(Publisher of Peer Reviewed Open Access Journals)

International Journal of Advanced Technology and Engineering Exploration (IJATEE)

ISSN (Print):2394-5443    ISSN (Online):2394-7454
Volume-5 Issue-44 July-2018
Full-Text PDF
DOI:10.19101/IJATEE.2018.543020
Paper Title : A survey and analysis based on image denoising method
Author Name : Abhishek Dipak Shroff , Kailash Patidar and Rishi Kushwah
Abstract :

There are different methods have been presented for the noise reduction. It is essential in proper formation and retrieval of images. This paper explores the methods previously proposed. There are several research work is in progress in the process of denoising. Still there are lot of scope in this field for the betterment. This paper elaborates the previous methods along with the gap found and focus on the advantages. This discussion is based on the latest literature included in this paper. This paper also provides the meta-analysis and comparative discussion of different denoising methods. Based on the gaps identified future suggestions have been listed.

Keywords : Image denoising, Image retrieval, Noise reduction, Denoising methods.
Cite this article : Abhishek Dipak Shroff , Kailash Patidar and Rishi Kushwah, " A survey and analysis based on image denoising method " , International Journal of Advanced Technology and Engineering Exploration (IJATEE), Volume-5, Issue-44, July-2018 ,pp.182-186.DOI:10.19101/IJATEE.2018.543020
References :
[1]Shannon CE. Communication in the presence of noise. Proceedings of the IRE. 1949; 37(1):10-21.
[Crossref] [Google Scholar]
[2]Nyquist H. Certain topics in telegraph transmission theory. Transactions of the American Institute of Electrical Engineers. 1928; 47(2):617-44.
[Crossref] [Google Scholar]
[3]Candes EJ, Wakin MB. An introduction to compressive sampling. IEEE Signal Processing Magazine. 2008; 25(2):21-30.
[Crossref] [Google Scholar]
[4]Ghosh P, Pandey A, Pati UC. Comparison of different feature detection techniques for image mosaicing. ACCENTS Transactions on Image Processing and Computer Vision. 2015; 1(1):1-7.
[Google Scholar]
[5]Tropp JA, Gilbert AC. Signal recovery from random measurements via orthogonal matching pursuit. IEEE Transactions on Information Theory. 2007; 53(12):4655-66.
[Crossref] [Google Scholar]
[6]Kumar M, Katti CP. An efficient ID-based partially blind signature scheme and application in electronic-cash payment system. ACCENTS Transactions on Information Security. 2017; 2(6):36-42.
[Crossref] [Google Scholar]
[7]Chitra AD, Ponmuthuramalingam P. Face recognition with positive and negative samples using support vector machine. ACCENTS Transactions on Image Processing and Computer Vision .2016; 2(5):16-9.
[Crossref] [Google Scholar]
[8]Mohapatra BN, Panda PP. Histogram equalization and noise removal process for enhancement of image. ACCENTS Transactions on Image Processing and Computer Vision. 2017; 3(9): 22-5.
[Crossref]
[9]To AC, Moore JR, Glaser SD. Wavelet denoising techniques with applications to experimental geophysical data. Signal Processing. 2009; 89(2):144-60.
[Crossref] [Google Scholar]
[10]TV NP, Hemanth VK, Kumar S, Soman KP, Soman A. Comparative study of recent compressed sensing methodologies in astronomical images. international conference on eco-friendly computing and communication systems. 2012 (pp. 108-16). Springer, Berlin, Heidelberg.
[Crossref] [Google Scholar]
[11]Dubey S, Hasan F, Shrivastava G. A hybrid method for image denoising based on wavelet thresholding and RBF network. International Journal of Advanced Computer Research. 2012; 2(4):167-72.
[Google Scholar]
[12]Liua J, Shi C, Gao M. Image denoising based on BEMD and PDE. In international conference on computer research and development 2011 (pp. 110-2). IEEE.
[Crossref] [Google Scholar]
[13]Motwani MC, Gadiya MC, Motwani RC, Harris FC. Survey of image denoising techniques. In proceedings of GSPX 2004 (pp. 27-30).
[Google Scholar]
[14]Candes EJ, Tao T. Decoding by linear programming. IEEE Transactions on Information Theory. 2005; 51(12):4203-15.
