Image Denoising in Wavelet Domain with Filtering and Thresholding

Authors

  • K Sumathi

  • Ch Hima Bindu

How to Cite

Sumathi, K., & Hima Bindu, C. (2018). Image Denoising in Wavelet Domain with Filtering and Thresholding. International Journal of Engineering and Technology, 7(3.34), 327-330. https://doi.org/10.14419/ijet.v7i3.34.19218

Received date: September 7, 2018

Accepted date: September 7, 2018

Published date: September 1, 2018

DOI:

https://doi.org/10.14419/ijet.v7i3.34.19218

Keywords:

Enhancement, Discrete wavelet TransformationDenoisingfilters, Threshold.Virtual reality.

Abstract

In this paper, the proposed method is implemented for removal of salt & pepper and Gaussian noise of black & white & color images to
acquire the quality output. In this work initially wavelet coefficients are extracted for noisy images. Later apply denoise filtering
technique on the high transform sub bands of noisy images (either color/ B & W) using new laplacian filters with 4 directions. Finally
threshold of an image is generated to extract denoisy coefficients. At last inverse of above subband coefficients can give denoise image
for further processing. The proposed method is verified against various B & W/color images and it gives a better PSNR (Peak Signal to
Noise Ratio) & MI (Mutual Information). These values are compared with different noise densities and analyzed visually.

References

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How to Cite

Sumathi, K., & Hima Bindu, C. (2018). Image Denoising in Wavelet Domain with Filtering and Thresholding. International Journal of Engineering and Technology, 7(3.34), 327-330. https://doi.org/10.14419/ijet.v7i3.34.19218

Received date: September 7, 2018

Accepted date: September 7, 2018

Published date: September 1, 2018