AI Navigate

Advancing Visual Reliability: Color-Accurate Underwater Image Enhancement for Real-Time Underwater Missions

arXiv cs.CV / 3/18/2026

📰 NewsTools & Practical UsageModels & Research

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.

Abstract

Underwater image enhancement plays a crucial role in providing reliable visual information for underwater platforms, since strong absorption and scattering in water-related environments generally lead to image quality degradation. Existing high-performance methods often rely on complex architectures, which hinder deployment on underwater devices. Lightweight methods often sacrifice quality for speed and struggle to handle severely degraded underwater images. To address this limitation, we present a real-time underwater image enhancement framework with accurate color restoration. First, an Adaptive Weighted Channel Compensation module is introduced to achieve dynamic color recovery of the red and blue channels using the green channel as a reference anchor. Second, we design a Multi-branch Re-parameterized Dilated Convolution that employs multi-branch fusion during training and structural re-parameterization during inference, enabling large receptive field representation with low computational overhead. Finally, a Statistical Global Color Adjustment module is employed to optimize overall color performance based on statistical priors. Extensive experiments on eight datasets demonstrate that the proposed method achieves state-of-the-art performance across seven evaluation metrics. The model contains only 3,880 inference parameters and achieves an inference speed of 409 FPS. Our method improves the UCIQE score by 29.7% under diverse environmental conditions, and the deployment on ROV platforms and performance gains in downstream tasks further validate its superiority for real-time underwater missions.