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Analysis of deep learning architectures for turbulence mitigation in long-range imagery
2020
Artificial Intelligence and Machine Learning in Defense Applications II
In long range imagery, the atmosphere along the line of sight can result in unwanted visual effects. Random variations in the refractive index of the air causes light to shift and distort. When captured by a camera, this randomly induced variation results in blurred and spatially distorted images. The removal of such effects is greatly desired. Many traditional methods are able to reduce the effects of turbulence within images, however they require complex optimisation procedures or have large
doi:10.1117/12.2573927
fatcat:anz7ilqiybdyvflomztzoovuam