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Joint decision and Naive Bayes learning for detection of space multi-target

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Abstract

In the photoelectric tracking system, the detection of space multi-target is crucial for target localization and tracking. The difficulties include the interferences from CCD smear and strong noise, the few characteristics of spot-like targets and the challenge of multiple targets. In this paper, we propose a hybrid algorithm of joint decision and Naive Bayes (JD-NB) learning, and present the duty ratio feature to discriminate the target and smear blocks. Firstly, we extract the proper features and train the parameters of the Naive Bayes classifier. Secondly, target blocks are preliminarily estimated with the Naive Bayes. Lastly, the 4-adjacent blocks of the candidate target blocks are jointed to analyze the distribution pattern and the true target blocks are secondarily extracted by the method of pattern matching. Experimental results indicate that the proposed JD-NB algorithm not only possesses a high recognition rate of better than 90% for the target block, but also effectively overcomes the disturbance of the smear block. Moreover, it performs well in the detection of small and faint targets when the SNR of the block is higher than about 0.014.

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References

  1. D. J. Russomanno, S. Chari, E. L. Jacobs, and C. Halford: IEEE Sens. J. 10 (2010) 1106.

    Article  Google Scholar 

  2. Y. Zhao: Proc. SPIE 5624 (2005) 686.

    Article  ADS  Google Scholar 

  3. M. Laas-Bourez, D. Coward, A. Klotz, and M. Boër: Adv. Space Res. 47 (2011) 402.

    Article  ADS  Google Scholar 

  4. Y.-Y. Liu, Q.-B. Lu, and W.-X. Zhang: Acta Phys. Sin. 61 (2012) 124201.

    Google Scholar 

  5. N. Baba, H. Tomita, and N. Miura: Opt. Rev. 1 (1994) 308.

    Article  Google Scholar 

  6. D. Wang, T. Zhang, and H. Kuang: Opt. Express 19 (2011) 4868.

    Article  ADS  Google Scholar 

  7. Y. S. Han, E. Choi, and M. G. Kang: IEEE Trans. Consum. Electron. 55 (2009) 2287.

    Article  Google Scholar 

  8. N. Otsu: IEEE Trans. Syst. Man Cybern. 9 (1979) 62.

    Article  Google Scholar 

  9. H. F. Ng: Pattern Recognit. Lett. 27 (2006) 1644.

    Article  Google Scholar 

  10. S. G. Sun, D. M. Kwak, W. B. Jang, and D. J. Kim: IEEE Proc. ISPA 9 (2005) 402.

    Google Scholar 

  11. P. J. Kemper, Jr.: Proc. SPIE 3389 (1998) 84.

    Article  ADS  Google Scholar 

  12. W. He and L. Zhang: Innovative Algorithms Tech. Autom., Ind. Electron. Telecommun. 9 (2007) 493.

    Article  Google Scholar 

  13. Y. Boers, F. Ehlers, W. Koch, T. Luginbuhl, L. D. Stone, and R. L. Streit: EURASIP J. Adv. Signal Process. 2008 (2008) 413932.

    Article  Google Scholar 

  14. W. Yi, L. Kong, and J. Yang: IEEE Proc. CISP 10 (2009) 3769.

    Google Scholar 

  15. R. Succary, A. Cohen, P. Yaractzi, and S. R. Rotman: Proc. SPIE 4473 (2001) 96.

    Article  ADS  Google Scholar 

  16. H. Wu, X. Li, Z. Li, and Y. Chen: Adv. Neural Networks 3972 (2006) 442.

    Google Scholar 

  17. M. V. Shirvaikar and M. M. Trivedi: IEEE Trans. Neural Networks 6 (1995) 252.

    Article  Google Scholar 

  18. T. M. Mitchel: Machine Learning (McGraw-Hill, New York, 1997).

    Google Scholar 

  19. P. Domingos and M. Pazzani: Mach. Learn. 29 (1997) 103.

    Article  MATH  Google Scholar 

  20. F. Hroch: Exp. Astron. 9 (1999) 251.

    Article  ADS  Google Scholar 

  21. M. K. Hu: IEEE Trans. Inf. Theory 8 (1962) 179.

    MATH  Google Scholar 

  22. Q. Yang: IEEE Proc. CMSP 5 (2011) 239.

    Google Scholar 

Download references

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Correspondence to Tao Huang.

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Huang, T., Li, Z., Zhou, Y. et al. Joint decision and Naive Bayes learning for detection of space multi-target. OPT REV 21, 429–439 (2014). https://doi.org/10.1007/s10043-014-0067-0

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  • DOI: https://doi.org/10.1007/s10043-014-0067-0

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