Journal of Beijing University of Posts and Telecommunications

  • EI核心期刊

Journal of Beijing University of Posts and Telecommunications ›› 2025, Vol. 48 ›› Issue (2): 73-79.

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Lightweight Multi-Order Gated Aggregation Network for Image Super-Resolution

  

  • Received:2024-01-31 Revised:2024-03-25 Online:2025-04-30 Published:2025-04-30

Abstract: Deep learning-based technologies have significantly improved the performance of image super-resolution networks, where lightweight convolutional neural networks (CNNs) are characterized by a small number of parameters and low model complexity. However, their performance is greatly limited, affecting the practical application of super-resolution methods. To address such issues, a lightweight multi-scale large kernel convolution super-resolution reconstruction network is proposed, which fully utilizes gating mechanisms and large kernel convolution. A multi-stage gated aggregation block is introduced, using a series of gated units to obtain both global and local information; a multi-stage large kernel attention block is proposed, which uses large kernel convolution to achieve a larger receptive field and extract features from images at different scales; a focused gated aggregation block is introduced, using skip connections to enhance the model's ability to reconstruct images. To validate the effectiveness of this model, experiments were conducted on evaluation metrics such as the number of model parameters and response speed, as well as subjective visual effects, and ablation analysis experiments were performed on each module of the model. The experiments show that compared to lightweight network models in recent years, the proposed method achieves a significant improvement in peak signal-to-noise ratio and structural similarity on four benchmark datasets while maintaining a similar or even reduced number of parameters and response speed. This better balances model complexity and performance, and achieves more effective subjective visual effects, leading to superior image reconstruction capabilities.

Key words: super-resolution reconstruction, convolutional neural network, attention mechanism, multi-scale features

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