Development of Domain-Invariant Visual Enhancement and Restoration (DIVER) Approach for Underwater Images
Rajini Makam, Sharanya Patil, Dhatri Shankari T M, Suresh Sundaram, Narasimhan Sundararajan

TL;DR
The paper introduces DIVER, an unsupervised framework combining empirical correction and physics-guided modeling to enhance and restore underwater images across diverse environments, outperforming existing methods.
Contribution
DIVER is a novel unsupervised approach that integrates adaptive luminance, spectral normalization, and physics-constrained learning for robust underwater image enhancement.
Findings
DIVER outperforms state-of-the-art methods across multiple datasets.
Achieves at least 9% improvement in UCIQE score.
Enhances robotic perception by improving keypoint repeatability.
Abstract
Underwater images suffer severe degradation due to wavelength-dependent attenuation, scattering, and illumination non-uniformity that vary across water types and depths. We propose an unsupervised Domain-Invariant Visual Enhancement and Restoration (DIVER) framework that integrates empirical correction with physics-guided modeling for robust underwater image enhancement. DIVER first applies either IlluminateNet for adaptive luminance enhancement or a Spectral Equalization Filter for spectral normalization. An Adaptive Optical Correction Module then refines hue and contrast using channel-adaptive filtering, while Hydro-OpticNet employs physics-constrained learning to compensate for backscatter and wavelength-dependent attenuation. The parameters of IlluminateNet and Hydro-OpticNet are optimized via unsupervised learning using a composite loss function. DIVER is evaluated on eight diverse…
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Taxonomy
TopicsImage Enhancement Techniques · Computer Graphics and Visualization Techniques · Generative Adversarial Networks and Image Synthesis
