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Original scientific paper

https://doi.org/10.17559/TV-20241024002089

DHANet: Dual-Stage Hybrid Attention Network for Blind Image Super-Resolution

Ningjiang Ma ; Tiangong University, School of Computer Science and Technology, Tianjin 300387, China *

* Corresponding author.


Full text: english pdf 2.229 Kb

page 1440-1449

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Abstract

In recent years, blind image super-resolution (SR) methods have demonstrated promising performance but remain limited by inaccurate blur kernel evaluation and difficulties in global feature extraction. This paper introduces DHANet, a Dual-Stage Hybrid Attention Network, combining CNN and Transformer-based modules for blind image SR. DHANet includes a blur kernel predictor, a hybrid attention dual-path module (HADM) for enhanced feature extraction, and a feature refinement module (FRM) for reconstructing refined high-resolution images. Experiments on benchmark datasets demonstrate superior performance in terms of quality and efficiency. Specifically, our method improves the average PSNR metric on four benchmark datasets from 34.98 to 35.29 at SR2 compared to the second-best comparison method, and shows varying degrees of improvement in PSNR and SSIM metrics on different datasets at SRx3 and SRx4.

Keywords

blind image super-resolution; channel attention residual block; hybrid attention mechanism; transformer

Hrčak ID:

332858

URI

https://hrcak.srce.hr/332858

Publication date:

29.6.2025.

Visits: 292 *