High-resolution Bathymetry by Deep-learning based Point Cloud Upsampling

High-resolution Bathymetry by Deep-learning based Point Cloud Upsampling
2024.01.24
Gridded bathymetric data are often used to understand seafloor topography; however, high-resolution data are rare. To obtain high-resolution gridded bathymetric data, the observations from which the data are derived must be densely measured. However, this process is time consuming and expensive. In this study, we propose a method to obtain dense bathymetric data from sparse observations by treating the observed data as a 3D point cloud and applying a deep-learning-based point cloud upsampling technique. The upsampled cloud points were converted into gridded form. The effectiveness of our method was verified through both quantitative and qualitative analyses.

Papers

  • "High-resolution Bathymetry by Deep-learning based Point Cloud Upsampling", Naoya Irisawa, Masaaki Iiyama, IEEE Access, Vol.12, pp.4387-4398, 2024-01. DOI: 10.1109/ACCESS.2023.3349149, https://ieeexplore.ieee.org/document/10379585