A Retinex Prior to Multi-Scale Fusion for Single Image Dehazing

Paulami Purkayastha, M. Choudhry, Manjeet Kumar
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Abstract

This Image-Dehazing paper proposes to combine the Multi-Scale Fusion technique with the Retinex Algorithm. The paper proposes to extract reflectance matrices and incorporate them into the multi-scale fusion algorithm. The technique proposed aims to reduce the halo effect observed in image-dehazing applications and related works for heavily hazy images. Moreover, an improvement in the quality of the output using the proposed novel algorithm is observed. Quantitative, as well as a visual display of results, using the DENSE HAZE dataset, give an accurate interpretation of the effectiveness of the proposed work. The best value of Structural Similarity Index (SSIM) obtained is 0.9128 which shows a 62% increase in image quality as compared to average SSIM values of previously known methods. The Peak Signal to Noise Ratio (PSNR) and Mean Square Error (MSE) show improvement by 78% (TT Playroom) and 95% (Castle) respectively. To allow analysis with regards to pixel compression that may have resulted during the process, two No Reference Image Quality Metrics have been also computed.
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一种基于多尺度融合的单幅图像去雾方法
本文提出了将多尺度融合技术与Retinex算法相结合的图像去雾方法。本文提出提取反射矩阵并将其纳入多尺度融合算法。该技术的目的是为了减少在严重雾霾图像去雾应用和相关工作中观察到的光晕效应。此外,使用所提出的新算法可以观察到输出质量的改善。使用密集雾霾数据集的定量和可视化结果显示,对所建议工作的有效性给出了准确的解释。得到的结构相似指数(SSIM)的最佳值为0.9128,与之前已知方法的平均SSIM值相比,图像质量提高了62%。峰值信噪比(PSNR)和均方误差(MSE)分别提高了78% (TT Playroom)和95% (Castle)。为了分析过程中可能产生的像素压缩,还计算了两个无参考图像质量指标。
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