Spatial And Spectral Quality Evaluation Based On Edges Regions Of Satellite Image Fusion
Firouz Abdullah Al-Wassai, N. V. Kalyankar, Ali A. Al-Zaky

TL;DR
This paper proposes a new objective method for evaluating the spatial resolution and color distortion in fused satellite images by analyzing edge regions using contrast statistical analysis and histogram analysis.
Contribution
It introduces a novel approach to assess spatial resolution and color distortion in fused images based on edge region analysis, addressing gaps in existing evaluation standards.
Findings
Effective edge-based contrast analysis for spatial resolution assessment.
New metrics for color distortion evaluation in fused images.
Improved correlation between edge details and perceived image quality.
Abstract
The Quality of image fusion is an essential determinant of the value of processing images fusion for many applications. Spatial and spectral qualities are the two important indexes that used to evaluate the quality of any fused image. However, the jury is still out of fused image's benefits if it compared with its original images. In addition, there is a lack of measures for assessing the objective quality of the spatial resolution for the fusion methods. Therefore, an objective quality of the spatial resolution assessment for fusion images is required. Most important details of the image are in edges regions, but most standards of image estimation do not depend upon specifying the edges in the image and measuring their edges. However, they depend upon the general estimation or estimating the uniform region, so this study deals with new method proposed to estimate the spatial resolution…
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Taxonomy
TopicsAdvanced Image Fusion Techniques · Remote-Sensing Image Classification · Infrared Target Detection Methodologies
