Certain Investigations on Transform Domain Based Image Denoising Techniques
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ABSTRACT
newlineImage denoising is an important research area in computer vision communities. The
newlinemain objective of the research is to develop and implement transform based image
newlinedenoising algorithms to remove noise from the images contaminated by Additive White
newlineGaussian Noise (AWGN) with preservation of the global contrast, edge structures and
newlinetexture information of the image and reduction of blurring and artifacts in the denoised
newlineimage.
newlineOne of the proposed transform-based denoising techniques is the Hybrid
newlineWavelet and Quincunx Diamond Filter Bank (HWQDFB)-based denoising scheme. The
newlineHWQDFB combines the Wavelet Filter Bank (WFB) and Quincunx Diamond Filter
newlineBank (QDFB) for an efficient representation of images. The QDFB is designed from
newlinefinite impulse response filters using Kaiser window with good frequency selectivity and
newlinehigh stopband attenuation to reduce aliasing distortion. At first, the HWQDFB
newlinedecomposes the noisy image into subbands of different frequencies and orientations
newlineusing discrete Meyer wavelet. The QDFB is applied on the detail subbands of wavelet
newlinefilter bank to obtain the directional subbands. Then, the denoised detail coefficients are
newlinedetermined by the Bayes Least Squares (BLS) estimator from noisy image subband
newlinecoefficients modelled as the Gaussian Scale Mixture (GSM).
newlineThe HWQDFB-based denoising scheme is experimented with images of
newlinediversified characteristics like Lena, Barbara, boat, pepper, circuit and cameraman. It
newlinereduces blocking, ringing and staircase artifacts and scratch phenomena in smooth
newlineregions with satisfactory visual quality which is measured by visual inspection and
newlineperformance measures like Structural Similarity Index Metric (SSIM) and Figure of
newlineMerit (FOM). Also, it improves the Peak Signal-to-Noise Ratio (PSNR) with less
newlinecomputational complexity. But at high noise densities, this algorithm fails to preserve
newlineedges, and fewer artifacts are present in the denoised image. To overcome this
newlineslimitation, the Subsampled Pyramid and Nonsubsampled Directional Filter Bank
newline(SPNSDFB)-based image