Table of Contents Author Guidelines Submit a Manuscript
Mathematical Problems in Engineering
Volume 2015, Article ID 582640, 10 pages
http://dx.doi.org/10.1155/2015/582640
Research Article

A New Image Denoising Method by Combining WT with ICA

1School of Electrical and Information Engineering, Jiangsu University, Zhenjiang 212013, China
2School of Mechanical and Electrical Engineering, Wuyi University, Wuyishan 354300, China

Received 24 January 2015; Accepted 27 May 2015

Academic Editor: Chih-Cheng Hung

Copyright © 2015 Chengzhi Ruan 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. T. Lei and J. K. Udupa, “Performance evaluation of finite normal mixture model-based image segmentation techniques,” IEEE Transactions on Image Processing, vol. 12, no. 10, pp. 1153–1169, 2003. View at Publisher · View at Google Scholar · View at Scopus
  2. H. Talebi, X. Zhu, and P. Milanfar, “How to saif-ly boost denoising performance,” IEEE Transactions on Image Processing, vol. 22, no. 4, pp. 1470–1485, 2013. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  3. R. Y. Xia and C. C. Bao, “Wiener filtering based speech enhancement with weighted denoising auto-encoder and noise classification,” Speech Communication, vol. 60, pp. 13–29, 2014. View at Publisher · View at Google Scholar · View at Scopus
  4. Y. Li, J. Li, L. Wang, J. Zhang, D. Li, and M. Zhang, “A weighted least squares algorithm for time-of-flight depth image denoising,” Optik, vol. 125, no. 13, pp. 3283–3286, 2014. View at Publisher · View at Google Scholar · View at Scopus
  5. Y. Kuang, L. Zhang, and Z. Yi, “An adaptive rank-sparsity K-SVD algorithm for image sequence denoising,” Pattern Recognition Letters, vol. 45, no. 1, pp. 46–54, 2014. View at Publisher · View at Google Scholar · View at Scopus
  6. M. Sharif, M. Arfan Jaffar, and M. Tariq Mahmood, “Optimal composite morphological supervised filter for image denoising using genetic programming: application to magnetic resonance images,” Engineering Applications of Artificial Intelligence, vol. 31, pp. 78–89, 2014. View at Publisher · View at Google Scholar · View at Scopus
  7. J. Villa, R. Rodríguez-Vera, J. A. Quiroga, I. de la Rosa, and E. González, “Anisotropic phase-map denoising using a regularized cost-function with complex-valued Markov-random-fields,” Optics and Lasers in Engineering, vol. 48, no. 6, pp. 650–656, 2010. View at Publisher · View at Google Scholar · View at Scopus
  8. M. Boix and B. Cantó, “Using wavelet denoising and mathematical morphology in the segmentation technique applied to blood cells images,” Mathematical Biosciences and Engineering, vol. 10, no. 2, pp. 279–294, 2013. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus
  9. V. Nassiri, M. Aminghafari, and A. Mohammad-Djafari, “Solving noisy ICA using multivariate wavelet denoising with an application to noisy latent variables regression,” Communications in Statistics: Theory and Methods, vol. 43, no. 10-12, pp. 2297–2310, 2014. View at Publisher · View at Google Scholar · View at MathSciNet
  10. T. Saba, A. Rehman, A. Al-Dhelaan, and M. Al-Rodhaan, “Evaluation of current documents image denoising techniques: a comparative study,” Applied Artificial Intelligence, vol. 28, no. 9, pp. 879–887, 2014. View at Publisher · View at Google Scholar
  11. M. B. Ashtiani and S. M. Shahrtash, “Feature-oriented de-noising of partial discharge signals employing mathematical morphology filters,” IEEE Transactions on Dielectrics and Electrical Insulation, vol. 19, no. 6, pp. 2128–2136, 2012. View at Publisher · View at Google Scholar · View at Scopus
