Fuzzy Logic-Refined Color Channel Transfer Synergism based Image Dehazing

Sriparna Banerjee, Shambhab Chaki, Soham Jana, S. S. Chaudhuri
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Abstract

This paper introduces a novel Refined Color Channel Transfer (RCCT) prior as an improved alternative of existing Color Channel Transfer (CCT) prior. Like CCT, RCCT also compensates the chromatic losses occurring in degraded hazy images by employing a global color transfer strategy but it performs color transfer using well-scaled reference images generated using our proposed Fuzzy logic based reference image generation technique in contrary to CCT which usually performs color transfer using reference images possessing over-enhanced glow (bright) regions and poorly enhanced lowlight regions. The presence of such over-enhanced /poorly enhanced regions in the references images used by CCT significantly affect the visibility of outputs obtained from the dehazing methods where CCT acts as a pre-processing step. To overcome these shortcomings, here we have proposed a novel Fuzzy logic based reference image generation technique which restricts the intensities of generated reference images within allowable ranges by introducing a control parameter ‘k’. A unique value of ‘k’ used for controlling the intensity of each pixel is computed depending upon the properties of the super-pixel in which it belongs, using a novel set of Fuzzy Inference (FI) rules which facilitates the production of visually improved outputs and also enables RCCT to serve as an ideal preprocessing step of various daytime, nighttime and underwater dehazing methods which is experimentally proven in this work.
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基于模糊逻辑-精细色彩通道传递协同的图像去雾
本文介绍了一种新的改进的彩色通道转移(RCCT)先验,作为现有彩色通道转移(CCT)先验的改进替代方案。与CCT一样,RCCT也通过采用全局色彩转移策略来补偿退化的模糊图像中发生的色彩损失,但它使用使用我们提出的基于模糊逻辑的参考图像生成技术生成的尺度良好的参考图像进行色彩转移,而CCT通常使用具有过度增强的发光(明亮)区域和增强较差的低光区域的参考图像进行色彩转移。在CCT使用的参考图像中,这种过度增强/增强不良区域的存在显著影响了CCT作为预处理步骤的去雾方法获得的输出的可见性。为了克服这些缺点,我们提出了一种新的基于模糊逻辑的参考图像生成技术,该技术通过引入控制参数“k”将生成的参考图像的强度限制在允许的范围内。用于控制每个像素强度的独特值“k”是根据它所属的超级像素的属性计算的,使用一组新的模糊推理(FI)规则,这有助于产生视觉上改进的输出,也使RCCT能够作为各种白天,夜间和水下除雾方法的理想预处理步骤,这在本工作中得到了实验证明。
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