A Review on Different Image De-noising Methods
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Abstract
Image de-noising is a classical yet fundamental problem in low level vision, as well as an ideal test bed to evaluate various statistical image modeling methods. The restoration of a blurry or noisy image is commonly performed with a MAP estimator, which maximizes a posterior probability to reconstruct a clean image from a degraded image. A MAP estimator, when us ed with a sparse gradient image prior, reconstructs piecewise smooth images and typically removes textures that are important for visual realism. One of the most challenging problems in image de - noising is how to preserve the fine scale texture structures while removing noise. Various natural image priors, such as gradient based prior, nonlocal self - similarity prior, and sparsity prior, have been extensively exploited for noise removal. The de - noising algorithms based on these priors, however, tend to smoo th the detailed image textures, degrading the image visual quality. To address this problem, we propose a texture enhanced image de - noising (TEID) method by enforcing the gradient distribution of the de - noised image to be close to the estimated gradient d istribution of the original image. Another method is an alternative de - convolution method called iterative distribution reweighting (IDR) which imposes a global constraint on gradients so that are constructed image should have a gradient distribution simil ar to a reference distribution.
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How to Cite
, K. P. H. N. M. (2014). A Review on Different Image De-noising Methods. International Journal on Recent and Innovation Trends in Computing and Communication, 2(1), 155–159. https://doi.org/10.17762/ijritcc.v2i1.2932
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