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基于四叉树分解的自适应图像去雾

Adaptive image dehazing based on quadtree decomposition

  • 摘要: 为了克服现有图像去雾方法的不足,进一步改善图像去雾的效果,采用了一种基于四叉树分解的自适应图像去雾方法。根据标准差对原有雾图像进行迭代的四叉树分解以及天空区域亮度较大且较为平滑的特征,选择均值与标准差的差值最大区域的像素中值作为大气光;根据区域的亮度均值和标准差,以自适应邻域的方式分别计算各个区域的传输率;由估计的大气光和传输率,根据大气散射模型对无雾图像进行估计;最后用自适应的gamma函数优化无雾图像的亮度。结果表明,与最新提出的去雾方法相比,本文中的方法去雾后具有更优的视觉效果,去雾图像的平均梯度和信息熵分别高于现有方法6.56%和1.75%以上,而无参考图像空间质量评估值低于现有方法8.25%以上。这些结果对视觉检测、识别和跟踪等领域的研究是有帮助的。

     

    Abstract: In order to overcome the shortcomings of existing image defogging methods and further improve the effect of image defogging, an adaptive image defogging method based on quadtree decomposition was proposed. According to the standard deviation, the original fog image was decomposed into an iterative quadtree. According to the feature that the sky area was bright and smooth, the median value of the pixel in the area with the largest difference between the mean value and the standard deviation was selected as the atmospheric light. According to the mean and standard deviation of the brightness of the region, the transmission rates of each region were calculated in an adaptive neighborhood manner. According to the estimated atmospheric light and transmission rate, the fog free image was estimated based on the atmospheric scattering model. Finally, the brightness of the fog free image is optimized by the adaptive gamma function. The experimental data show that, the method proposed in this paper has a better visual effect after image defogging compared with the newly proposed defogging methods. The average gradient and information entropy of the defogging image are respectively 6.56% and 1.75% higher than those of the existing methods respectively, while blind/referenceless image spatial quality evaluator is 8.25% lower than the existing methods. This research is helpful to visual detection, recognition and tracking.

     

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