[Crossref] [Google Scholar]
[15]Singh J, Dubey RB. Reduction of noise image using LMMSE. International Journal of Advanced Computer Research. 2012; 2(5):147-52.
[Google Scholar]
[16]Anandan P, Sabeenian RS. Curvelet based image compression using support vector machine and core vector machine-a review. International Journal of Advanced Computer Research. 2014; 4(15):675-81.
[Google Scholar]
[17]Veena PV, Devi GR, Sowmya V, Soman KP. Least square based image denoising using wavelet filters. Indian Journal of Science and Technology. 2016; 9(30).
[Crossref] [Google Scholar]
[18]Lang C, Li G, Li J, Zhao X. Combined transform image denoising based on morphological component analysis. In international conference on multimedia technology 2011 (pp. 4871-4). IEEE.
[Crossref] [Google Scholar]
[19]Su K, Fu H, Du B, Cheng H, Wang H, Zhang D. Image denoising based on learning over-complete dictionary. In international conference on fuzzy systems and knowledge discovery 2012 (pp. 395-8). IEEE.
[Crossref] [Google Scholar]
[20]Zhang GD, Yang XH, Xu H, Lu DQ, Liu YX. Image denoising based on support vector machine. In spring congress on engineering and technology 2012 (pp. 1-4). IEEE.
[Crossref] [Google Scholar]
[21]Chithra K, Santhanam T. Hybrid denoising technique for suppressing Gaussian noise in medical images. In IEEE international conference on power, control, signals and instrumentation engineering 2017 (pp. 1460-3). IEEE.
[Crossref] [Google Scholar]
[22]Soni N, Kirar K. Transform based image denoising: a review. In international conference on recent innovations in signal processing and embedded systems 2017 (pp. 168-71). IEEE.
[Crossref] [Google Scholar]
[23]Pang J. Improved image denoising based on Haar wavelet transform. In smartworld, ubiquitous intelligence & computing, advanced & trusted computed, scalable computing & communications, cloud & big data computing, internet of people and smart city innovation 2017. IEEE.
[Crossref] [Google Scholar]
[24]Yang W, Liu J. Denoising fluorescence molecular image by k-means clustering. In IEEE international conference on computer and communications 2017 (pp. 1847-50). IEEE.
[Crossref] [Google Scholar]
[25]Ankarao V, Sowmya V, Soman KP. Sparse image denoising using dictionary constructed based on least square solution. In international conference on wireless communications, signal processing and networking 2017 (pp. 1165-71). IEEE.
[Google Scholar]
[26]Rubel A, Lukin V. Denoising efficiency analysis based on no-reference image quality assessment. In advanced trends in international conference on radioelecrtronics, telecommunications and computer engineering 2018 (pp. 898-902). IEEE.
[Crossref] [Google Scholar]
[27]Rani KS, Satyanarayana RV. Image denoising using boundary discriminated switching bilateral filter with highly corrupted universal noise. In international conference on energy, communication, data analytics and soft computing 2017 (pp. 1515-21). IEEE.
[Crossref] [Google Scholar]
[28]Devi S, Mohan P. A comparison of compressive sensing application for image denoising with wavelet denoising. In international conference on intelligent sustainable systems 2017 (pp. 137-41). IEEE.
[Crossref] [Google Scholar]
[29]Xue W, Zhang W. Block dictionary learning with l 0 regularization and its application in image denoising. In 13th international conference on natural computation, fuzzy systems and knowledge discovery 2017 (pp. 1807-13). IEEE.
[Crossref] [Google Scholar]
[30]Liu Z, Yan WQ, Yang ML. Image denoising based on a CNN model. In 4th international conference on control, automation and robotics 2018 (pp. 389-93). IEEE.
[Crossref] [Google Scholar]
[31]Gupta V, Mahle R, Shriwas RS. Image denoising using wavelet transform method. In international conference on wireless and optical communications networks 2013 (pp. 1-4). IEEE.
[Crossref] [Google Scholar]
[32]Ghimpeţeanu G, Batard T, Bertalmío M, Levine S. A decomposition framework for image denoising algorithms. IEEE Transactions on Image Processing. 2016; 25(1):388-99.
[Crossref] [Google Scholar]