International Journal of Scientific & Technology Research

Home About Us Scope Editorial Board Blog/Latest News Contact Us
10th percentile
Powered by  Scopus
Scopus coverage:
Nov 2018 to May 2020


IJSTR >> Volume 8 - Issue 11, November 2019 Edition

International Journal of Scientific & Technology Research  
International Journal of Scientific & Technology Research

Website: http://www.ijstr.org

ISSN 2277-8616

A Review On Medical Image Denoising Techniques

[Full Text]



D.Sreelakshmi, Syed Inthiyaz



Machine learning, Image De-Noise, , Medical Image, Quality parameters.



: Medical images are images that contain visual and meaningful information that cannot be observed by an ordinary person. Medical images remain frequently corrupted through noise in its acquisition in addition to Transmission. The noisy image may convey the information in a different way. The key impartial of Image denoising methods is essential to eliminate such sounds whereas remembering as much as probable the required significant image features. In this paper, it is planned to review the maximum number of latest possible medical image denoising methods and give comparison of these popular models.



Jean-Luc Starck, Emmanuel J. Candes, and David L. Donoho, “The Curvelet Transform for Image Denoising”, IEEE Transactions on Image Processing, 11, 6, 670-684, 2002.
[2] Jose V. Manjon, Jose Carbonell-Caballero, Juan J. Lull, Gracian Garcıa-Mart, Lus Mart-Bonmat, Montserrat Robles, “MRI denoising using Non-Local Means”, Medical Image Analysis, 12, 514–523, 2008.
[3] Bei Li, DaShun Que, “Medical Images Denoising Based on Total Variation Algorithm”, Procedia Environmental Sciences, 8, 227 – 234, 2011.
[4] J Umamaheswari, G.Radhamani, “Hybrid Denoising Method for Removal of Mixed Noise in Medical Images”, International Journal of Advanced Computer Science and Applications, 3, 5, 44-47, 2012.
[5] Somasundaram K, Kalavathi P, “Performance of Spatial Mean Filters on Denoising Medical Images for Edge Detection”, IJCST, 3, 2, 260-264, 2012.
[6] Devanand Bhonsle, Vivek Chandra, G.R. Sinha, “Medical Image Denoising Using Bilateral Filter”, I.J. Image, Graphics and Signal Processing, 6, 36-43, 2012.
[7] Ke Lu, Ning He, and Liang Li, “Non local Means-Based Denoising for Medical Images”, Computational and Mathematical Methods in Medicine, Volume 2012, 1-8, 2012.
[8] V N Prudhvi Raj and Dr. T Venkateswarlu, “Denoising of medical images using image fusion techniques”, Signal & Image Processing: An International Journal, 3, 4, 65-84, 2012.
[9] V Naga Prudhvi Raj, Dr T Venkateswarlu, “Denoising of medical images using dual tree complex wavelet transform”, Procedia Technology, 4, 238 – 244, 2012.
[10] Rupinderpal Singh, Pankaj Sapra, Varsha Verma, “An Advanced Technique of De-Noising Medical Images using ANFIS”, International Journal of Science and Modern Engineering, 1, 9, 75-80, 2013.
[11] Somnath Mukhopadhyay, J. K. Mandal, “Wavelet based Denoising of Medical Images using Sub-band Adaptive Thresholding through Genetic Algorithm”, Procedia Technology, 10, 680 – 689, 2013.
[12] Sudeb Das, Malay Kumar Kundu, “MRI Denoising using Visual System Response Model Simulating PCNN”, ACM, 1, 56-63, 2015.
[13] Abbas H. Hassin AlAsadi, “Contourlet Transform Based Method For Medical Image Denoising”, International Journal of Image Processing, 9, 1, 22-31, 2015.
[14] R.M. Farouk, “Medical Image Denoising based on Log-Gabor Wavelet Dictionary and K-SVD Algorithm”, International Journal of Computer Applications, 141, 1, 27-32, 2016.
[15] Xiao Chen, Qianli Shen, “Medical image denoising based on dictionary learning”, Biomedical Research, 28, 20, 9132-9134, 2017.
[16] Y. M. M. Babu, K. Radhika and G.Kameswari, “An Analysis of a Block Matching Method on Single Chrome Images”, International Journal of Innovative Technology and Exploring Engineering, 8, 8, 218-220, 2019.