Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image

In this dissertation, an improvement to Quantized Adaptive Switching Median filter (QSAM) has been done, to make it more efficient in reducing high density fixedvalued impulse noise from grayscale digital images. QSAM uses the switching approach, where it has noise detection and noise cancellatio...

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Main Author: Abdalameer, Ahmed Khaldoon
Format: Thesis
Language:English
Published: 2017
Subjects:
Online Access:http://eprints.usm.my/37339/
http://eprints.usm.my/37339/1/AHMED_KHALDOON_ABDALAMEER_24_Pages.pdf
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author Abdalameer, Ahmed Khaldoon
author_facet Abdalameer, Ahmed Khaldoon
author_sort Abdalameer, Ahmed Khaldoon
building USM Institutional Repository
collection Online Access
description In this dissertation, an improvement to Quantized Adaptive Switching Median filter (QSAM) has been done, to make it more efficient in reducing high density fixedvalued impulse noise from grayscale digital images. QSAM uses the switching approach, where it has noise detection and noise cancellation blocks. This approach minimizes unwanted changes from the filtering process. QSAM also uses adaptive approach, where the filter size is adaptable to the local noise content. QSAM has two main stages. In the first stage, the image is filtered using the filtering window with quantized size. In the second stage, the image is filtered using adaptive window size. Improvement to QSAM has been carried out by replacing the formula used to restore the corrupted pixel. Instead of using the local median value, this proposed method uses the average of the local mean and local median values. Experimental results using three standard grayscale images of size 512 512 pixels show that the proposed method has the ability to restore the corrupted images even up to 95% of corruption. As compared to other thirteen median filters, the proposed method had the lowest Mean Square Error (MSE) and produce outputs with the best visual appearance.
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institution Universiti Sains Malaysia
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language English
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publishDate 2017
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spelling usm-373392019-04-12T05:25:05Z http://eprints.usm.my/37339/ Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image Abdalameer, Ahmed Khaldoon TK1-9971 Electrical engineering. Electronics. Nuclear engineering In this dissertation, an improvement to Quantized Adaptive Switching Median filter (QSAM) has been done, to make it more efficient in reducing high density fixedvalued impulse noise from grayscale digital images. QSAM uses the switching approach, where it has noise detection and noise cancellation blocks. This approach minimizes unwanted changes from the filtering process. QSAM also uses adaptive approach, where the filter size is adaptable to the local noise content. QSAM has two main stages. In the first stage, the image is filtered using the filtering window with quantized size. In the second stage, the image is filtered using adaptive window size. Improvement to QSAM has been carried out by replacing the formula used to restore the corrupted pixel. Instead of using the local median value, this proposed method uses the average of the local mean and local median values. Experimental results using three standard grayscale images of size 512 512 pixels show that the proposed method has the ability to restore the corrupted images even up to 95% of corruption. As compared to other thirteen median filters, the proposed method had the lowest Mean Square Error (MSE) and produce outputs with the best visual appearance. 2017 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/37339/1/AHMED_KHALDOON_ABDALAMEER_24_Pages.pdf Abdalameer, Ahmed Khaldoon (2017) Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image. Masters thesis, Universiti Sains Malaysia.
spellingShingle TK1-9971 Electrical engineering. Electronics. Nuclear engineering
Abdalameer, Ahmed Khaldoon
Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image
title Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image
title_full Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image
title_fullStr Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image
title_full_unstemmed Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image
title_short Improvement Of Quantized Adaptive Switching Median Filter For Impulse Noise Reduction In Grayscale Digital Image
title_sort improvement of quantized adaptive switching median filter for impulse noise reduction in grayscale digital image
topic TK1-9971 Electrical engineering. Electronics. Nuclear engineering
url http://eprints.usm.my/37339/
http://eprints.usm.my/37339/1/AHMED_KHALDOON_ABDALAMEER_24_Pages.pdf