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基于自适应暗通道先验的增强循环生成对抗网络用于无配对单图像去雾

Enhanced CycleGAN Network with Adaptive Dark Channel Prior for Unpaired Single-Image Dehazing.

作者信息

Xu Yijun, Zhang Hanzhi, He Fuliang, Guo Jiachi, Wang Zichen

机构信息

Westa College, Southwest University, Chongqing 400715, China.

College of Electronic and Information Engineering, Southwest University, Chongqing 400715, China.

出版信息

Entropy (Basel). 2023 May 26;25(6):856. doi: 10.3390/e25060856.

Abstract

Unpaired single-image dehazing has become a challenging research hotspot due to its wide application in modern transportation, remote sensing, and intelligent surveillance, among other applications. Recently, CycleGAN-based approaches have been popularly adopted in single-image dehazing as the foundations of unpaired unsupervised training. However, there are still deficiencies with these approaches, such as obvious artificial recovery traces and the distortion of image processing results. This paper proposes a novel enhanced CycleGAN network with an adaptive dark channel prior for unpaired single-image dehazing. First, a Wave-Vit semantic segmentation model is utilized to achieve the adaption of the dark channel prior (DCP) to accurately recover the transmittance and atmospheric light. Then, the scattering coefficient derived from both physical calculations and random sampling means is utilized to optimize the rehazing process. Bridged by the atmospheric scattering model, the dehazing/rehazing cycle branches are successfully combined to form an enhanced CycleGAN framework. Finally, experiments are conducted on reference/no-reference datasets. The proposed model achieved an SSIM of 94.9% and a PSNR of 26.95 on the SOTS-outdoor dataset and obtained an SSIM of 84.71% and a PSNR of 22.72 on the O-HAZE dataset. The proposed model significantly outperforms typical existing algorithms in both objective quantitative evaluation and subjective visual effect.

摘要

由于单图像去雾在现代交通、遥感和智能监控等众多应用中具有广泛应用,因此无配对单图像去雾已成为一个具有挑战性的研究热点。最近,基于CycleGAN的方法已被广泛应用于单图像去雾,作为无配对无监督训练的基础。然而,这些方法仍然存在缺陷,如明显的人工恢复痕迹和图像处理结果的失真。本文提出了一种新颖的增强型CycleGAN网络,用于无配对单图像去雾,并采用自适应暗通道先验。首先,利用Wave-Vit语义分割模型实现暗通道先验(DCP)的自适应,以准确恢复透射率和大气光。然后,利用从物理计算和随机采样方法得出的散射系数来优化重雾过程。通过大气散射模型进行桥接,成功地将去雾/重雾循环分支组合起来,形成一个增强型CycleGAN框架。最后,在参考/无参考数据集上进行了实验。所提出的模型在SOTS室外数据集上的结构相似性(SSIM)达到94.9%,峰值信噪比(PSNR)达到26.95;在O-HAZE数据集上的SSIM达到84.71%,PSNR达到22.72。所提出的模型在客观定量评估和主观视觉效果方面均显著优于典型的现有算法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aa79/10297188/dba8d440c924/entropy-25-00856-g001.jpg

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