Zhang Xudong, Song Mingyue, Fan Zhiguo, Jin Haihong
Opt Express. 2022 Nov 7;30(23):42097-42113. doi: 10.1364/OE.472886.
Polarization-based dehazing methods can enhance the quality of haze images. However, existing methods tend to a manual selection of sky area and bias coefficient to estimate the degree of polarization (DoP) of the airlight, which leads to inaccurate estimation of the airlight. Aiming at the problem, a reconstruction algorithm based on the blind separation model of polarized orthogonal airlight is proposed. Importantly, the depth-dependent DoP of the airlight is automatically estimated without manual selection of sky area and bias coefficient. To reduce the interference of white objects on the estimation of airlight at infinity, an adaptive estimation method using the deviation between the DoP of the airlight and incident light is proposed. In order to accurate estimate the airlight from the airlight at infinity, a blind separation model of the airlight with multi-regularization constraints is established based on the decomposition of the airlight at infinity into a pair of polarized components with orthogonal angles. The experimental results show that the method effectively improves the visibility of scenes under different haze concentrations, especially in dense or heavy haze weather.
基于偏振的去雾方法可以提高雾天图像的质量。然而,现有方法往往需要手动选择天空区域和偏置系数来估计大气光的偏振度(DoP),这导致对大气光的估计不准确。针对这一问题,提出了一种基于偏振正交大气光盲分离模型的重建算法。重要的是,无需手动选择天空区域和偏置系数,就能自动估计与深度相关的大气光DoP。为了减少白色物体对无穷远处大气光估计的干扰,提出了一种利用大气光DoP与入射光之间偏差的自适应估计方法。为了从无穷远处的大气光中准确估计大气光,基于将无穷远处的大气光分解为一对正交角度的偏振分量,建立了具有多正则化约束的大气光盲分离模型。实验结果表明,该方法有效地提高了不同雾浓度场景下的能见度,特别是在浓雾或重雾天气中。