Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite

The use of edges to determine an optimal region of interest (ROI) location is increasingly becoming popular for image deblurring. Recent studies have shown that regions with strong edges tend to produce better deblurring results. In this study, a direct method for ROI localization based on edge r...

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Main Author: Udayakumar, Sanjith
Format: Thesis
Language:English
Published: 2019
Subjects:
Online Access:http://eprints.usm.my/48081/
http://eprints.usm.my/48081/1/Characterization%20And%20Alkaline%20Fusion%20Recovery%20Process%20Of%20Rare%20Earths%20And%20Thorium%20From%20Malaysian%20Monazite.pdf
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author Udayakumar, Sanjith
author_facet Udayakumar, Sanjith
author_sort Udayakumar, Sanjith
building USM Institutional Repository
collection Online Access
description The use of edges to determine an optimal region of interest (ROI) location is increasingly becoming popular for image deblurring. Recent studies have shown that regions with strong edges tend to produce better deblurring results. In this study, a direct method for ROI localization based on edge refinement filter and entropy-based measurement is proposed. Using this method, the randomness of grey level distribution is quantitatively measured, from which the ROI is determined. This method has low computation cost since it contains no matrix operations. The proposed method has been tested using three sets of test images - Dataset I, II and III. Empirical results suggest that the improved edge refinement filter is competitive when compared to the established edge detection schemes and achieves better performance in the Pratt's figure-of-merit (PFoM) and the twofold consensus ground truth (TCGT); averaging at 15.7 % and 28.7 %, respectively. The novelty of the proposed approach lies in the use of this improved filtering strategy for accurate estimation of point spread function (PSF), and hence, a more precise image restoration. As a result, the proposed solutions compare favourably against existing techniques with the peak signal-to-noise ratio (PSNR), kernel similarity (KS) index, and error ratio (ER) averaging at 24.8 dB, 0.6 and 1.4, respectively. Additional experiments involving real blurred images demonstrated the competitiveness of the proposed approach in performing restoration in the absent of PSF.
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format Thesis
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institution Universiti Sains Malaysia
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language English
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publishDate 2019
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spelling usm-480812021-11-17T03:42:10Z http://eprints.usm.my/48081/ Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite Udayakumar, Sanjith T Technology TA401-492 Materials of engineering and construction. Mechanics of materials The use of edges to determine an optimal region of interest (ROI) location is increasingly becoming popular for image deblurring. Recent studies have shown that regions with strong edges tend to produce better deblurring results. In this study, a direct method for ROI localization based on edge refinement filter and entropy-based measurement is proposed. Using this method, the randomness of grey level distribution is quantitatively measured, from which the ROI is determined. This method has low computation cost since it contains no matrix operations. The proposed method has been tested using three sets of test images - Dataset I, II and III. Empirical results suggest that the improved edge refinement filter is competitive when compared to the established edge detection schemes and achieves better performance in the Pratt's figure-of-merit (PFoM) and the twofold consensus ground truth (TCGT); averaging at 15.7 % and 28.7 %, respectively. The novelty of the proposed approach lies in the use of this improved filtering strategy for accurate estimation of point spread function (PSF), and hence, a more precise image restoration. As a result, the proposed solutions compare favourably against existing techniques with the peak signal-to-noise ratio (PSNR), kernel similarity (KS) index, and error ratio (ER) averaging at 24.8 dB, 0.6 and 1.4, respectively. Additional experiments involving real blurred images demonstrated the competitiveness of the proposed approach in performing restoration in the absent of PSF. 2019-11-01 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/48081/1/Characterization%20And%20Alkaline%20Fusion%20Recovery%20Process%20Of%20Rare%20Earths%20And%20Thorium%20From%20Malaysian%20Monazite.pdf Udayakumar, Sanjith (2019) Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite. Masters thesis, Universiti Sains Malaysia.
spellingShingle T Technology
TA401-492 Materials of engineering and construction. Mechanics of materials
Udayakumar, Sanjith
Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite
title Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite
title_full Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite
title_fullStr Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite
title_full_unstemmed Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite
title_short Characterization And Alkaline Fusion Recovery Process Of Rare Earths And Thorium From Malaysian Monazite
title_sort characterization and alkaline fusion recovery process of rare earths and thorium from malaysian monazite
topic T Technology
TA401-492 Materials of engineering and construction. Mechanics of materials
url http://eprints.usm.my/48081/
http://eprints.usm.my/48081/1/Characterization%20And%20Alkaline%20Fusion%20Recovery%20Process%20Of%20Rare%20Earths%20And%20Thorium%20From%20Malaysian%20Monazite.pdf