  12. S. Bhattacharyya, P. Pal, and S. Bhowmick, “Binary image denoising using a quantum multilayer self organizing neural network,” Applied Soft Computing, vol. 24, pp. 717–729, 2014. View at Publisher · View at Google Scholar
  13. B. K. K. Shreyamsha, “Image denoising based on gaussian/bilateral filter and its method noise thresholding,” Signal, Image and Video Processing, vol. 7, no. 6, pp. 1159–1172, 2013. View at Publisher · View at Google Scholar · View at Scopus
  14. R. M. Yan, L. Shao, L. Liu, and Y. Liu, “Natural image denoising using evolved local adaptive filters,” Signal Processing, vol. 103, pp. 36–44, 2014. View at Publisher · View at Google Scholar · View at Scopus
  15. N. Remenyi, O. Nicolis, G. Nason, and B. Vidakovic, “Image denoising with 2D scale-mixing complex wavelet transforms,” IEEE Transactions on Image Processing, vol. 23, no. 12, pp. 5165–5174, 2014. View at Publisher · View at Google Scholar · View at MathSciNet
  16. D. P. Jena and R. Kumar, “Implementation of wavelet denoising and image morphology on welding image for estimating HAZ and welding defects,” Measurement Science Review, vol. 11, no. 4, pp. 108–111, 2011. View at Publisher · View at Google Scholar · View at Scopus
  17. H. Sawada, S. Araki, R. Mukai, and S. Makino, “Blind extraction of dominant target sources using ICA and time-frequency masking,” IEEE Transactions on Audio, Speech and Language Processing, vol. 14, no. 6, pp. 2165–2173, 2006. View at Publisher · View at Google Scholar · View at Scopus
  18. T. Kim, H. T. Attias, S.-Y. Lee, and T.-W. Lee, “Blind source separation exploiting higher-order frequency dependencies,” IEEE Transactions on Audio, Speech and Language Processing, vol. 15, no. 1, pp. 70–79, 2007. View at Publisher · View at Google Scholar · View at Scopus
  19. G. Salimi-Khorshidi, G. Douaud, C. F. Beckmann, M. F. Glasser, L. Griffanti, and S. M. Smith, “Automatic denoising of functional MRI data: combining independent component analysis and hierarchical fusion of classifiers,” NeuroImage, vol. 90, pp. 449–468, 2014. View at Publisher · View at Google Scholar · View at Scopus
  20. J. Coloigner, L. Albera, A. Kachenoura, F. Noury, and L. Senhadji, “Semi-nonnegative joint diagonalization by congruence and semi-nonnegative ICA,” Signal Processing, vol. 105, pp. 185–197, 2014. View at Publisher · View at Google Scholar
  21. Y.-Y. Liao, J.-C. Wu, C.-H. Li, and C.-K. Yeh, “Texture feature analysis for breast ultrasound image enhancement,” Ultrasonic Imaging, vol. 33, no. 4, pp. 264–278, 2011. View at Publisher · View at Google Scholar · View at Scopus
  22. Q. Xu, S. Varadarajan, C. Chakrabarti, and L. J. Karam, “A distributed canny edge detector: algorithm and FPGA implementation,” IEEE Transactions on Image Processing, vol. 23, no. 7, pp. 2944–2960, 2014. View at Publisher · View at Google Scholar · View at MathSciNet
  23. A. A. Yahya, J. Q. Tan, and M. Hu, “A blending method based on partial differential equations for image denoising,” Multimedia Tools and Applications, vol. 73, no. 3, pp. 1843–1862, 2014. View at Publisher · View at Google Scholar · View at Scopus
  24. E. Nadernejad and M. Nikpour, “Image denoising using new pixon representation based on fuzzy filtering and partial differential equations,” Digital Signal Processing, vol. 22, no. 6, pp. 913–922, 2012. View at Publisher · View at Google Scholar · View at MathSciNet · View at Scopus