研究目的
To propose a multi-scale fidelity measure for objective quality assessment of image fusion that improves upon existing methods by incorporating multi-scale computation and structural similarity, and to validate its performance through experiments.
研究成果
The proposed MS-QW measure significantly improves image fusion quality assessment by enhancing stability, discrimination power, and correlation with subjective evaluations. It demonstrates potential for applications in automatic parameter selection and input image subset selection, with future work needed for parameter calibration and broader application testing.
研究不足
The study relies on specific databases and fusion methods, which may limit generalizability. The computational cost increases with the number of scales and image size, and parameters are inherited from previous works without optimization for all scenarios.
1:Experimental Design and Method Selection:
The study designs experiments to validate the proposed MS-QW measure across different imaging scenarios, including general-purpose assessment, statistical analysis, and correlation with subjective evaluations. It uses existing databases and fusion methods for comparison.
2:Sample Selection and Data Sources:
Utilizes the 2015 Waterloo IVC MEF image database, TNO night vision database, and Image Fusion Toolbox datasets for medical, infra-red, multi-focus, and painting images.
3:List of Experimental Equipment and Materials:
Employs a computer with Intel Core i5 @1.80GHz and 4GB RAM, and MATLAB software for implementation and computation.
4:80GHz and 4GB RAM, and MATLAB software for implementation and computation.
Experimental Procedures and Operational Workflow:
4. Experimental Procedures and Operational Workflow: Applies the MS-QW measure to fused images from various algorithms, computes quality scores, performs statistical tests (e.g., Friedman test, t-tests with Bonferroni correction), and correlates with subjective scores using SRCC and KRCC.
5:Data Analysis Methods:
Uses variance analysis, hypothesis testing, and correlation coefficients to evaluate measure performance, stability, and agreement with human perceptions.
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