Table of Contents Author Guidelines Submit a Manuscript
International Journal of Antennas and Propagation
Volume 2015 (2015), Article ID 769478, 12 pages
http://dx.doi.org/10.1155/2015/769478
Research Article

Enhancing Image Denoising Performance of Bidimensional Empirical Mode Decomposition by Improving the Edge Effect

1School of Computer and Communication Engineering, University of Science and Technology Beijing, Beijing 100083, China
2Department of Civil Engineering, North China Institute of Science and Technology, Yanjiao, Beijing 101601, China
3School of Government, Central University of Finance and Economics, Beijing 100081, China

Received 20 April 2015; Accepted 31 August 2015

Academic Editor: Atsushi Mase

Copyright © 2015 Feng-Ping An et al. This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Linked References

  1. U. Diewald, S. Morigi, and M. Rumpf, “A cascadic geometric filtering approach to subdivision,” Computer Aided Geometric Design, vol. 19, no. 9, pp. 675–694, 2002. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  2. J.-L. Starck, E. J. Candès, and D. L. Donoho, “The curvelet transform for image denoising,” IEEE Transactions on Image Processing, vol. 11, no. 6, pp. 670–684, 2002. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  3. R. Yan, L. Shao, and Y. Liu, “Nonlocal hierarchical dictionary learning using wavelets for image denoising,” IEEE Transactions on Image Processing, vol. 22, no. 12, pp. 4689–4698, 2013. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  4. B. K. S. Kumar, “Image denoising based on non-local means filter and its method noise thresholding,” Signal, Image and Video Processing, vol. 7, no. 6, pp. 1211–1227, 2013. View at Publisher · View at Google Scholar · View at Scopus
  5. J. H. Kim and K. N. Choi, “Range image denoising using a constrained local Gaussian model for 3D object query service in the smart space,” Personal and Ubiquitous Computing, vol. 17, no. 7, pp. 1401–1407, 2013. View at Publisher · View at Google Scholar · View at Scopus
  6. F. Adamo, G. Andria, F. Attivissimo, A. M. L. Lanzolla, and M. Spadavecchia, “A comparative study on mother wavelet selection in ultrasound image denoising,” Measurement, vol. 46, no. 8, pp. 2447–2456, 2013. View at Publisher · View at Google Scholar · View at Scopus
  7. J. Portilla, V. Strela, M. J. Wainwright, and E. P. Simoncelli, “Image denoising using scale mixtures of Gaussians in the wavelet domain,” IEEE Transactions on Image Processing, vol. 12, no. 11, pp. 1338–1351, 2003. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  8. X.-Y. Wang and Z.-K. Fu, “A wavelet-based image denoising using least squares support vector machine,” Engineering Applications of Artificial Intelligence, vol. 23, no. 6, pp. 862–871, 2010. View at Publisher · View at Google Scholar · View at Scopus
  9. D. Zhang, S. Mabu, and K. Hirasawa, “Image denoising using pulse coupled neural network with an adaptive Pareto genetic algorithm,” IEEJ Transactions on Electrical and Electronic Engineering, vol. 6, no. 5, pp. 474–482, 2011. View at Publisher · View at Google Scholar · View at Scopus
  10. X.-D. Gu, C.-Q. Cheng, and D.-H. Yu, “Noise-reducing of four-level image using PCNN and fuzzy algorithm,” Journal of Electronics and Information Technology, vol. 25, no. 12, pp. 1585–1598, 2003. View at Google Scholar · View at Scopus
  11. Y. Yan and B. Guo, “Two image denoising approaches based on wavelet neural network and particle swarm optimization,” Chinese Optics Letters, vol. 5, no. 2, pp. 82–85, 2007. View at Google Scholar · View at Scopus
  12. J. Zhang, Z. Lu, L. Shi, J. Dong, and M. Shi, “Filtering images contaminated with pep and salt type noise with pulse-coupled neural networks,” Science in China, Series F: Information Sciences, vol. 48, no. 3, pp. 322–334, 2005. View at Publisher · View at Google Scholar · View at Scopus
