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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Single Image Numerical Iterative Dehazing Method Based on Local Physical Features
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Single Image Numerical Iterative Dehazing Method Based on Local Physical Features

机译:基于局部物理特征的单个图像数值迭代脱离方法

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摘要

To address the hazy image degradation problem, we introduce a single image numerical iterative dehazing method based on local physical features. The method involves three components: region division based on haze density, local atmospheric light estimation and transmission map estimation, and recovery of hazy image scene radiance by using an iterative algorithm. Because of the nonuniform haze density within an image, we first employ the affinity propagation (AP) clustering algorithm to divide a hazy image into different haze density regions. Second, to reflect the difference in atmospheric light among regions and avoid the generation of halo artifacts in recovered images, we estimate the local atmospheric light in each region to replace the global atmospheric light and then estimate the transmission via a dark channel prior. Finally, an iterative dehazing algorithm, which can be used to not only further optimize local atmospheric light and transmission but also remove haze completely, is developed based on a physical model. Experimental results illustrate that our method can effectively improve the quality of a foggy image without sacrificing color fidelity and can retain image details sufficiently.
机译:为了解决朦胧的映像劣化问题,我们基于本地物理特征引入单个图像数值迭代除虫方法。该方法涉及三个组件:基于雾霾密度,局部大气光估计和传输映射映射估计的区域分割,以及通过使用迭代算法恢复朦胧图像场景辐射。由于图像内的非均匀雾霾密度,我们首先采用亲和力传播(AP)聚类算法将朦胧图像划分为不同的雾霾密度区域。其次,为了反映区域之间的大气光的差异,避免在恢复的图像中产生晕圈伪影,我们估计每个区域中的局部大气光以更换全局大气光,然后在先前通过暗通道估计变速器。最后,基于物理模型开发了一种可用于进一步优化局部大气光和变速器的迭代脱水算法,而且还可以完全去除雾度。实验结果表明,我们的方法可以在不牺牲颜色保真度的情况下有效地提高有雾图像的质量,并且可以充分地保持图像细节。

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