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Abstract Image super-resolution (SR) plays a vital role in vision tasks, in which Transformer-based methods outperform conventional convolutional neural networks. Existing work usually uses residual linking to improve the performance, but this type of linking provides limited information transfer within the block. Also, in order to improve feature extraction, existing work usually restricts the self-attention computation to a single window. This means that transformer-based networks can only use feature information within a limited spatial range. To handle the challenge, this paper proposes a novel Hybrid Attention-Dense Connected Transformer Networks (HADT) to better utilise the potential feature information. HADT is constructed by stacking attentional transformer block (ATB), which contains Effective Dense Transformer Block (EDTB) and Hybrid Attention Block (HAB). EDTB combines dense connectivity and swin-transformer to enhance feature transfer and improve model representation, and meanwhile, HAB is used for cross-window information interaction and joint modelling of features for better visualisation. Based on the experiments, our method is effective on SR tasks with magnification factors of 2, 3, and 4. For example, using the Urban100 dataset in an experiment with an amplification factor of 4 our method has a PSNR value that is 0.15 dB higher than the previous method and reconstructs a more detailed texture.
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Ying Guo
Chang Tian
Jie Liu
Tsinghua University
Qilu University of Technology
Shandong Academy of Sciences
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Guo et al. (Tue,) studied this question.
www.synapsesocial.com/papers/68e5bb1eb6db643587552d35 — DOI: https://doi.org/10.21203/rs.3.rs-4767541/v1
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