Image quality degradation caused by atmospheric turbulence reduces the performance of automated tasks such as optical character recognition. This issue is addressed by fine-tuning text recognition models using turbulencedegraded images. As obtaining a realistic training dataset of turbulence-degraded recordings is challenging, two synthetic datasets were created: one using a physics-inspired deep learning turbulence simulator and one using a heat chamber. The fine-tuned text recognition model leads to improved performance on a validation dataset of turbulence-distorted recordings. A number of architectural modifications to the text recognition model are proposed that allow for using a sequence of frames instead of just a single frame, while still using the pre-trained weights. These modifications are shown to lead to a further performance improvement.
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