Single image haze removal algorithm using pixel-based airlight constraints

Zhenwei Gao, Yongqiang Bai
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引用次数: 6

Abstract

Fast single image dehazing has been a challenging problem in many fields, such as computer vision and real-time applications. The existing image dehazing algorithms cannot achieve a trade-off between the dehazing performance and the computational complexity. The proposed approach first applies the mean filter twice to estimate airlight, which include pixel-based dark channel and bright channel constraints. And then the relationship between channel values of the restored image and atmospheric light is qualitatively analyzed to give the optimum estimate of atmospheric light. Using the airlight and atmospheric light, we can easily restore the scene radiance via the atmospheric scattering model. Compared with others, the main advantage of the proposed approach is its high speed and significant visibility improvement even in the sky and white areas. This speed allows the enhanced haze image to be applied in real-time processing applications. A comparative study and quantitative evaluation are proposed with a few other state of the art algorithms which demonstrates that similar or better quality results are obtained.
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使用基于像素的空气光约束的单幅图像雾度消除算法
在计算机视觉和实时应用等许多领域,快速单幅图像去毛刺一直是一个具有挑战性的问题。现有的图像去毛刺算法无法在去毛刺性能和计算复杂度之间取得平衡。本文提出的方法首先应用两次均值滤波来估计空气亮度,其中包括基于像素的暗通道和亮通道约束。然后定性分析还原图像的通道值与大气光之间的关系,给出大气光的最佳估计值。利用空气光和大气光,我们可以通过大气散射模型轻松还原场景辐射度。与其他方法相比,建议方法的主要优点是速度快,即使在天空和白色区域也能显著改善能见度。这种速度使得增强后的雾霾图像可以应用于实时处理应用中。我们提出了与其他几种最先进算法的比较研究和定量评估,结果表明可以获得类似或更高质量的结果。
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