A No-reference Image Quality Assessment Method for Real Foggy Images

Dianwei Wang, Jing Zhai, Pengfei Han, Jing-Dai Jiang, Xincheng Ren, Yongrui Qin, Zhijie Xu
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引用次数: 4

Abstract

The image quality assessment results for foggy images are of great significance in the objective measurement of image quality and the design and optimization of dehazing algorithm. Initially, to address the issue that there are few no-reference evaluation algorithms for foggy image quality in real scenes, this paper proposes a no-reference quality assessment method for foggy image quality in real scenes. Firstly, we establish a real scene foggy image database and evaluate it subjectively to obtain the mean opinion score (MOS). Then, we propose a feature selection method combining correlation coefficients and union ideas, which can pick out features positively correlated with haze image quality, to simplify the features without affecting the prediction accuracy of the model. Finally, we use the support vector regression method to learn the regression mapping between features and subjective scores of the foggy images, by which we can obtain the image quality assessment results. The experimental results on the database show that the algorithm in this paper is better than other algorithms. The objective image quality evaluation results of the proposed algorithm are in good agreement with the human eye's subjective perception results. Besides, the experimental results prove that the model in this paper has better performance in predicting the quality of the image after defogging.
一种真实雾天图像无参考质量评价方法
雾天图像的图像质量评价结果对于图像质量的客观测量和去雾算法的设计与优化具有重要意义。首先,针对真实场景雾天图像质量无参考评价算法较少的问题,本文提出了一种真实场景雾天图像质量无参考评价方法。首先,建立真实场景雾图像数据库,并对其进行主观评价,得到平均评价分数(MOS);然后,我们提出了一种结合相关系数和联合思想的特征选择方法,该方法可以在不影响模型预测精度的情况下,筛选出与雾霾图像质量正相关的特征,从而简化特征。最后,利用支持向量回归方法学习雾天图像的特征与主观评分之间的回归映射,从而得到图像质量评价结果。在数据库上的实验结果表明,本文算法优于其他算法。该算法的客观图像质量评价结果与人眼的主观感知结果吻合较好。实验结果表明,本文模型对去雾后的图像质量有较好的预测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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