计算机科学
一般化
失真(音乐)
航程(航空)
图像(数学)
感知
人工智能
图像复原
质量(理念)
湍流
机器学习
算法
图像处理
物理
数学
工程类
气象学
航空航天工程
生物
量子力学
数学分析
神经科学
计算机网络
放大器
带宽(计算)
作者
Ajay Jaiswal,Xingguang Zhang,Stanley H. Chan,Zhangyang Wang
标识
DOI:10.1109/iccv51070.2023.01118
摘要
Image distortion by atmospheric turbulence is a stochastic degradation, which is a critical problem in long-range optical imaging systems. A number of research has been conducted during the past decades, including model-based and emerging deep-learning solutions with the help of synthetic data. Although fast and physics-grounded simulation tools have been introduced to help the deep-learning models adapt to real-world turbulence conditions recently, the training of such models only relies on the synthetic data and ground truth pairs. This paper proposes the Physics-integrated Restoration Network (PiRN) to bring the physics-based simulator directly into the training process to help the network to disentangle the stochasticity from the degradation and the underlying image. Furthermore, to overcome the "average effect" introduced by deterministic models and the domain gap between the synthetic and real-world degradation, we further introduce PiRN with Stochastic Refinement (PiRN-SR) to boost its perceptual quality. Overall, our PiRN and PiRN-SR improve the generalization to real-world unknown turbulence conditions and provide a state-of-the-art restoration in both pixel-wise accuracy and perceptual quality. Our codes are available at https://github.com/VITA-Group/PiRN.
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