论文标题
大雨面图像恢复:整合物理降解模型和面部成分指导的对抗学习
Heavy Rain Face Image Restoration: Integrating Physical Degradation Model and Facial Component Guided Adversarial Learning
论文作者
论文摘要
随着智能监视的智能CCTV的最新增加,需要一个新的图像降解,该图像降解需要整合分辨率转换和合成雨模型。例如,在大雨中,CCTV从远处捕获的面部图像在可见性和分辨率方面都显着恶化。与传统的图像降解模型(IDM)不同,例如去除降雨和超分辨率,本研究介绍了一种新的IDM,称为尺度感知的大雨模型,并提出了一种从低分辨率大雨面(LRHR-FI)恢复高分辨率面部图像(HR-FIS)的方法。为此,提出了一个2阶段的网络。第一阶段产生了低分辨率的面部图像(LR-FI),从LRHR-FI中取出大雨以提高可见度。为了意识到这一点,构建了一个可解释的基于IDM的网络,以预测物理参数,例如雨条,传输图和大气光。另外,评估图像重建损失以增强物理参数的估计值。对于第二阶段,旨在重建在第一阶段输出的LR-FIS的HR-FI,面部成分引导的对抗学习(FCGAL)用于增强面部结构表达式。为了专注于信息丰富的面部特征,并加强面部成分的真实性,例如眼睛和鼻子,面对面的引导发电机和面部局部歧视器是为FCGAL设计的。实验结果验证了基于物理基于物理的网络设计和FCGAL的建议方法可以消除大雨,并同时提高分辨率和可见性。此外,提议的重度面部图像恢复优于最先进的大雨,图像到图像翻译和超分辨率的模型。
With the recent increase in intelligent CCTVs for visual surveillance, a new image degradation that integrates resolution conversion and synthetic rain models is required. For example, in heavy rain, face images captured by CCTV from a distance have significant deterioration in both visibility and resolution. Unlike traditional image degradation models (IDM), such as rain removal and superresolution, this study addresses a new IDM referred to as a scale-aware heavy rain model and proposes a method for restoring high-resolution face images (HR-FIs) from low-resolution heavy rain face images (LRHR-FI). To this end, a 2-stage network is presented. The first stage generates low-resolution face images (LR-FIs), from which heavy rain has been removed from the LRHR-FIs to improve visibility. To realize this, an interpretable IDM-based network is constructed to predict physical parameters, such as rain streaks, transmission maps, and atmospheric light. In addition, the image reconstruction loss is evaluated to enhance the estimates of the physical parameters. For the second stage, which aims to reconstruct the HR-FIs from the LR-FIs outputted in the first stage, facial component guided adversarial learning (FCGAL) is applied to boost facial structure expressions. To focus on informative facial features and reinforce the authenticity of facial components, such as the eyes and nose, a face-parsing-guided generator and facial local discriminators are designed for FCGAL. The experimental results verify that the proposed approach based on physical-based network design and FCGAL can remove heavy rain and increase the resolution and visibility simultaneously. Moreover, the proposed heavy-rain face image restoration outperforms state-of-the-art models of heavy rain removal, image-to-image translation, and superresolution.