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📄 Abstract
Abstract: Benefiting from pre-trained text-to-image (T2I) diffusion models, real-world
image super-resolution (Real-ISR) methods can synthesize rich and realistic
details. However, due to the inherent stochasticity of T2I models, different
noise inputs often lead to outputs with varying perceptual quality. Although
this randomness is sometimes seen as a limitation, it also introduces a wider
perceptual quality range, which can be exploited to improve Real-ISR
performance. To this end, we introduce Direct Perceptual Preference
Optimization for Real-ISR (DP$^2$O-SR), a framework that aligns generative
models with perceptual preferences without requiring costly human annotations.
We construct a hybrid reward signal by combining full-reference and
no-reference image quality assessment (IQA) models trained on large-scale human
preference datasets. This reward encourages both structural fidelity and
natural appearance. To better utilize perceptual diversity, we move beyond the
standard best-vs-worst selection and construct multiple preference pairs from
outputs of the same model. Our analysis reveals that the optimal selection
ratio depends on model capacity: smaller models benefit from broader coverage,
while larger models respond better to stronger contrast in supervision.
Furthermore, we propose hierarchical preference optimization, which adaptively
weights training pairs based on intra-group reward gaps and inter-group
diversity, enabling more efficient and stable learning. Extensive experiments
across both diffusion- and flow-based T2I backbones demonstrate that DP$^2$O-SR
significantly improves perceptual quality and generalizes well to real-world
benchmarks.
Authors (8)
Rongyuan Wu
Lingchen Sun
Zhengqiang Zhang
Shihao Wang
Tianhe Wu
Qiaosi Yi
+2 more
Submitted
October 21, 2025
Key Contributions
This paper introduces DP^2O-SR, a framework for real-world image super-resolution that leverages pre-trained text-to-image diffusion models. It aligns generative models with perceptual preferences without human annotations by constructing a hybrid reward signal from IQA models, exploiting the perceptual diversity inherent in diffusion models for improved performance.
Business Value
Enables creation of higher-quality images from lower-resolution sources, valuable for photography, media, and archival purposes, enhancing visual content.