AI RESEARCH

Looking Into the Water by Unsupervised Learning of the Surface Shape

arXiv CS.CV

ArXi:2603.07614v1 Announce Type: new We address the problem of looking into the water from the air, where we seek to remove image distortions caused by refractions at the water surface. Our approach is based on modeling the different water surface structures at various points in time, assuming the underlying image is constant. To this end, we propose a model that consists of two neural-field networks. The first network predicts the height of the water surface at each spatial position and time, and the second network predicts the image color at each position.