Transactions on Aerospace and Electronic System, Vol. 30, No. 3, 827-835, 1994.
doi:10.1109/7.303752

8. Koo, V. C., Y. K. Chan, V. Gobi, T. S. Lim, B. K. Chung, and H. T. Chuah, "The MASAR project: Design and development," Progress In Electromagnetics Research, Vol. 50, 279-298, 2005.
doi:10.2528/PIER04071201

9. Carrara, W. G., R. S. Goodman, and R. M. Majewski, Spotlight Synthetic Aperture Radar: Signal Processing Algorithms, Chapter 5, 203-243, Artech House, 1995.

10. Kennedy, J. and R. C. Eberhart, "Particle swarm optimization," Proc. IEEE International Conference on Neural Networks, Vol. 4, 1942-1948, 1995.
doi:10.1109/ICNN.1995.488968

11. Koo, V. C., T. S. Lim, M. C. Rao, and H. T. Chuah, "A GA-based autofocus technique for correcting high-frequency SAR phase error," Journal of Electromagnetic Waves and Applications, Vol. 18, No. 6, 781-795, 2004.
doi:10.1163/156939304323105862

12. Koo, V. C., Y. K. Chan, and H. T. Chuah, "Multiple phase difference method for real-time SAR autofocus," Journal of Electromagnetic Waves and Applications, Vol. 20, No. 3, 375-388, 2006.
doi:10.1163/156939306775701713

13. Nikhil, P. R. and P. K. Sankar, "Entropy: A new definition and its applications," IEEE Trans. on System, Man and Cybernetics, Vol. 21, No. 5, 1260-1270, 1991.
doi:10.1109/21.120079

14. Cumming, I. G. and F. H. Wong, Digital Processing of Synthetic Aperture Radar Data, Artech House Inc., 2005.

15. Clerc, M. and J. Kennedy, "The particle swarm --- Explosion, stability, and convergence in a multidimensional complex space," IEEE Trans. Evol. Comput., Vol. 6, No. 1, 58-73, 2002.
doi:10.1109/4235.985692