Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement Operator

Contrast enhancement of images is a crucial topic in image processing that improves the quality of images. The methods of image enhancement are classified into three types, including the histogram method, the fuzzy logic method, and the optimal method. Studies on image enhancement are often based on...

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Main Authors: Nguyen Tu Trung, Xuan-Hien Le, Tran Manh Tuan
Format: Article
Language:English
Published: MDPI AG 2023-03-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/15/6/1645
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author Nguyen Tu Trung
Xuan-Hien Le
Tran Manh Tuan
author_facet Nguyen Tu Trung
Xuan-Hien Le
Tran Manh Tuan
author_sort Nguyen Tu Trung
collection DOAJ
description Contrast enhancement of images is a crucial topic in image processing that improves the quality of images. The methods of image enhancement are classified into three types, including the histogram method, the fuzzy logic method, and the optimal method. Studies on image enhancement are often based on the rules: if it is bright, then it is brighter; if it is dark, then it is darker, using a global approach. Thus, it is hard to enhance objects in all dark and light areas, as in satellite images. This study presents a novel algorithm for improving satellite images, called remote sensing image enhancement based on cluster enhancement (RSIECE). First, the input image is clustered by the algorithm of fuzzy semi-supervised clustering. Then, the upper bound and lower bound are estimated according to the cluster. Next, a sub-algorithm is implemented for clustering enhancement using an enhancement operator. For each pixel, the gray levels for each channel (R, G, B) are transformed with this sub-algorithm to generate new corresponding gray levels because after clustering, pixels belong to clusters with the corresponding membership values. Therefore, the output gray level value will be aggregated from the enhanced gray levels by the sub-algorithm with the weight of the corresponding cluster membership value. The test results demonstrate that the suggested algorithm is superior to several recently developed approaches.
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spelling doaj.art-3c3d78ed764b4a2abeaf8716ed5b14c42023-11-17T13:39:59ZengMDPI AGRemote Sensing2072-42922023-03-01156164510.3390/rs15061645Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement OperatorNguyen Tu Trung0Xuan-Hien Le1Tran Manh Tuan2Faculty of Information Technology, Thuyloi University, 175 Tay Son, Hanoi 10000, VietnamFaculty of Water Resouces Engineering, Thuyloi University, 175 Tay Son, Hanoi 10000, VietnamFaculty of Information Technology, Thuyloi University, 175 Tay Son, Hanoi 10000, VietnamContrast enhancement of images is a crucial topic in image processing that improves the quality of images. The methods of image enhancement are classified into three types, including the histogram method, the fuzzy logic method, and the optimal method. Studies on image enhancement are often based on the rules: if it is bright, then it is brighter; if it is dark, then it is darker, using a global approach. Thus, it is hard to enhance objects in all dark and light areas, as in satellite images. This study presents a novel algorithm for improving satellite images, called remote sensing image enhancement based on cluster enhancement (RSIECE). First, the input image is clustered by the algorithm of fuzzy semi-supervised clustering. Then, the upper bound and lower bound are estimated according to the cluster. Next, a sub-algorithm is implemented for clustering enhancement using an enhancement operator. For each pixel, the gray levels for each channel (R, G, B) are transformed with this sub-algorithm to generate new corresponding gray levels because after clustering, pixels belong to clusters with the corresponding membership values. Therefore, the output gray level value will be aggregated from the enhanced gray levels by the sub-algorithm with the weight of the corresponding cluster membership value. The test results demonstrate that the suggested algorithm is superior to several recently developed approaches.https://www.mdpi.com/2072-4292/15/6/1645constrast enhancementdark satellite imagesobjectclusterclusteringgrouping
spellingShingle Nguyen Tu Trung
Xuan-Hien Le
Tran Manh Tuan
Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement Operator
Remote Sensing
constrast enhancement
dark satellite images
object
cluster
clustering
grouping
title Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement Operator
title_full Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement Operator
title_fullStr Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement Operator
title_full_unstemmed Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement Operator
title_short Enhancing Contrast of Dark Satellite Images Based on Fuzzy Semi-Supervised Clustering and an Enhancement Operator
title_sort enhancing contrast of dark satellite images based on fuzzy semi supervised clustering and an enhancement operator
topic constrast enhancement
dark satellite images
object
cluster
clustering
grouping
url https://www.mdpi.com/2072-4292/15/6/1645
work_keys_str_mv AT nguyentutrung enhancingcontrastofdarksatelliteimagesbasedonfuzzysemisupervisedclusteringandanenhancementoperator
AT xuanhienle enhancingcontrastofdarksatelliteimagesbasedonfuzzysemisupervisedclusteringandanenhancementoperator
AT tranmanhtuan enhancingcontrastofdarksatelliteimagesbasedonfuzzysemisupervisedclusteringandanenhancementoperator