Evaluating and Preserving High-level Fidelity in Super-Resolution

arXiv — cs.LGWednesday, December 10, 2025 at 5:00:00 AM
  • Recent advancements in Super-Resolution (SR) models have demonstrated remarkable capabilities in reconstructing image details, yet they often introduce high-level changes that can distort the original content. This paper emphasizes the necessity of measuring high-level fidelity in SR models, proposing a new annotated dataset to evaluate their performance in preserving this fidelity alongside traditional low-level metrics.
  • The establishment of high-level fidelity as a criterion for evaluating SR models is crucial for ensuring the reliability of generative outputs. By providing a comprehensive analysis of how state-of-the-art models perform, this research aims to enhance the trustworthiness of image generation technologies in various applications, from media to scientific imaging.
  • The exploration of fidelity in image generation aligns with ongoing discussions in the field of computer vision regarding the balance between visual quality and content accuracy. As generative models evolve, the challenge of mitigating hallucinations and semantic deviations remains prominent, highlighting the need for robust evaluation frameworks that can address these concerns across different applications.
— via World Pulse Now AI Editorial System

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