AquaDiff: Diffusion-Based Underwater Image Enhancement for Addressing Color Distortion

arXiv — cs.CVThursday, December 18, 2025 at 5:00:00 AM
  • AquaDiff has been introduced as a diffusion-based underwater image enhancement framework aimed at correcting color distortions in underwater photography, which are often caused by light absorption and scattering. This innovative approach combines chromatic prior-guided color compensation with a conditional diffusion process to improve image quality while maintaining structural integrity.
  • The development of AquaDiff is significant as it addresses the critical challenges faced in underwater imaging, enhancing the visibility and detail of images for various applications, including marine research and underwater exploration. By improving image quality, AquaDiff could facilitate better analysis and understanding of underwater environments.
  • This advancement in underwater imaging technology reflects a broader trend in artificial intelligence and image processing, where diffusion models are increasingly utilized to enhance image quality across various domains. The integration of sophisticated techniques, such as multi-resolution attention and cross-domain consistency loss, highlights the ongoing innovation in AI-driven image enhancement, paralleling developments in related fields like medical imaging and generative models.
— via World Pulse Now AI Editorial System

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