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AquaticVision: Benchmarking Visual SLAM in Underwater Environment with Events and Frames

6 May 2025
Yifan Peng
Yuze Hong
Ziyang Hong
Apple Pui-Yi Chui
Junfeng Wu
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Abstract

Many underwater applications, such as offshore asset inspections, rely on visual inspection and detailed 3D reconstruction. Recent advancements in underwater visual SLAM systems for aquatic environments have garnered significant attention in marine robotics research. However, existing underwater visual SLAM datasets often lack groundtruth trajectory data, making it difficult to objectively compare the performance of different SLAM algorithms based solely on qualitative results or COLMAP reconstruction. In this paper, we present a novel underwater dataset that includes ground truth trajectory data obtained using a motion capture system. Additionally, for the first time, we release visual data that includes both events and frames for benchmarking underwater visual positioning. By providing event camera data, we aim to facilitate the development of more robust and advanced underwater visual SLAM algorithms. The use of event cameras can help mitigate challenges posed by extremely low light or hazy underwater conditions. The webpage of our dataset isthis https URL.

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@article{peng2025_2505.03448,
  title={ AquaticVision: Benchmarking Visual SLAM in Underwater Environment with Events and Frames },
  author={ Yifan Peng and Yuze Hong and Ziyang Hong and Apple Pui-Yi Chui and Junfeng Wu },
  journal={arXiv preprint arXiv:2505.03448},
  year={ 2025 }
}
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