DeepCaustics: Classification and Removal of Caustics From Underwater Imagery

Caustics are complex physical phenomena resulting from the projection of light rays being reflected or refracted by a curved surface. In this paper, we address the problem of classifying and removing caustics from images and propose a novel solution based on two convolutional neural networks: Salien...

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Veröffentlicht in:IEEE journal of oceanic engineering 2019-07, Vol.44 (3), p.728-738
Hauptverfasser: Forbes, Timothy, Goldsmith, Mark, Mudur, Sudhir, Poullis, Charalambos
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creator Forbes, Timothy
Goldsmith, Mark
Mudur, Sudhir
Poullis, Charalambos
description Caustics are complex physical phenomena resulting from the projection of light rays being reflected or refracted by a curved surface. In this paper, we address the problem of classifying and removing caustics from images and propose a novel solution based on two convolutional neural networks: SalienceNet and DeepCaustics. Caustics result in changes in illumination that are continuous in nature; therefore, the first network is trained to produce a classification of caustics that is represented as a saliency map of the likelihood of caustics occurring at a pixel. In applications where caustic removal is essential, the second network is trained to generate a caustic-free image. It is extremely hard to generate real ground truth for caustics. We demonstrate how synthetic caustic data can be used for training in such cases, and then transfer the learning to real data. To the best of our knowledge, out of the handful of techniques that have been proposed, this is the first time that the complex problem of caustic removal has been reformulated and addressed as a classification and learning problem. This paper is motivated by the real-world challenges in underwater archaeology.
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subjects Archaeology
Artificial neural networks
Cameras
Caustics
Classification
Computational and artificial intelligence
Convolution
Feature extraction
Ground truth
Image classification
Image color analysis
image denoising
image enhancement
image processing
Imagery
Learning
Light
Lighting
Network architecture
Physical phenomena
Removal
Training
Underwater
title DeepCaustics: Classification and Removal of Caustics From Underwater Imagery
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