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  5. Performance analysis on dictionary learning and sparse representation algorithms
 
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Performance analysis on dictionary learning and sparse representation algorithms

Journal
Multimedia Tools and Applications
ISSN
13807501
Date Issued
2022-05-01
Author(s)
Ng S.M.
Haniza Yazid
Universiti Malaysia Perlis
Mustafa N.
DOI
10.1007/s11042-022-12375-4
Handle (URI)
https://hdl.handle.net/20.500.14170/8293
Abstract
Theoretically, the Super-Resolution (SR) reconstruction scheme is a method which is performed by many applications nowadays for the purpose of generating a High-Resolution (HR) image using the input Low-Resolution (LR) images by filling in the missing high frequency information. In addition, the SR reconstruction implemented based on the theory of sparse representation techniques is known as an effective way to produce HR images using images patches generated from the LR images. In order to improve the quality of denoised images produced by using the sparse representation techniques, a scheme called dictionary learning algorithms could be considered. Thus, the objective of this paper is to provide a performance comparison on the effectiveness of applying the dictionary learning steps with sparse representation algorithms in producing a better denoised image. In this case, the average Peak Signal-to-Noise ratio (PSNR) and Structural Similarity Index Metric (SSIM) values of the denoised image obtained by using Algorithms 1, 2, and 3 which combined the use of dictionary learning and sparse representation algorithms were compared with the values obtained from images produced by applying only sparse regularisation methods. As a conclusion, the denoised images produced by Algorithm 1 in this paper had the greatest average PSNR and SSIM values. Hence, the algorithm with the implementation of the dictionary learning process with sparse representation methods is able to achieve a better result in enhancing the low-resolution images.
Funding(s)
Ministry of Higher Education, Malaysia
Subjects
  • Dictionary learning

  • Image processing

  • Sparse representation...

  • Super-resolution (SR)...

File(s)
research repository notification.pdf (4.4 MB)
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Jan 9, 2026
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Acquisition Date
Jan 9, 2026
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