Fusion of clahe-based image enhancement with fuzzy set theory on field image

Field image can be defined as image captured from handphone or any mobile device in open or outdoor environment. Field image is also known as low quality, low resolution, noise and affected background. In contrast, image captured in lab or studio is a high-quality image taken in a proper setup us...

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Main Author: Albahari, Elmaliana
Format: Thesis
Language:English
Published: 2021
Subjects:
Online Access:http://psasir.upm.edu.my/id/eprint/104003/
http://psasir.upm.edu.my/id/eprint/104003/1/ELMALIANA%20BINTI%20ALBAHARI%20-%20IR.pdf
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author Albahari, Elmaliana
author_facet Albahari, Elmaliana
author_sort Albahari, Elmaliana
building UPM Institutional Repository
collection Online Access
description Field image can be defined as image captured from handphone or any mobile device in open or outdoor environment. Field image is also known as low quality, low resolution, noise and affected background. In contrast, image captured in lab or studio is a high-quality image taken in a proper setup using high specification device. In agriculture, field leaf image is commonly used to identify plant disease. Accurate detection of plant disease is needed to strengthen the field of agriculture and economy of the country. The disadvantages of field leaf image, are low resolution, low contrast, blur and unsharp due to inconsistent setting or environment exposures. Image enhancement method helps to improve image quality, reduce impulsive noise, and sharpen the edges of field leaf image. In this study, measurement of contrast level is used to compare the quality between field leaf image and image taken in the studio (lab image). High quality image has high contrast value and it shows that lab image has high contrast value. Therefore, this research is focus on field leaf image enhancement to improve the quality of the image and make it as same quality as lab image. This research presents a framework of fusion techniques namely, Contrast-Limited Adaptive Histogram Equalization (CLAHE), Unsharp Masking (USM) and Fuzzy theory. CLAHE-based and USM image enhancement techniques are widely used to enhance and sharpen the edge of field leaf image. However, the drawback of these techniques is the field leaf image is still in low contrast and not as same quality as the lab image. To further improve the quality of field leaf image, combine the existing framework with Fuzzy Set Theory. Furthermore, there are significant difference when applying the framework in global and local images. Therefore, comparison the performance of the framework is done between global and local images. The result of the proposed image enhancement framework is compared with the lab image as a benchmark. From the results shows that the proposed image enhancement framework produces better quality of field leaf image and required minimum processing time. The evaluation measurement methods used in this research are Contrast Value, Contrast Difference (DC), Contrast Improvement Index (CII) and Peak- Signal-Noise-Ratio (PSNR). The proposed fusion framework proved that field leaf image produces better quality image where the CII value increased from 86% to 94%. It also shows that local-based image enhancement with 4x4 patches produce better quality from global-based image enhancement.
first_indexed 2025-11-15T13:44:30Z
format Thesis
id upm-104003
institution Universiti Putra Malaysia
institution_category Local University
language English
last_indexed 2025-11-15T13:44:30Z
publishDate 2021
recordtype eprints
repository_type Digital Repository
spelling upm-1040032023-07-05T01:49:43Z http://psasir.upm.edu.my/id/eprint/104003/ Fusion of clahe-based image enhancement with fuzzy set theory on field image Albahari, Elmaliana Field image can be defined as image captured from handphone or any mobile device in open or outdoor environment. Field image is also known as low quality, low resolution, noise and affected background. In contrast, image captured in lab or studio is a high-quality image taken in a proper setup using high specification device. In agriculture, field leaf image is commonly used to identify plant disease. Accurate detection of plant disease is needed to strengthen the field of agriculture and economy of the country. The disadvantages of field leaf image, are low resolution, low contrast, blur and unsharp due to inconsistent setting or environment exposures. Image enhancement method helps to improve image quality, reduce impulsive noise, and sharpen the edges of field leaf image. In this study, measurement of contrast level is used to compare the quality between field leaf image and image taken in the studio (lab image). High quality image has high contrast value and it shows that lab image has high contrast value. Therefore, this research is focus on field leaf image enhancement to improve the quality of the image and make it as same quality as lab image. This research presents a framework of fusion techniques namely, Contrast-Limited Adaptive Histogram Equalization (CLAHE), Unsharp Masking (USM) and Fuzzy theory. CLAHE-based and USM image enhancement techniques are widely used to enhance and sharpen the edge of field leaf image. However, the drawback of these techniques is the field leaf image is still in low contrast and not as same quality as the lab image. To further improve the quality of field leaf image, combine the existing framework with Fuzzy Set Theory. Furthermore, there are significant difference when applying the framework in global and local images. Therefore, comparison the performance of the framework is done between global and local images. The result of the proposed image enhancement framework is compared with the lab image as a benchmark. From the results shows that the proposed image enhancement framework produces better quality of field leaf image and required minimum processing time. The evaluation measurement methods used in this research are Contrast Value, Contrast Difference (DC), Contrast Improvement Index (CII) and Peak- Signal-Noise-Ratio (PSNR). The proposed fusion framework proved that field leaf image produces better quality image where the CII value increased from 86% to 94%. It also shows that local-based image enhancement with 4x4 patches produce better quality from global-based image enhancement. 2021-07 Thesis NonPeerReviewed text en http://psasir.upm.edu.my/id/eprint/104003/1/ELMALIANA%20BINTI%20ALBAHARI%20-%20IR.pdf Albahari, Elmaliana (2021) Fusion of clahe-based image enhancement with fuzzy set theory on field image. Masters thesis, Universiti Putra Malaysia. Imaging systems - Image quality Fuzzy sets
spellingShingle Imaging systems - Image quality
Fuzzy sets
Albahari, Elmaliana
Fusion of clahe-based image enhancement with fuzzy set theory on field image
title Fusion of clahe-based image enhancement with fuzzy set theory on field image
title_full Fusion of clahe-based image enhancement with fuzzy set theory on field image
title_fullStr Fusion of clahe-based image enhancement with fuzzy set theory on field image
title_full_unstemmed Fusion of clahe-based image enhancement with fuzzy set theory on field image
title_short Fusion of clahe-based image enhancement with fuzzy set theory on field image
title_sort fusion of clahe-based image enhancement with fuzzy set theory on field image
topic Imaging systems - Image quality
Fuzzy sets
url http://psasir.upm.edu.my/id/eprint/104003/
http://psasir.upm.edu.my/id/eprint/104003/1/ELMALIANA%20BINTI%20ALBAHARI%20-%20IR.pdf