降级(电信)
接头(建筑物)
红外线的
计算机科学
湍流
估计
计算机视觉
人工智能
工程类
物理
电信
光学
系统工程
结构工程
气象学
作者
Ziran Zhang,Yu-Hang Tang,Zhigang Wang,Yueting Chen,Bin Zhao
出处
期刊:Cornell University - arXiv
日期:2024-08-08
标识
DOI:10.48550/arxiv.2408.04227
摘要
Infrared imaging and turbulence strength measurements are in widespread demand in many fields. This paper introduces a Physical Prior Guided Cooperative Learning (P2GCL) framework to jointly enhance atmospheric turbulence strength estimation and infrared image restoration. P2GCL involves a cyclic collaboration between two models, i.e., a TMNet measures turbulence strength and outputs the refractive index structure constant (Cn2) as a physical prior, a TRNet conducts infrared image sequence restoration based on Cn2 and feeds the restored images back to the TMNet to boost the measurement accuracy. A novel Cn2-guided frequency loss function and a physical constraint loss are introduced to align the training process with physical theories. Experiments demonstrate P2GCL achieves the best performance for both turbulence strength estimation (improving Cn2 MAE by 0.0156, enhancing R2 by 0.1065) and image restoration (enhancing PSNR by 0.2775 dB), validating the significant impact of physical prior guided cooperative learning.
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