  13. L. Dehyadegary, S. A. Seyyedsalehi, and I. Nejadgholi, “Nonlinear enhancement of noisy speech, using continuous attractor dynamics formed in recurrent neural networks,” Neurocomputing, vol. 74, no. 17, pp. 2716–2724, 2011. View at Publisher · View at Google Scholar · View at Scopus
  14. X.-Y. Wang, H.-Y. Yang, Y. Zhang, and Z.-K. Fu, “Image denoising using SVM classification in nonsubsampled contourlet transform domain,” Information Sciences, vol. 246, pp. 155–176, 2013. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  15. N. E. Huang, Z. Shen, S. R. Long et al., “The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis,” Proceeding of Royal Society London: A, vol. 454, no. 12, pp. 903–995, 1998. View at Publisher · View at Google Scholar · View at MathSciNet
  16. J.-Y. Huang, K.-L. Wen, X.-J. Li, J.-J. Xie, C.-T. Chen, and S.-C. Su, “Coseismic deformation time history calculated from acceleration records using an EMD-derived baseline correction scheme: a new approach validated for the 2011 Tohoku earthquake,” Bulletin of the Seismological Society of America, vol. 103, no. 2, pp. 1321–1335, 2013. View at Publisher · View at Google Scholar · View at Scopus
  17. A. Garcia-Perez, J. P. Amezquita-Sanchez, A. Dominguez-Gonzalez, R. Sedaghati, R. Osornio-Rios, and R. J. Romero-Troncoso, “Fused empirical mode decomposition and wavelets for locating combined damage in a truss-type structure through vibration analysis,” Journal of Zhejiang University: Science A, vol. 14, no. 9, pp. 615–630, 2013. View at Publisher · View at Google Scholar · View at Scopus
  18. W. Huang, Z. Shen, N. E. Huang, and Y. C. Fung, “Use of intrinsic modes in biology: examples of indicial response of pulmonary blood pressure to ± step hypoxia,” Proceedings of the National Academy of Sciences of the United States of America, vol. 95, no. 22, pp. 12766–12771, 1998. View at Publisher · View at Google Scholar · View at Scopus
  19. J. Zheng, J. Cheng, and Y. Yang, “Generalized empirical mode decomposition and its applications to rolling element bearing fault diagnosis,” Mechanical Systems and Signal Processing, vol. 40, no. 1, pp. 136–153, 2013. View at Publisher · View at Google Scholar · View at Scopus
  20. K. Zhu, X. Song, and D. Xue, “Incipient fault diagnosis of roller bearings using empirical mode decomposition and correlation coefficient,” Journal of Vibroengineering, vol. 15, no. 2, pp. 597–603, 2013. View at Google Scholar · View at Scopus
  21. H. Song, Y. Bai, L. Pinheiro, C. Dong, X. Huang, and B. Liu, “Analysis of ocean internal waves imaged by multichannel reflection seismics, using ensemble empirical mode decomposition,” Journal of Geophysics and Engineering, vol. 9, no. 3, pp. 302–311, 2012. View at Publisher · View at Google Scholar · View at Scopus
  22. J. C. Nunes, Y. Bouaoune, E. Delechelle, O. Niang, and P. Bunel, “Image analysis by bidimensional empirical mode decomposition,” Image and Vision Computing, vol. 21, no. 12, pp. 1019–1026, 2003. View at Publisher · View at Google Scholar · View at Scopus
  23. J. C. Nunes, S. Guyot, and E. Deléchelle, “Texture analysis based on local analysis of the bidimensional empirical mode decomposition,” Machine Vision and Applications, vol. 16, no. 3, pp. 177–188, 2005. View at Publisher · View at Google Scholar · View at Scopus
  24. A. Linderhed, “2D empirical mode decompositions in the spirit of image compression,” in Wavelet and Independent Component Analysis Applications IX, vol. 4738 of Proceedings of SPIE, pp. 1–8, March 2002. View at Publisher · View at Google Scholar
  25. A. Linderhed, “Compression by image empirical mode decomposition,” in Proceedings of the IEEE International Conference on Image Processing (ICIP '05), pp. 553–556, Genoa, Italy, September 2005. View at Publisher · View at Google Scholar · View at Scopus
  26. Z. He, Q. Wang, Y. Shen, J. Jin, and Y. Wang, “Multivariate gray model-based bemd for hyperspectral image classification,” IEEE Transactions on Instrumentation and Measurement, vol. 62, no. 5, pp. 889–904, 2013. View at Publisher · View at Google Scholar · View at Scopus
