NeuroPump: Simultaneous Geometric and Color Rectification for Underwater Images

Yue Guo1, Haoxiang Liao1, Haibin Ling2, Bingyao Huang1*
1Southwest University      2Stony Brook University
*Indicates the corresponding author

Abstract

Underwater image restoration aims to remove geometric and color distortions due to water refraction, absorption and scattering. Previous studies focus on restoring either color or the geometry, but to our best knowledge, not both. However, in practice it may be cumbersome to address the two rectifications one-by-one. In this paper, we propose NeuroPump, a self-supervised method to simultaneously optimize and rectify underwater geometry and color as if water were pumped out. The key idea is to explicitly model refraction, absorption and scattering in Neural Radiance Field (NeRF) pipeline, such that it not only performs simultaneous geometric and color rectification, but also enables to synthesize novel views and optical effects by controlling the decoupled parameters. In addition, to address issue of lack of real paired ground truth images, we propose an underwater 360 benchmark dataset that has real paired (i.e., with and without water) images. Our method clearly outperforms other baselines both quantitatively and qualitatively.

BibTeX

@article{guo2024neuropump,
  title={NeuroPump: Simultaneous Geometric and Color Rectification for Underwater Images},
  author={Guo, Yue and Liao, Haoxiang and Ling, Haibin and Huang, Bingyao},
  journal={arXiv preprint arXiv:2412.15890},
  year={2024}
}