Seeing Through the Rain: Resolving High-Frequency Conflicts in Deraining and Super-Resolution via Diffusion Guidance

arXiv — cs.CVFriday, December 12, 2025 at 5:00:00 AM
  • A new approach, the Diffusion-based High-frequency Guided Model (DHGM), has been introduced to resolve conflicts between deraining and super-resolution in image processing. This method aims to enhance the clarity and detail of images affected by adverse weather conditions, particularly rain, by integrating diffusion priors with high-pass filters for effective artifact removal and detail enhancement.
  • The development of DHGM is significant as it addresses the challenges faced in visual tasks, such as small object detection, where high-frequency details are essential. By improving image quality post-weather restoration, this model could lead to advancements in various applications, including surveillance, autonomous driving, and remote sensing.
  • This innovation reflects a broader trend in artificial intelligence and computer vision, where researchers are increasingly focused on enhancing image quality through advanced techniques. The integration of diffusion models and neural networks is becoming a common theme, as seen in other recent methodologies aimed at improving image processing, object detection, and scene reconstruction.
— via World Pulse Now AI Editorial System

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