  27. Y. Zhou and H. Li, “Adaptive noise reduction method for DSPI fringes based on bi-dimensional ensemble empirical mode decomposition,” Optics Express, vol. 19, no. 19, pp. 18207–18215, 2011. View at Publisher · View at Google Scholar · View at Scopus
  28. L. Qiao, K. Niu, N. Wang, and L. Peng, “Perfect reconstruction image modulation based on BEMD and quaternionic analytic signals,” Science China—Information Sciences, vol. 54, no. 12, pp. 2602–2614, 2011. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  29. Y. Chen, L. Wang, Z. Sun, Y. Jiang, and G. Zhai, “Fusion of color microscopic images based on bidimensional empirical mode decomposition,” Optics Express, vol. 18, no. 21, pp. 21757–21769, 2010. View at Publisher · View at Google Scholar · View at Scopus
  30. A. Linderhed, Adaptive image compression with wavelet paekets and empirical mode decomposition [Ph.D. thesis], Linköping Studies in Science and Technology, 2004.
  31. Z. X. Liu and S. L. Peng, “Boundary processing of bidimensional EMD using texture synthesis,” IEEE Signal Processing Letters, vol. 12, no. 1, pp. 33–36, 2005. View at Publisher · View at Google Scholar · View at Scopus
  32. V. T. Tran, B.-S. Yang, F. Gu, and A. Ball, “Thermal image enhancement using bi-dimensional empirical mode decomposition in combination with relevance vector machine for rotating machinery fault diagnosis,” Mechanical Systems and Signal Processing, vol. 38, no. 2, pp. 601–614, 2013. View at Publisher · View at Google Scholar · View at Scopus
  33. Y. Ye, “Adaptive boundary effect processing for empirical mode decomposition using template matching,” Applied Mathematics & Information Sciences, vol. 7, no. 1, pp. 61–66, 2013. View at Publisher · View at Google Scholar · View at Scopus
  34. Y. Deng, W. Wang, C. Qian et al., “The EMD method and deal with the boundary problem in the Hilbert transform,” Chinese Science Bulletin, vol. 46, no. 3, pp. 257–263, 2001. View at Google Scholar
  35. W. Xiaofeng and P. Hao, “Study of HHT end effect suppression based on RBF extension,” International Journal of Advancements in Computing Technology, vol. 4, no. 13, pp. 369–377, 2012. View at Publisher · View at Google Scholar · View at Scopus
  36. T. Xiong, Y. Bao, and Z. Hu, “Does restraining end effect matter in EMD-based modeling framework for time series prediction? Some experimental evidences,” Neurocomputing, vol. 123, pp. 174–184, 2014. View at Publisher · View at Google Scholar · View at Scopus
  37. Z. He, Y. Shen, Q. Wang, Y. Wang, N. Feng, and L. Ma, “Mitigating end effects of EMD using non-equidistance grey model,” Journal of Systems Engineering and Electronics, vol. 23, no. 4, pp. 603–611, 2012. View at Publisher · View at Google Scholar · View at Scopus
  38. W.-P. Hu, J.-L. Mo, Y.-J. Gong, F.-W. Zhao, and M.-H. Du, “Methods for mitigation of end effect in empirical mode decomposition: a quantitative comparison,” Dianzi Yu Xinxi Xuebao, vol. 29, no. 6, pp. 1394–1398, 2007. View at Google Scholar · View at Scopus
  39. J. L. Sanchez and J. J. Trujillo, “Improving the empirical mode decomposition method,” Applicable Analysis, vol. 90, no. 3-4, pp. 689–713, 2011. View at Publisher · View at Google Scholar · View at Scopus
  40. V. N. Vapnik, The Nature Of Statistical Learning Theory, Springer-Verlag, New York, NY, USA, 1995. View at Publisher · View at Google Scholar · View at MathSciNet
  41. V. Vapnik and A. Vashist, “A new learning paradigm: learning using privileged information,” Neural Networks, vol. 22, no. 5, pp. 544–557, 2009. View at Publisher · View at Google Scholar · View at Scopus
  42. Q. Huynh-Thu and M. Ghanbari, “Scope of validity of PSNR in image/video quality assessment,” Electronics Letters, vol. 44, no. 13, pp. 800–801, 2008. View at Publisher · View at Google Scholar · View at Scopus