Multi-scale feature selection network for lightweight image super-resolution

Neural Netw. 2024 Jan:169:352-364. doi: 10.1016/j.neunet.2023.10.043. Epub 2023 Oct 26.

Abstract

Recently, many super-resolution (SR) methods based on convolutional neural networks (CNNs) have achieved superior performance by utilizing deep and heavy models, which may not be suitable for real-world low-budget devices. To address this issue, we propose a novel lightweight SR network called a multi-scale feature selection network (MFSN). As the basic building block of MFSN, the multi-scale feature selection block (MFSB) is presented to extract the rich multi-scale features from a coarse-to-fine receptive field level. For a better representation ability, a wide-activated residual unit is adopted in each branch of MFSB except the last one. In MFSB, the scale selection module (SSM) is designed to effectively fuse the features from two adjacent branches by adjusting receptive field sizes adaptively. Further, a comprehensive channel attention mechanism (CCAM) is integrated into SSM to learn the dynamic selection weight by considering the local and global inter-channel dependencies. Extensive experimental results illustrate that the proposed MFSN is superior to other lightweight methods.

Keywords: Convolutional neural network; Lightweight; Multi-scale learning; Super-resolution.

MeSH terms

  • Image Processing, Computer-Assisted
  • Learning*
  • Neural Networks, Computer*