6th International Young Scientist Congress (IYSC-2021) and workshop on Intellectual Property Rights on 8th and 9th May 2021.  10th International Science Congress (ISC-2020) will be Postponed to 8th and 9th December 2021 Due to COVID-19.  International E-publication: Publish Projects, Dissertation, Theses, Books, Souvenir, Conference Proceeding with ISBN.  International E-Bulletin: Information/News regarding: Academics and Research

Scalable Compression Method for Hyperspectral Images

Author Affiliations

  • 1 Department of Information & Communication, Engineering, Anna University Chennai Regional, Center Madurai Madurai, INDIA

Res. J. Engineering Sci., Volume 2, Issue (3), Pages 1-5, March,26 (2013)

Abstract

In this paper, we propose a low complexity compression method to hyperspectral images using distributed source coding (DSC). DCT was applied to the hyperspectral images. Set-partitioning-based approach was utilized to reorganize DCT coefficients into wavelet like tree structure. Cellular automata (CA) for bits and bytes error correcting codes (ECC) to high through put rate. The CA-based scheme can easily be extended for correcting more than two byte errors. Its performance is comparable to that of the DSC scheme based on informed quantization at low bit rate.

References

  1. Abrardo M. Barni, Magli E. and Nencini F., Error resilient and low-complexity onboard lossless compression of hyperspectral images by means of distributed source coding, IEEE Trans. Geosci. Remote Sens., 48(4), 1892–1904 (2010)
  2. Pan W., Zou Y. and Lu A., A compression algorithm of hyperspectral remote sensing image based on 3-D wavelet transform and fractal, in Proc. 3rd Int. Conf. Intell. Syst. Knowl. Eng., Xiamen, China, 1237–1241 (2008)
  3. Zhang J., Li H. and Chen C.W., Progressive distributed coding of multispectral images, in Proc. 5th ICST Mobile Multimedia Commun. Conf., London, U.K., (2009)
  4. Zhang J., Li H. and Chen C.W., Distributed coding techniques for onboard lossless compression of multispectral images, in Proc. ICME, New York, 141–144 (2009)
  5. Jaydeb Bhaumik and Dipanwita Roy Chowdhury,New Architectural Design of CA-Based Codec, IEEE transactions on very large scale integration (VLSI) systems, 18(7)( 2010)
  6. Cheung N.M., Tang C. and Ortega A., Efficient wavelet-based predictive Slepian–Wolf coding for hyperspectral imagery, Signal Process., 86(11), 3180–3195 (2006)
  7. Abrardo, Barni M. and Magli E., Low-complexity lossy compression of hyperspectral images via informed quantization, in Proc. IEEE ICIP, Siena, Italy, 505–508 (2010)
  8. Penna T. Tillo and Magli E., Transform coding techniques for lossy hyperspectral data compression, IEEE Trans. Geosci. Remote Sens., 45(5), 1408–1421 (2007)
  9. Tang Cheung N.M. and Ortega A., Efficient inter-band prediction and wavelet-based compression for hyperspectral imagery: A distributed source coding approach, in Proc. IEEE Data Compression Conf., Los Angeles, CA, 37–446, (2005)
  10. Liu W. and Zeng W., Scalable non-binary distributed source coding using Gray codes, in Proc. IEEE Int. Workshop Multimedia Signal Process., Columbia, MO, 1–4 (2005)
  11. Chen J. and Wu C., An efficient embedded subband coding algorithm for DCT image compression, in Proc. SPIE— Image Compression and Encryption Technologies, 4551, 44–48 (2001)
  12. Varodayan D., Aaron A. and Girod B., Rate-adaptive distributed source coding using low-density parity-check codes, in Proc. 39th Asilomar Conf. Signals, Syst. Compute., Pacific Grove, CA, 1203–1207 (2005)
  13. Gupta Rajani, Mehta Alok K. and Tiwari VebhavVocoder (LPC) Analysis by Variation of Input Parameters andSignals, ISCA Journal of Engineering Science,s1(1),57-61 (2012)
  14. Pooja Malik Puri, Himanshu Khajuria, Biswa Prakash Nayak and Ashish Badiye, “Stereolithography: Potential Applications in Forensic Science”, Research Journal of Engineering Sciences 1(5), 47-50 (2012)
  15. Adedjouma Sèmiyou A., John O.R. Aoga and Mamoud A. Igue, Part-of-Speech tagging of Yoruba Standard, Language of Niger-Congo family, Res. Journal of Computer & IT Sciences ,1(1), 2-5 (2013)
  16. Rangamma M., Mallikarjun Reddy G. and Srikanth Rao P.,Occasionally Weakly Compatible Maps in Fuzzy Metric Spaces, Res. J. Mathematical & Statistical Sciences,1(1),7-13 (2013)