Abstract:
Underwater exploration is crucial for geoscience and remote sensing, but the capture of underwater images is compromised by the degradation of light absorption and scatte...Show MoreMetadata
Abstract:
Underwater exploration is crucial for geoscience and remote sensing, but the capture of underwater images is compromised by the degradation of light absorption and scattering. This article proposes a diffusion-color-guided framework (DCGF) to enhance the quality of underwater images and address color deviations caused by randomness in general diffusion models during underwater image restoration. In DCGF, the diffusion model reconstructs the image distribution, while a color correction module ensures accurate color representation. A conditional image guides the denoising procedure, aligning the diffusion trajectory closely with the target domain. This approach reduces the impact of diffusion variability and minimizes deviations. Once a predetermined denoising threshold is reached, the color correction module extracts salient characteristics of color distribution from luminance and RGB channels, enhancing overall efficacy. The experimental results demonstrate that the DCGF algorithm effectively restores degraded underwater images with robustness and effectiveness. The method successfully corrects color degradation and recovers details in low-light conditions, significantly improving underwater image quality.
Published in: IEEE Transactions on Geoscience and Remote Sensing ( Volume: 63)
Funding Agency:
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- IEEE Keywords
- Index Terms
- Image Enhancement ,
- Underwater Image ,
- Underwater Image Enhancement ,
- Image Quality ,
- Diffusion Model ,
- Color Difference ,
- Color Distribution ,
- RGB Channels ,
- Correction Module ,
- Color Correction ,
- Neural Network ,
- Color Images ,
- Reversible Process ,
- Generative Adversarial Networks ,
- Reference Image ,
- Fine Details ,
- Fusion Method ,
- Image Distortion ,
- Effective Channel ,
- Noise Spectrum ,
- Forward Process ,
- Color Distortion ,
- Brownian Noise ,
- Real-world Images ,
- Color Shift ,
- Undersea ,
- Scale-invariant Feature Transform ,
- Enhancement Techniques ,
- Image Degradation ,
- Enhancement Algorithm
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Image Enhancement ,
- Underwater Image ,
- Underwater Image Enhancement ,
- Image Quality ,
- Diffusion Model ,
- Color Difference ,
- Color Distribution ,
- RGB Channels ,
- Correction Module ,
- Color Correction ,
- Neural Network ,
- Color Images ,
- Reversible Process ,
- Generative Adversarial Networks ,
- Reference Image ,
- Fine Details ,
- Fusion Method ,
- Image Distortion ,
- Effective Channel ,
- Noise Spectrum ,
- Forward Process ,
- Color Distortion ,
- Brownian Noise ,
- Real-world Images ,
- Color Shift ,
- Undersea ,
- Scale-invariant Feature Transform ,
- Enhancement Techniques ,
- Image Degradation ,
- Enhancement Algorithm
- Author Keywords