Advancing Visual Reliability: Color-Accurate Underwater Image Enhancement for Real-Time Underwater Missions
arXiv cs.CV / 3/18/2026
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Key Points
- The paper presents a real-time underwater image enhancement framework that achieves accurate color restoration for underwater platforms.
- It introduces an Adaptive Weighted Channel Compensation module to dynamically recover red and blue channels using green as a reference anchor.
- It features a Multi-branch Re-parameterized Dilated Convolution that trains with multi-branch fusion and re-parameterizes at inference to provide a large receptive field with low computational cost.
- It adds a Statistical Global Color Adjustment module to optimize overall color performance based on statistical priors.
- On eight datasets, it achieves state-of-the-art performance across seven metrics, uses only 3,880 parameters, runs at 409 FPS, and demonstrates deployment on ROVs and improvements in downstream tasks for real-time underwater missions.
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