Discrete and Stationary Adaptive Sub-Band Threshold Method for Improving Image Resolution
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Discrete and Stationary Adaptive Sub-Band Threshold Method for Improving Image Resolution

Authors: P. Joyce Beryl Princess, Y. Harold Robinson

Abstract:

Image Processing is a structure of Signal Processing for which the input is the image and the output is also an image or parameter of the image. Image Resolution has been frequently referred as an important aspect of an image. In Image Resolution Enhancement, images are being processed in order to obtain more enhanced resolution. To generate highly resoluted image for a low resoluted input image with high PSNR value. Stationary Wavelet Transform is used for Edge Detection and minimize the loss occurs during Downsampling. Inverse Discrete Wavelet Transform is to get highly resoluted image. Highly resoluted output is generated from the Low resolution input with high quality. Noisy input will generate output with low PSNR value. So Noisy resolution enhancement technique has been used for adaptive sub-band thresholding is used. Downsampling in each of the DWT subbands causes information loss in the respective subbands. SWT is employed to minimize this loss. Inverse Discrete wavelet transform (IDWT) is to convert the object which is downsampled using DWT into a highly resoluted object. Used Image denoising and resolution enhancement techniques will generate image with high PSNR value. Our Proposed method will improve Image Resolution and reached the optimized threshold.

Keywords: Image Processing, Inverse Discrete wavelet transform, PSNR.

Digital Object Identifier (DOI): doi.org/10.5281/zenodo.1107011

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References:


[1] Hasan Demirel, Gholamreza Anbarjafari, “Image Resolution Enhancement by using Discrete and Stationary Wavelet Decomposition”, IEEE Transaction on Image Processing, Vol.20, No.5, May 2011.
[2] L. Yi- bo, X. Hong, and Z. Sen-yue, “The wrinkle generation method for facial reconstruction based on extraction of partition wrinkle line features and fractal interpolation,” in Proc. 4th Int. Conf. Image Graph., Aug. 22–24, 2007, pp. 933–937.
[3] H. Demirel, G. Anbarjafari, and S. Izadpanahi, “Improved motion based localized super resolution technique using discrete wavelet transform for low resolution video enhancement,” in Proc. 17th Eur. Signal Process. Conf., Glasgow, Scotland, Aug. 2009, pp.1097–1101.
[4] Y. Piao, I. Shin, and H. W. Park, “Image resolution enhancement using inter- subband correlation in wavelet domain,” in Proc. Int. Conf. Image Process., 2007, vol. 1, pp. I-445–448.
[5] H. Demirel and G. Anbarjafari, “Satellite image resolution enhancement using complex wavelet transform,” IEEE Geoscience and Remote Sensing Letter, vol. 7, no. 1, pp. 123–126, Jan. 2010.
[6] C. B. Atkins, C. A. Bouman, and J. P. Allebach, “Optimal image scaling using pixel classification,” in Proc. Int. Conf. Image Process., Oct. 7– 10, 2001, vol. 3, pp. 864–867.
[7] W. K. Carey, D. B. Chuang, and S. S. Hemami, “Regularity-preserving image interpolation,” IEEE Trans. Image Process., vol. 8, no. 9, pp. 1295–1297, Sep. 1999.
[8] J. E. Fowler, “The redundant discrete wavelet transform and additive noise,” Mississippi State ERC, Mississippi State University, Tech. Rep. MSSU-COE-ERC-04-04, Mar. 2004.
[9] X. Li and M. T. Orchard, “New edge-directed interpolation,” IEEE Trans. Image Process., vol. 10, no. 10, pp. 1521–1527, Oct. 2001.
[10] S. Zhao, H. Han, and S. Peng, “Wavelet domain HMT-based image super resolution,” in Proc. IEEE Int. Conf. Image Process., Sep. 2003, vol. 2, pp. 933–936.
[11] A. Temizel and T. Vlachos, “Wavelet domain image resolution enhancement using cycle-spinning,” Electron. Lett., vol. 41, no. 3, pp. 119–121, Feb. 3, 2005.
[12] A. Temizel and T. Vlachos, “Image resolution upscaling in the wavelet domain using directional cycle spinning,” J. Electron. Imag., vol. 14, no. 4, 2005.
[13] G. Anbarjafari and H. Demirel, “Image super resolution based on interpolation of wavelet domain high frequency subbands and the spatial domain input image,” ETRI J., vol. 32, no. 3, pp. 390–394, Jun. 2010.
[14] A. Temizel, “Image resolution enhancement using wavelet domain hidden Markov tree and coefficient sign estimation,” in Proc. Int.Conf. Image Process., 2007, vol. 5, pp. V-381–384.