Relative Illumination Fields: Learning Medium and Light Independent Underwater Scenes
By: Mengkun She , Felix Seegräber , David Nakath and more
Potential Business Impact:
Makes underwater robots see clearly in dark water.
We address the challenge of constructing a consistent and photorealistic Neural Radiance Field in inhomogeneously illuminated, scattering environments with unknown, co-moving light sources. While most existing works on underwater scene representation focus on a static homogeneous illumination, limited attention has been paid to scenarios such as when a robot explores water deeper than a few tens of meters, where sunlight becomes insufficient. To address this, we propose a novel illumination field locally attached to the camera, enabling the capture of uneven lighting effects within the viewing frustum. We combine this with a volumetric medium representation to an overall method that effectively handles interaction between dynamic illumination field and static scattering medium. Evaluation results demonstrate the effectiveness and flexibility of our approach.
Similar Papers
Fast Underwater Scene Reconstruction using Multi-View Stereo and Physical Imaging
CV and Pattern Recognition
Makes underwater pictures clear and fast.
AquaNeRF: Neural Radiance Fields in Underwater Media with Distractor Removal
CV and Pattern Recognition
Cleans up blurry underwater videos of sea life.
Advances in Radiance Field for Dynamic Scene: From Neural Field to Gaussian Field
CV and Pattern Recognition
Makes videos look real by understanding movement.