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Semantic Segmentation of Underwater Imagery Using Deep Networks Trained on Synthetic Imagery
2018
Journal of Marine Science and Engineering
Recent breakthroughs in the computer vision community have led to the emergence of efficient deep learning techniques for end-to-end segmentation of natural scenes. Underwater imaging stands to gain from these advances, however, deep learning methods require large annotated datasets for model training and these are typically unavailable for underwater imaging applications. This paper proposes the use of photorealistic synthetic imagery for training deep models that can be applied to interpret
doi:10.3390/jmse6030093
fatcat:tvul5lstlrfbbclkaslwpknooi