[期刊论文][Full-length article]


A new image denoising framework using bilateral filtering based non-subsampled shearlet transform

作   者:
Sidheswar Routray;Prince Priya Malla;Sunil Kumar Sharma;Sampad Kumar Panda;G Palai;

出版年:2020

D  O  I:10.1016/j.ijleo.2020.164903

页    码:164903 - 164903
出版社:Elsevier BV


摘   要:

In this paper, we propose an advanced framework for image denoising using bilateral filtering based non-subsampled shearlet transform (NSST). Initially, we apply the NSST to decompose noisy input image into high and low frequency coefficients. The weighted bilateral filter (WBF) is then used to remove the noise from the low frequency coefficients while; thresholding is used to remove noise from the high frequency coefficients. The outputs of both the process are combined to form the resultant image. Finally, the inverse NSST is applied on the resultant output to estimate the final denoised image. To ensure validity of the proposed model, we conduct several experiments by considering different grayscale images with various noise variances. The qualitative and quantitative comparison is illustrated and it shows the improved performance of the proposed method as compared to the other conventional image denoising methods. Mathematical and simulation results are presented to show the validity of our work.



关键字:

Image denoising ; Texture preservation ; Non-subsampled shearlet transform ; Weighted bilateral filter ; PSNR ; SSIM


所属期刊
Optik
ISSN: 0030-4026
来自:Elsevier BV