研究目的
To develop a blind/no-reference image quality assessment model for evaluating image contrast by analyzing the inter-relationship between contrast degradation and image histogram features.
研究成果
The proposed HEFCS model effectively assesses image contrast quality using eigen-histograms and SVR, outperforming most NR-IQA models and competing with FR and RR methods. It has low computational complexity and is suitable for real-world applications. Future work will explore its use for general-purpose IQA.
研究不足
The method is specifically designed for contrast distortions and may not generalize well to other types of image distortions. The performance depends on the training database, and cross-database validation shows variability. The patch selection is random, which may not fully simulate human visual system fixations.
1:Experimental Design and Method Selection:
The methodology involves extracting local histograms from image patches, performing principal component analysis (PCA) to obtain eigen-histograms and eigenvalues, and using support vector regression (SVR) for quality prediction.
2:Sample Selection and Data Sources:
Five public image quality databases are used: CID2013, CCID2014, CSIQ, TID2008, and TID2013, containing contrast-distorted images with subjective scores (MOS or DMOS).
3:List of Experimental Equipment and Materials:
A PC with
4:67-GHz Intel Core i5 CPU and 4 GB of RAM, MATLAB R2013b, and the libSVM package for SVR implementation. Experimental Procedures and Operational Workflow:
For each image, randomly select P patches, compute histograms (gray, RGB, or CGD), form a histogram matrix, perform PCA to get eigenvalues and eigenvectors, extract HEF vectors, and use SVR to predict quality scores.
5:Data Analysis Methods:
Performance is evaluated using Pearson linear correlation coefficient (PLCC), Spearman rank order correlation (SROCC), Kendall rank order correlation (KROCC), and root mean square error (RMSE), with cross-validation and statistical significance tests.
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