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Transformer-Progressive Mamba Network for Lightweight Image Super-Resolution

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Recently, Mamba-based super-resolution (SR) methods have demonstrated the ability to capture global receptive fields with linear complexity, addressing the quadratic computational cost of Transformer-based SR approaches. However, existing Mamba-based methods lack fine-grained transitions across different modeling scales, which limits the efficiency of feature representation. In this paper, we propose T-PMambaSR, a lightweight SR framework that integrates window-based self-attention with Progressive Mamba. By enabling interactions among receptive fields of different scales, our method establishes a fine-grained modeling paradigm that progressively enhances feature representation without introducing additional computational cost. Furthermore, we introduce an Adaptive High-Frequency Refinement Module (AHFRM) to recover high-frequency details lost during Transformer and Mamba processing. Extensive experiments demonstrate that T-PMambaSR progressively enhances the model's receptive field and expressiveness, yielding better performance than recent Transformer- or Mamba-based methods while incurring lower computational cost.

Sichen Guo, Wenjie Li, Yuanyang Liu, Guangwei Gao, Jian Yang, Chia-Wen Lin• 2025

Related benchmarks

TaskDatasetResultRank
Image Super-resolutionSet5 (test)
PSNR38.26
626
Image Super-resolutionSet14 (test)
PSNR34.09
348
Single Image Super-ResolutionUrban100 (test)
PSNR29.06
341
Image Super-resolutionManga109 (test)
PSNR39.36
260
Super-ResolutionBSDS100 (test)
PSNR33.36
101
Single Image Super-ResolutionAverage Set5, Set14, BSDS100, Urban100, Manga109 x4 (test)
PSNR29.49
20
Super-ResolutionRealSR v3 (test)
PSNR29.43
18
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