Enhancement dark channel algorithm of color fog image based on the local segmentation

Lijun Yun, Yin Gao, Junsheng Shi, Ling Xu
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引用次数: 2

Abstract

The classical dark channel theory algorithm has yielded good results in the processing of single fog image, but in some larger contrast regions, it appears image hue, brightness and saturation distortion problems to a certain degree, and also produces halo phenomenon. In the view of the above situation, through a lot of experiments, this paper has found some factors causing the halo phenomenon. The enhancement dark channel algorithm of color fog image based on the local segmentation is proposed. On the basis of the dark channel theory, first of all, the classic dark channel theory of mathematical model is modified, which is mainly to correct the brightness and saturation of image. Then, according to the local adaptive segmentation theory, it process the block of image, and overlap the local image. On the basis of the statistical rules, it obtains each pixel value from the segmentation processing, so as to obtain the local image. At last, using the dark channel theory, it achieves the enhanced fog image. Through the subjective observation and objective evaluation, the algorithm is better than the classic dark channel algorithm in the overall and details.
基于局部分割的彩色雾图像暗通道增强算法
经典暗通道理论算法在处理单幅雾图像时取得了较好的效果,但在一些对比度较大的区域,会出现图像色调、亮度和饱和度的一定程度失真问题,并产生光晕现象。针对上述情况,本文通过大量的实验,发现了造成光晕现象的一些因素。提出了一种基于局部分割的彩色雾图像暗通道增强算法。在暗通道理论的基础上,首先对经典暗通道理论的数学模型进行修正,主要是对图像的亮度和饱和度进行校正。然后,根据局部自适应分割理论,对图像块进行处理,对局部图像进行重叠;在统计规则的基础上,从分割处理中得到每个像素的值,从而得到局部图像。最后,利用暗通道理论,实现了增强雾图像。通过主观观察和客观评价,该算法在整体和细节上都优于经典暗通道算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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