4.7 Article

FathomNet: A global image database for enabling artificial intelligence in the ocean

Journal

SCIENTIFIC REPORTS
Volume 12, Issue 1, Pages -

Publisher

NATURE PORTFOLIO
DOI: 10.1038/s41598-022-19939-2

Keywords

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Funding

  1. National Geographic Society [NGS-86951T-21, 518018]
  2. National Oceanic and Atmospheric Administration [NA18OAR4170105]
  3. Monterey Bay Aquarium Research Institute
  4. David and Lucile Packard Foundation
  5. National Science Foundation [OTIC 1812535, 2137977]

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The ocean is undergoing rapid change, and the ability to visually monitor marine biota is challenging. To address the lack of data standardization and large labeled datasets, we developed FathomNet, an open-source image database that aggregates labeled data. FathomNet can be used to train models and automate tracking of underwater concepts, contributing to a healthy and sustainable global ocean.
The ocean is experiencing unprecedented rapid change, and visually monitoring marine biota at the spatiotemporal scales needed for responsible stewardship is a formidable task. As baselines are sought by the research community, the volume and rate of this required data collection rapidly outpaces our abilities to process and analyze them. Recent advances in machine learning enables fast, sophisticated analysis of visual data, but have had limited success in the ocean due to lack of data standardization, insufficient formatting, and demand for large, labeled datasets. To address this need, we built FathomNet, an open-source image database that standardizes and aggregates expertly curated labeled data. FathomNet has been seeded with existing iconic and non-iconic imagery of marine animals, underwater equipment, debris, and other concepts, and allows for future contributions from distributed data sources. We demonstrate how FathomNet data can be used to train and deploy models on other institutional video to reduce annotation effort, and enable automated tracking of underwater concepts when integrated with robotic vehicles. As FathomNet continues to grow and incorporate more labeled data from the community, we can accelerate the processing of visual data to achieve a healthy and sustainable global ocean.

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