Complex Wavelet Transform Based Image Denoising and Zooming Under the LMMSE Framework
Commenced in January 2007
Frequency: Monthly
Edition: International
Paper Count: 32804
Complex Wavelet Transform Based Image Denoising and Zooming Under the LMMSE Framework

Authors: T. P. Athira, Gibin Chacko George

Abstract:

This paper proposes a dual tree complex wavelet transform (DT-CWT) based directional interpolation scheme for noisy images. The problems of denoising and interpolation are modelled as to estimate the noiseless and missing samples under the same framework of optimal estimation. Initially, DT-CWT is used to decompose an input low-resolution noisy image into low and high frequency subbands. The high-frequency subband images are interpolated by linear minimum mean square estimation (LMMSE) based interpolation, which preserves the edges of the interpolated images. For each noisy LR image sample, we compute multiple estimates of it along different directions and then fuse those directional estimates for a more accurate denoised LR image. The estimation parameters calculated in the denoising processing can be readily used to interpolate the missing samples. The inverse DT-CWT is applied on the denoised input and interpolated high frequency subband images to obtain the high resolution image. Compared with the conventional schemes that perform denoising and interpolation in tandem, the proposed DT-CWT based noisy image interpolation method can reduce many noise-caused interpolation artifacts and preserve well the image edge structures. The visual and quantitative results show that the proposed technique outperforms many of the existing denoising and interpolation methods.

Keywords: Dual-tree complex wavelet transform (DT-CWT), denoising, interpolation, optimal estimation, super resolution.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1094511

Procedia APA BibTeX Chicago EndNote Harvard JSON MLA RIS XML ISO 690 PDF Downloads 2124

References:


[1] Robert. G. Keys, "Cubic Convolution interpolation for digital image processing,” IEEE Trans. On acoustics, speech, and signal processing, vol.ASSP-29, No.26, Dec-1981.
[2] B. Vrcelj and P. P. Vaidyanathan, "Efficient implementation of all-digital interpolation,” IEEE Trans. Image Process., vol. 10, no. 11, pp.1639–1646, Nov. 2001.
[3] M.Unser, A.Aldroubi and M.Eden, "Image interpolation and resampling,” IEEE Trans. on image processing, vol.6, pp.1322-1326, September, 1997.
[4] Lei Zhang and Xiaolin Wu, "An edge-guided image interpolation algorithm via directional filtering” and data fusion” IEEE Trans. image process, vol.15, no.8, pp.2226-2238, Aug.2006.
[5] X.Li and M.Orchrard, "New edge-directed interpolation,” IEEE Trans. image process, vol.10, no.10, pp.1521-1527, Oct.2001.
[6] Turgay Celik and Tardi Tjahjadi, "Image resolution enhancement using dual-tree complex wavelet transform,” IEEE Trans.geoscience and remote sensing letters,vol.7,no.3, pp 554- 557,July. 2010.
[7] A. Temizel and T. Vlachos, "Wavelet domain image resolution enhancement using cycle-spinning,” in IEEE electronics letters vol. 41 no. 3, Feb.2005.
[8] A. Temizel, "Image resolution enhancement using wavelet domain hidden Markov tree and coefficient sign estimation,” in Proc. ICIP, vol. 5, pp. V-381–V-384, 2007.
[9] Hasan Demirel and Gholamreza Anbarjafari, ” image resolution enhancement using complex wavelet transform”, IEEE Trans.geoscience and remote sensing letters,vol.7,no.1, pp 123- 126,Jan. 2010.
[10] Y. Piao, I. Shin, and H. W. Park, "Image resolution enhancement using inter-sub band correlation in wavelet domain,” in Proc.International conference on image processing, vol. 1, pp. 445-448, 2007.
[11] N. G. Kingsbury, "Image processing with complex wavelets,” Philos. Trans. R. Soc. London A, Math. Phys. Sci., vol. 357, no. 1760, pp. 2543–2560, Sep. 1999.
[12] N. Kingsbury, "Complex wavelets for shift invariant analysis and filtering of signals,” Appl. Compute. Harmonic Anal., vol. 10, no. 3, pp. 234–253, May 2001.
[13] J. Portilla, V. Strela, M. J. Wainwright and E. P. Simoncelli, "Image denoising using scale mixtures of Gaussians in the wavelet domain,” IEEE Trans. on Image Processing, vol. 12, pp. 1338 – 1351, Nov. 2003.
[14] S. Osher, M. Burger, D. Goldfarb, J. Xu, and W. Yin, "An iterative regularization method for total variation-based image restoration,” Multiscale Model. Simul., vol. 4, pp. 460-489, 2005.
[15] Lei Zhang, Xin Li, and David Zhang, "Image Denoising and Zooming under the LMMSE Framework”, IET_IP 2010.