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OP4KSR: One-Step Patch-Free 4K Super-Resolution with Periodic Artifact Suppression

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Diffusion-based real-world image super-resolution (Real-ISR) has achieved remarkable perceptual quality; however, directly super-resolving images to 4K remains limited by extreme memory consumption. Consequently, prior methods adopt patch-based inference, sacrificing global context and introducing semantic confusion, spatial inconsistency, and severe latency. We propose OP4KSR, a one-step patch-free 4K SR approach built upon the powerful Flux backbone. By leveraging the extreme-compression F16 VAE, OP4KSR makes 4K SR inference tractable under practical GPU budgets, preserving global spatial-semantic coherence while enabling highly efficient inference. However, adapting this one-step architecture intrinsically triggers severe periodic artifacts. We trace this to a RoPE base frequency allocation mismatch and intra-token spatial ambiguity, both exacerbated by the lack of iterative refinement. To suppress these artifacts, we couple RoPE base frequency rescaling (RFR) with an autocorrelation-based periodicity loss ($\mathcal{L}_\text{AP}$). Furthermore, we curate a dedicated training dataset alongside three benchmarks (one synthetic and two real-world) to advance 4K SR research. Extensive experiments demonstrate that OP4KSR achieves competitive perceptual quality with efficient inference, generating a $4096\times4096$ output in only 5.75 seconds on a single NVIDIA H20 GPU.

Chengyan Deng, Pengbin Yu, Zhentao Chen, Wei Shen, Kai Zhang, Meng Li, Lunxi Yuan, Xue Zhou, Li Yu• 2026

Related benchmarks

TaskDatasetResultRank
Real-world Image Super-Resolution4KSR-RealSquare (test)
NIQE4.93
8
Real-world Image Super-Resolution4KSR-RealVary (test)
NIQE4.92
8
Super-Resolution4KSR Syn
PSNR24.31
8
Super-ResolutionDIV4K 50
PSNR23.09
8
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