Cui Guangmang, Ma Qiong, Zhao Jufeng, Yang Shunjie, Chen Ziyi
J Opt Soc Am A Opt Image Sci Vis. 2023 Jun 1;40(6):1165-1182. doi: 10.1364/JOSAA.484423.
When dealing with outdoor hazy images, traditional image dehazing algorithms are often affected by the sky regions, resulting in appearing color distortions and detail loss in the restored image. Therefore, we proposed an optimized dark channel and haze-line priors method based on adaptive sky segmentation to improve the quality of dehazed images including sky areas. The proposed algorithm segmented the sky region of a hazy image by using the Gaussian fitting curve and prior information of sky color rules to calculate the adaptive threshold. Then, an optimized dark channel prior method was used to obtain the light distribution image of the sky region, and the haze-line prior method was utilized to calculate the transmission of the foreground region. Finally, a minimization function was designed to optimize the transmission, and the dehazed images were restored with the atmospheric scattering model. Experimental results demonstrated that the presented dehazing framework could preserve more details of the sky area as well as restore the color constancy of the image with better visual effects. Compared with other algorithms, the results of the proposed algorithm could achieve higher peak signal-to-noise ratio (PSNR) and structural similarity index (SSIM) evaluation values and provide the restored image with subjective visual effects closer to the real scene.
在处理户外模糊图像时,传统的图像去雾算法常常受到天空区域的影响,导致恢复后的图像出现颜色失真和细节丢失。因此,我们提出了一种基于自适应天空分割的优化暗通道和雾线先验方法,以提高包括天空区域在内的去雾图像质量。该算法利用高斯拟合曲线和天空颜色规则的先验信息对模糊图像的天空区域进行分割,计算自适应阈值。然后,采用优化的暗通道先验方法获得天空区域的光照分布图像,并利用雾线先验方法计算前景区域的透射率。最后,设计一个最小化函数来优化透射率,并利用大气散射模型恢复去雾图像。实验结果表明,所提出的去雾框架能够保留天空区域的更多细节,同时恢复图像的颜色恒定性,具有更好的视觉效果。与其他算法相比,该算法的结果能够获得更高的峰值信噪比(PSNR)和结构相似性指数(SSIM)评估值,并为恢复后的图像提供更接近真实场景的主观视觉效果。