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Perception oriented transmission estimation for high quality image dehazing

机译:面向感知的传输估计,用于高质量图像去雾

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Single image dehazing has captured much attention due to increasing applications. However, state-of-the-art image dehazing algorithms often suffer from undesirable quantization artifacts and noises in heavily hazy regions or sky patches of hazy image where dense scattering often occurs, so that dehazed results may have poor image quality or even lose the original spectral or structural information. To address this problem, we propose a perception oriented transmission estimation method for high quality image dehazing. As the key contribution, a novel transmission model is firstly developed by posing image dehazing as a local contrast optimization problem. This transmission model can flexibly adjust haze removal to accommodate the expected local contrast gain. Specially, this model can lead to a solution which is similar to the one using the dark channel prior, but it is not confined to the dark channel prior assumption. Then, in order to remove haze and simultaneously suppress quantization artifacts and noises, two specific steps are introduced. First, we develop a scattering-aware method via a Bayesian framework to estimate the scattering probability of each pixel in a hazy image. Second, a perceptually adaptive parameter selection scheme is proposed to determine the expected contrast gain for the transmission estimation by taking advantage of the just-noticeable-distortion (JND) model. Experimental results demonstrate that the proposed algorithm can effectively remove haze and suppress undesirable degradation on dehazed images, both quantitatively and qualitatively, when compared with the state-of-the-art algorithms under dense scattering conditions.
机译:由于应用的增加,单图像去雾已引起了广泛的关注。但是,最新的图像去雾算法通常会在经常发生密集散射的重度朦胧区域或朦胧图像的天空斑块中出现不良的量化伪影和噪声,因此,经过模糊处理的结果可能会产生较差的图像质量,甚至会丢失原始图像。光谱或结构信息。为了解决这个问题,我们提出了一种用于高质量图像去雾的面向感知的传输估计方法。作为主要贡献,首先通过将图像去雾化为局部对比度优化问题来开发新颖的传输模型。该传输模型可以灵活地调整除雾度,以适应预期的局部对比度增益。特别地,该模型可以导致与使用暗通道先验的解决方案相似的解决方案,但是它不限于暗通道先验假设。然后,为了消除雾度并同时抑制量化伪像和噪声,引入了两个特定步骤。首先,我们通过贝叶斯框架开发了一种散射感知方法,以估计朦胧图像中每个像素的散射概率。其次,提出了一种感知自适应参数选择方案,通过利用正畸(JND)模型确定用于传输估计的预期对比度增益。实验结果表明,与现有技术在密集散射条件下相比,该算法可以有效地去除雾度,并在定量和定性上抑制雾化图像上的不良降级。

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