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Turbulence Strength Cn2C_n^2Cn2​ Estimation from Video using Physics-based Deep Learning

29 August 2024
R. Saha
Esen Salcin
Jihoo Kim
Joseph Smith
Suren Jayasuriya
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Abstract

Images captured from a long distance suffer from dynamic image distortion due to turbulent flow of air cells with random temperatures, and thus refractive indices. This phenomenon, known as image dancing, is commonly characterized by its refractive-index structure constant Cn2C_n^2Cn2​ as a measure of the turbulence strength. For many applications such as atmospheric forecast model, long-range/astronomy imaging, and aviation safety, optical communication technology, Cn2C_n^2Cn2​ estimation is critical for accurately sensing the turbulent environment. Previous methods for Cn2C_n^2Cn2​ estimation include estimation from meteorological data (temperature, relative humidity, wind shear, etc.) for single-point measurements, two-ended pathlength measurements from optical scintillometer for path-averaged Cn2C_n^2Cn2​, and more recently estimating Cn2C_n^2Cn2​ from passive video cameras for low cost and hardware complexity. In this paper, we present a comparative analysis of classical image gradient methods for Cn2C_n^2Cn2​ estimation and modern deep learning-based methods leveraging convolutional neural networks. To enable this, we collect a dataset of video capture along with reference scintillometer measurements for ground truth, and we release this unique dataset to the scientific community. We observe that deep learning methods can achieve higher accuracy when trained on similar data, but suffer from generalization errors to other, unseen imagery as compared to classical methods. To overcome this trade-off, we present a novel physics-based network architecture that combines learned convolutional layers with a differentiable image gradient method that maintains high accuracy while being generalizable across image datasets.

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