UARE: A Unified Vision-Language Model for Image Quality Assessment, Restoration, and Enhancement

arXiv — cs.CVTuesday, December 9, 2025 at 5:00:00 AM
  • A new unified vision-language model named UARE has been introduced for image quality assessment (IQA), restoration, and enhancement, addressing the interconnected challenges of these low-level vision tasks. This model leverages a two-stage training framework that progressively adapts to various types of image distortions, aiming to improve generative performance by integrating IQA with restoration processes.
  • The development of UARE is significant as it represents a pioneering approach in combining IQA and restoration within a single model, potentially leading to enhanced image processing capabilities. This could benefit various applications in computer vision, including photography, medical imaging, and video enhancement, by providing more accurate assessments and restorations of images.
  • This advancement reflects a broader trend in artificial intelligence where multimodal models are increasingly utilized to enhance understanding and generation tasks. The integration of different modalities, such as visual and linguistic data, is becoming essential in improving the performance of AI systems, as seen in other recent frameworks that focus on personalized image descriptions and iterative reasoning in image editing.
— via World Pulse Now AI Editorial System

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