Pages

Survey on Image Restoration Techniques

Abstract: In the field of computer sciences and engineering restoration of digital image is challenging in processing digital image. In this survey paper is done for image restoration technique. Basically Image restoration technique is divided in to two aspects they are image denoising and image deblurring. In the area of denoising high frequency noise such as salt and pepper noise available and for low frequency noise Gaussian noise are available. And then deblurring process is broadly classified in to two methods, they are Deterministic Method and Stochastic Method. In this paper all methods are taken for the consideration and provide the experimental results and states the best method for restoration based on the applications which it is implemented.

Key words:  Image Restoration, Image Denoising, Image Deblurring. 

REFERENCES

[1] H. Hwang and R. A. Haddad, “Adaptive median filters:new algorithms and results,” IEEE Transactions on Image Processing, 4, pp. 499–502, 1995.

[2] V.Jayaraj , D.Ebenezer, K.Aiswarya, “High Density Salt and Pepper Noise Removal in images using Improved Adaptive Statistics Estimation Filter”, IJCSNS International Journal of Computer Science an 170 d Network Security, VOL.9 No.11, November 2009.

[3] Medida.Amulya Bhanu, Gopichand Nelapati, Dr.Rajeyyagari Sivaram, “Salt and Pepper Noise Detection and removal
by Modified Decision based Unsymmetrical Trimmed Median Filter for Image Restoration” Volume 1, No.3, July – August 2012, ISSN No. 2278-3091.

[4] Xinhao Liu, Masayuki Tanaka, “Single-Image Noise Level Estimation for Blind Denoisin”,IEEE TRANSACTIONS ON IMAGE PROCESSING, VOL. 22, NO. 12, DECEMBER 2013.

[5] Alle Meije Wink and Jos B. T. M. Roerdink,” Denoising Functional MR Images: A Comparison of Wavelet Denoising and Gaussian Smoothing “,IEEE TRANSACTIONS ON MEDICAL IMAGING, VOL. 23, NO. 3, MARCH 2004.

[6] Kaur. A. Chopra. V, “A Comparative Study and Analysis of Image Restoration Techniques Using Different Images Formats”, “International Journal for Science and Emerging Technologies with Latest Trends” 2(1): 7-14 (2012).

[7] Rama Singh, Neelesh Gupta, “Restoration of Noisy Blur Image using Wavelet based Image Fusion “,International Conference on Cloud, Big Data and Trust 2013, Nov 13-15, RGPV.

[8] Ryan Wen Liu_ and Tian Xu, “A Robust    Alternating Direction Method for Constrained Hybrid Variational Deblurring Model “.

[9]  Digital Image Processing by R. C. Gonzales and R. E. Woods, Addison-Wesley Publishing Company, 1992.

[10]      Two-Dimensional Signal and Image Processing by J. S. Lim, Prentice Hall, 1990.

[11]      'Digital Image Restoration', by M.R. Banham and A.K. Katsaggelos, IEEE Signal Processing Magazine, pp. 27-41, March 1997.

[12]RajooPandey,AwadheshKumarSingh,UmeshGhanekar,”Local pixel statistics based impulse detection and hybrid color filtering for
restoration of digital color images “,Int. J.Electron.Commun.(AEÜ) xxx (2011) xxx–xxx.

[13] Tzu-Chao Lin,” Decision-based fuzzy image restoration for noise reduction based on evidence theory “,ExpertSystems with Applications 38 (2011) 8303–8310.

[14] 1JAGADISH H. PUJAR, 2KIRAN S. KUNNUR, “A NOVEL APPROACH FOR IMAGE RESTORATION VIANEAREST NEIGHBOUR METHOD “,Journal of Theoretical and Applied Information Technology.

[15]K.VASANTH,V.JAWAHAR  SENTHILKUMAR, “ A DECISION BASED UNSYMMETRICAL TRIMMED MIDPOINT ALGORITHM FOR THE REMOVAL OF HIGH DENSITY SALT AND PEPPER NOISE  “,Journal of Theoretical and Applied Information Technology 31 August 2012. Vol. 42 No.2.

[16]  T.SUNILKUMAR, A. SRINIVAS, M. ESWAR REDDY and Dr. G. RAMACHANDRA REDDY,” REMOVAL OF HIGH DENSITY
IMPULSE NOISE THROUGH MODIFIED NON-LINEAR FILTER  “,Journal of Theoretical and Applied Information Technology 20th January 2013. Vol. 47 No.2.

[17] Kundur andD.Hatzinakos,“Blind image deconvolution,”IEEESignal Process. Mag., vol. 13, no. 3, pp. 43–64, May 1996.

[18]. J. Cai, H. Ji, C. Liu, and Z. Shen, “Blind motion deblurring from a single image using sparse approximation,”  in Proc.IEEEConf.Comput.Vis.PatternRecog., 2009, pp. 104–111.

[19].N.Joshi, .Szeliski,andD.Kriegman,“PSFestimationusingsharpedgeprediction,”inProc.IEEEConf. Comput. Vis. Pattern Recog., 2008 .

[20]“Moving Theory into Practice: Digital Imaging Tutorial”, URL: http://www.library.cornell.edu/preservation/tutorial/contents.html

[21]“Image quality”, URL: http://en.wikipedia.org/wiki/Image_quality

[22] C. Solomon and T. Breckon, ‘Fundamentals of Digital Image Processing,’ John Wiley & Sons, Ltd, 2011.

[23] V. Roth and P. Cattin, “Biomedical Image Analysis: Homomorphic Filtering and Applications for PET”, Lecture Notes, Universität Basel.

[24] L. Yang and J. Ren, “Remote sensing image restoration using estimated point spread function”, 2010 International Conference on Information, Networking and Automation (ICINA), IEEE, 2010.

[25] L. P. Panych, “Theoretical comparison of fourier and wavelet encoding in magnetic resonance imaging,” IEEE Trans. Med. Imag., vol. 15, pp. 141–153, Apr. 1996.

[26] S. G. Mallat, “A theory for multiresolution signal decomposition: The wavelet representation,” IEEE Trans. Pattern Anal. Machine Intell., vol.PAMI-11, pp. 674–693, 1989.

[27] R. Jiřík and T. Taxt, ‘Two-Dimensional Blind Bayesian Deconvolution of Medical Ultrasound Images,’ IEEE Transaction on UFFC, Vol.55, No.10, October 2008.

 

Click here to Download Full Article

 




About the Author

R.PRABHU

Research Scholar , Research & Development Center,

Bharathiar University, Coimbatore, TamilNadu-India

E-Mail: prabusnr@gmail.com

Dis Estetigi Liposuction Tstanbul Liposuction istanbul Rhinoplasty Turkey rhinoplasty istanbul cosmetic surgery istanbul Bebek Kiyafetleri sac ekimi Burun Estetigi meme buyutme goz kapagi estetigi goz kapagi estetigi meme kucultme Lazer Lipoliz Karin Germe burun estetigi yuz germe burun estetigi meme estetigi Su Kabagi Gourd Lamps somine burun estetigi

Most Viewed - All Categories