Underwater scene prior inspired deep underwater image and video enhancement
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Authors
Li, Chongyi
Anwar, Saeed
Porikli, Fatih
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Elsevier Ltd
Abstract
In underwater scenes, wavelength-dependent light absorption and scattering degrade the visibility of images
and videos. The degraded underwater images and videos affect the accuracy of pattern recognition,
visual understanding, and key feature extraction in underwater scenes. In this paper, we propose an underwater
image enhancement convolutional neural network (CNN) model based on underwater scene
prior, called UWCNN. Instead of estimating the parameters of underwater imaging model, the proposed
UWCNN model directly reconstructs the clear latent underwater image, which benefits from the underwater
scene prior which can be used to synthesize underwater image training data. Besides, based on
the light-weight network structure and effective training data, our UWCNN model can be easily extended
to underwater videos for frame-by-frame enhancement. Specifically, combining an underwater imaging
physical model with optical properties of underwater scenes, we first synthesize underwater image degradation
datasets which cover a diverse set of water types and degradation levels. Then, a light-weight
CNN model is designed for enhancing each underwater scene type, which is trained by the corresponding
training data. At last, this UWCNN model is directly extended to underwater video enhancement.
Experiments on real-world and synthetic underwater images and videos demonstrate that our method
generalizes well to different underwater scenes.
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Pattern Recognition
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Restricted until
2099-12-31
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