UI-Styler: Ultrasound Image Style Transfer with Class-Aware Prompts for Cross-Device Diagnosis Using a Frozen Black-Box Inference Network

arXiv — cs.CVMonday, November 24, 2025 at 5:00:00 AM
  • UI-Styler has been introduced as a novel ultrasound image style transfer framework that utilizes class-aware prompts to enhance diagnostic accuracy across different acquisition devices. This approach addresses the challenge of domain shifts that can degrade the performance of existing black-box inference models when applied to ultrasound images from varied sources.
  • The development of UI-Styler is significant as it aims to improve the reliability of ultrasound diagnostics by ensuring that the structural content of images is preserved while transferring texture patterns. This advancement could lead to more accurate diagnoses and better patient outcomes in medical imaging.
  • The introduction of UI-Styler reflects a growing trend in artificial intelligence towards enhancing image processing techniques, particularly in the medical field. This aligns with ongoing efforts to bridge gaps in multimodal learning and improve the consistency of image interpretation across different contexts, highlighting the importance of class-specific semantic alignment in AI applications.
— via World Pulse Now AI Editorial System

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