Improving Single-Image Super-Resolution with Dilated Attention

Author:

Zhang Xinyu1,Cheng Boyuan1,Yang Xiaosong1ORCID,Xiao Zhidong1ORCID,Zhang Jianjun1,You Lihua1

Affiliation:

1. National Centre for Computer Animation, Faculty of Media and Communication, Talbot Campus, Bournemouth University, Poole BH12 5BB, UK

Abstract

Single-image super-resolution (SISR) techniques have become a vital tool for improving image quality and clarity in the rapidly evolving field of digital imaging. Convolutional neural network (CNN) and transformer-based SISR techniques are very popular. However, CNN-based techniques are not suitable when capturing long-range dependencies, and transformer-based techniques suffer from computational complexity. To tackle these problems, this paper proposes a novel method called dilated attention-based single-image super-resolution (DAIR). It comprises three components: low-level feature extraction, multi-scale dilated transformer block (MDTB), and high-quality image reconstruction. A convolutional layer is used to extract the base features from low-resolution images, which lays the foundation for subsequent processing. Dilated attention is introduced to MDTB to enhance its ability to capture image features at different scales and ensure superior image details and structure recovery. After that, MDTB refines these features to extract multi-scale global attributes and effectively grasps images’ long-distance relationships and features across multiple scales. Finally, low-level features obtained from feature extraction and multi-scale global features obtained from MDTB are aggregated to reconstruct high-resolution images. The comparison with existing methods validates the efficacy of the proposed method and demonstrates its advantage in improving image resolution and quality.

Publisher

MDPI AG

Reference67 articles.

1. Real-world single image super-resolution: A brief review;Chen;Inf. Fusion.,2022

2. Super-resolution image reconstruction: A technical overview;Park;IEEE Signal Process Mag.,2003

3. Li, J., Pei, Z., and Zeng, T. (2021). From beginner to master: A survey for deep learning-based single-image super-resolution. arXiv.

4. A review of single image super-resolution reconstruction based on deep learning;Yu;Multimed. Tools Appl.,2023

5. Deep learning-based single-image super-resolution: A comprehensive review;Chauhan;IEEE Access,2023

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