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OpenSonarDatasets 🌊

Welcome to OpenSonarDatasets, a repository dedicated to consolidate open-source sonar datasets for underwater research and development. We encourage researchers in the field to expand the current collection, aiming to increase the visibility of open-source sonar datasets and provide an easier way to find and compare datasets.

Why This Repository?

The lack of consolidated and accessible sonar datasets makes research in underwater robotics challenging. This repository aims to bridge that gap by offering an organized collection of open-source sonar datasets with their link repository to help researchers interested in open-source sonar datasets start their projects efficiently.

Original Dataset Collection

This dataset comparison originates from the journal paper "Sonar-based DL in Underwater Robotics: Overview, Robustness, and Challenges," submitted to the IEEE Journal of Oceanic Engineering, which will soon be available. The initial datasets included here are part of this journal paper. However, please note that any future datasets contributed by the community will not be part of the original journal comparison, as the paper content remains fixed, while this repository will continue to evolve.

Dataset Comparison Table

The following table compares the state-of-the-art sonar underwater datasets by analyzing the type of sonar (Sonar), type of data (Data), number of data samples (No Data), objects labeled in the data (Object Labels), if the data is annotated, DL tasks (Annotation), if the data collection set up such as sonar frequency, altitude, etc. are described in the dataset or not (Set-up), and finally the year of the dataset publication (Year). The * symbol indicates that the dataset is not only limited to sonar but extended to other sensors such as optical cameras.

In addition, for readability, the sonar acronyms are SSS (Side-Scan Sonar), FLS (Forward-Looking Sonar), MSIS (Mechanical Scanning Imaging Sonar), and MBES (Multi-Beam Echo Sounder) represent the different types of sonar used in these datasets.

Dataset Sonar Data No Data Object labels Annotation Set-up Year Paper
Northern Adriatic Reefs SSS GeoTIFF 7 Reefs 2010
Lago Grey SSS Raw Glacier, Walls 2019 Paper
UCI ML Raw 211 Mines, Rocks Classification
SeabedObjects-KLSG SSS Images 1190 Wrecks, Humans, Mines Classification 2020 Paper
Marine_PULSE SSS Images 627 Pipes, Mounds, Platforms Classification 2023 Paper
NKSID FLS Images 2617 Infrastructures, Propellers, Tires Classification 2024 Paper
UATD FLS Images 9200 Tires, Mannequins, Boxes Object Detection 2022 Paper
SSS for Mine Detection SSS Images 1170 Mines Object Detection 2024 Paper
SWDD SSS Images 7904 Walls Object Detection 2024 Paper
SubPipe SSS * Images 10030 Pipelines Object Detection 2024 Paper
UXO FLS Images/Raw 74437 Unexploded Ordnances Object Detection 2024 Paper
MDT FLS Images 2471 Infrastructures, Debris Segmentation 2021 Paper
SASSED SAS Images 129 Muds, Sea Grass, Rocks, Sands Segmentation 2023
Seafloor Sediments SSS Images 434164 Rocks, Marine life Segmentation 2023 Paper
DIDSON FLS Images 1000 Fishes Species Segmentation 2022 Paper
AI4Shipwreck SSS Images 286 Shipwrecks Segmentation 2024 Paper
Cave Sonar MSIS * Rosbag 500 meters Cave Seabed SLAM 2017 Paper
Aurora MBES, SSS * Raw MBES: 81km, SSS: 15h Seabed, Marine habitats SLAM 2020 Paper
MBES-Slam MBES Rosbag 4 missions Seabed SLAM 2022 Paper

Contributing

We welcome contributions from the community! If you have an open-source sonar dataset that you would like to add to this repository, please create a pull request with the line description for the dataset table and the dataset link (and, if any, the published paper). This repository does not store the datasets but is a central directory to find links to most available datasets. By contributing, you help create a central location for researchers to easily access and compare sonar datasets, ultimately benefiting the field of underwater robotics.

Acknowledgements

This project has received funding from the European Union's Horizon 2020 research and innovation programme under the Marie Skłodowska-Curie grant agreement No. 956200.

This work is part of the Reliable AI for Marine Robotics (REMARO) Project. For more info, please visit: https://remaro.eu/

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