TL;DR
WaterGAN is an unsupervised GAN that generates paired underwater and in-air images to facilitate real-time color correction of monocular underwater images, addressing complex light propagation effects without extensive calibration.
Contribution
The paper introduces WaterGAN, a novel unsupervised GAN framework that creates training data for underwater image color correction, enabling effective deep learning-based restoration without prior water parameter knowledge.
Findings
WaterGAN successfully generates realistic underwater images from in-air images.
The end-to-end network implicitly learns depth estimation from monocular underwater images.
The pipeline improves color correction in real underwater environments.
Abstract
This paper reports on WaterGAN, a generative adversarial network (GAN) for generating realistic underwater images from in-air image and depth pairings in an unsupervised pipeline used for color correction of monocular underwater images. Cameras onboard autonomous and remotely operated vehicles can capture high resolution images to map the seafloor, however, underwater image formation is subject to the complex process of light propagation through the water column. The raw images retrieved are characteristically different than images taken in air due to effects such as absorption and scattering, which cause attenuation of light at different rates for different wavelengths. While this physical process is well described theoretically, the model depends on many parameters intrinsic to the water column as well as the objects in the scene. These factors make recovery of these parameters…
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