MedQ-UNI: Toward Unified Medical Image Quality Assessment and Restoration via Vision-Language Modeling
arXiv cs.CV / 3/20/2026
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Key Points
- MedQ-UNI proposes a unified vision-language model that jointly addresses medical image quality assessment and restoration across multiple imaging modalities and degradation types.
- It follows an assess-then-restore paradigm using a multimodal autoregressive dual-expert architecture with shared attention, where a quality assessment expert yields structured language descriptions of degradation before restoration.
- The authors assemble ~50K paired samples across three modalities and five restoration tasks with quality annotations for joint Med-IQA and Med-IR training, plus a 2K-sample evaluation benchmark.
- Experiments show a single MedQ-UNI model achieves state-of-the-art restoration across all tasks without task-specific adaptation and generates superior degradation descriptions, improving restoration fidelity and interpretability.
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