Moment Transform-Based Compressive Sensing in Image Processing
T. Kalampokas, G.A. Papakostas

TL;DR
This paper compares moment transforms and DCT in compressive sensing for image denoising, showing that Krawtchouk moments offer more sparsity while DCT achieves higher PSNR, advancing image processing techniques.
Contribution
It introduces a comparison between moment transforms and DCT in compressive sensing for image denoising, highlighting the advantages of Krawtchouk moments in sparsity.
Findings
Krawtchouk moments are 20-30% more sparse than DCT.
DCT achieves a higher PSNR of 30.82 dB.
Moment transforms perform competitively in image denoising.
Abstract
Over the last decades, images have become an important source of information in many domains, thus their high quality has become necessary to acquire better information. One of the important issues that arise is image denoising, which means recovering a signal from inaccurately and/or partially measured samples. This interpretation is highly correlated to the compressive sensing theory, which is a revolutionary technology and implies that if a signal is sparse then the original signal can be obtained from a few measured values, which are much less, than the ones suggested by other used theories like Shannon's sampling theories. A strong factor in Compressive Sensing (CS) theory to achieve the sparsest solution and the noise removal from the corrupted image is the selection of the basis dictionary. In this paper, Discrete Cosine Transform (DCT) and moment transform (Tchebichef,…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Image and Signal Denoising Methods · Advanced Data Compression Techniques
MethodsDiscrete Cosine Transform
