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基于亮度补偿的迭代式非均质图像去雾算法

Brightness Compensation based Iterative Non-homogeneous Image Dehazing

  • 摘要: 针对现有图像去雾方法无法有效去除非均质雾霾以及多次去雾导致图像整体变暗等问题, 提出一种基于亮度补偿的迭代式非均质图像去雾算法框架, 其主要包含图像去雾和亮度补偿两个模块. 在每一轮迭代中, 先通过图像去雾模块增强图像的对比度, 降低图像中的雾霾浓度, 再通过亮度补偿模块弥补图像去雾模块所造成的亮度损失, 使得亮度补偿结果不但保持了先前的图像去雾效果, 而且达到了图像去雾处理之前的亮度水平, 为下一轮进一步提升图像的去雾效果创造了好的条件. 在亮度补偿模块中, 根据图像去雾前后的亮度变化设计了一个亮度补偿算子, 建立了一种基于亮度补偿系数的自适应亮度补偿机制, 不但能够恢复图像的原有亮度, 而且还能够提升图像的对比度, 进一步助力图像的去雾过程. 在FiveK-Haze、SOTS测试集以及Real-Haze真实雾霾数据集上的大量实验结果表明, 所提出的算法在处理非均质雾霾图像上表现出色, 去雾结果具有良好的亮度、对比度和颜色饱和度, 在常用的峰值信噪比、结构相似度和雾霾浓度等评价指标上均优于已有方法.

     

    Abstract: In order to solve the problems that existing image dehazing methods cannot effectively remove non-homogeneous haze and their iterative dehazing results takes on overall darkening effects, a brightness compensation based iterative non-homogeneous image dehazing algorithm framework is proposed with the image dehazing module and the brightness compensation module. In each iteration, the image dehazing module is first employed to enhance the contrast of the image and reduce the haze density. Subsequently, the brightness compensation module is utilized to make up for the brightness loss caused by the image dehazing module, ensuring that the results of brightness compensation not only maintain the previous image dehazing effect but also achieve the original brightness level before the dehazing procedure. This process creates favorable conditions for further improving the dehazing effect of the image in the next iteration. In the brightness compensation module, a brightness compensation operator is designed according to the brightness changes before and after the image dehazing module, and a brightness compensation coefficients based adaptive brightness compensation mechanism is established, which can not only restore the original brightness of the image, but also improve the contrast of the image which can further boost the image dehazing effects. Extensive experimental results on the FiveK-HAZE, SOTS test set, and Real-Haze dataset demonstrate the outstanding performance of the proposed algorithm in handling non-homogeneous haze images. The dehazed results exhibit excellent brightness, contrast, and color saturation. Our algorithm outperforms existing methods in commonly used evaluation metrics such as peak signal-to-noise ratio, structural similarity, and haze density.

     

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