AdaQual-Diff: Diffusion-Based Image Restoration via Adaptive Quality Prompting
Journal:
arXiv
Published Date:
Apr 17, 2025
Abstract
Restoring images afflicted by complex real-world degradations remains
challenging, as conventional methods often fail to adapt to the unique mixture
and severity of artifacts present. This stems from a reliance on indirect cues
which poorly capture the true perceptual quality deficit. To address this
fundamental limitation, we introduce AdaQual-Diff, a diffusion-based framework
that integrates perceptual quality assessment directly into the generative
restoration process. Our approach establishes a mathematical relationship
between regional quality scores from DeQAScore and optimal guidance complexity,
implemented through an Adaptive Quality Prompting mechanism. This mechanism
systematically modulates prompt structure according to measured degradation
severity: regions with lower perceptual quality receive computationally
intensive, structurally complex prompts with precise restoration directives,
while higher quality regions receive minimal prompts focused on preservation
rather than intervention. The technical core of our method lies in the dynamic
allocation of computational resources proportional to degradation severity,
creating a spatially-varying guidance field that directs the diffusion process
with mathematical precision. By combining this quality-guided approach with
content-specific conditioning, our framework achieves fine-grained control over
regional restoration intensity without requiring additional parameters or
inference iterations. Experimental results demonstrate that AdaQual-Diff
achieves visually superior restorations across diverse synthetic and real-world
datasets.