Cite this article |
: |
Abhishek Dipak Shroff , Kailash Patidar and Harsh Pratap Singh, " An efficient image denoising method based on KPDE " ,
International Journal of Advanced Technology and Engineering Exploration (IJATEE), Volume-5, Issue-44, July-2018 ,pp.208-213.DOI:10.19101/IJATEE.2018.543021 |
References |
: |
[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.
|
[Google Scholar] |
[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. In 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]http://wang.ist.psu.edu/docs/related/ Access 23 March 2018.
|
|