Title of article :
A New Shearlet Hybrid Method for Image Denoising
Author/Authors :
Ehsaeyan، E. نويسنده ,
Issue Information :
فصلنامه با شماره پیاپی سال 2016
Abstract :
Traditional noise removal methods like Non-Local Means create spurious
boundaries inside regular zones. Visushrink removes too many coefficients and yields
recovered images that are overly smoothed. In Bayesshrink method, sharp features are
preserved. However, PSNR (Peak Signal-to-Noise Ratio) is considerably low. BLS-GSM
generates some discontinuous information during the course of denoising and destroys the
flatness of homogenous area. Wavelets are not very effective in dealing with
multidimensional signals containing distributed discontinuities such as edges. This paper
develops an effective shearlet-based denoising method with a strong ability to localize
distributed discontinuities to overcome this limitation. The approach introduced here
presents two major contributions: (a) Shearlet Transform is designed to get more directional
subbands which helps to capture the anisotropic information of the image; (b) coefficients
are divided into low frequency and high frequency subband. Then, the low frequency band
is refined by Wiener filter and the high-pass bands are denoised via NeighShrink model.
Our framework outperforms the wavelet transform denoising by %7.34 in terms of PSNR
(peak signal-to-noise ratio) and %13.42 in terms of SSIM (Structural Similarity Index) for
‘Lena’ image. Our results in standard images show the good performance of this algorithm,
and prove that the algorithm proposed is robust to noise.
Keywords :
Edge Preserving , sureshrink , image denoising , Wiener filter , PSNR , NeighShrink , WAVELET , Threshold , SSIM , Shearlet Transform
Journal title :
Iranian Journal of Electrical and Electronic Engineering(IJEEE)
Journal title :
Iranian Journal of Electrical and Electronic Engineering(IJEEE)