Qu Daokuan, Ke Yuyao
School of Information and Control Engineering, China University of Mining and Technology, Xuzhou, Jiangsu, China.
School of Energy and Materials Engineering, Shandong Polytechnic College, Jining, Shandong, China.
Front Neurosci. 2024 Nov 11;18:1502499. doi: 10.3389/fnins.2024.1502499. eCollection 2024.
Recently, significant advancements have been made in the field of efficient single-image super-resolution, primarily driven by the innovative concept of information distillation. This method adeptly leverages multi-level features to facilitate high-resolution image reconstruction, allowing for enhanced detail and clarity. However, many existing approaches predominantly emphasize the enhancement of distilled features, often overlooking the critical aspect of improving the feature extraction capabilities of the distillation module itself. In this paper, we address this limitation by introducing an asymmetric large-kernel convolution design. By increasing the size of the convolution kernel, we expand the receptive field, which enables the model to more effectively capture long-range dependencies among image pixels. This enhancement significantly improves the model's perceptual ability, leading to more accurate reconstructions. To maintain a manageable level of model complexity, we adopt a lightweight architecture that employs asymmetric convolution techniques. Building on this foundation, we propose the Lightweight Asymmetric Large Kernel Distillation Network (ALKDNet). Comprehensive experiments conducted on five widely recognized benchmark datasets-Set5, Set14, BSD100, Urban100, and Manga109-indicate that ALKDNet not only preserves efficiency but also demonstrates performance enhancements relative to existing super-resolution methods. The average PSNR and SSIM values show improvements of 0.10 dB and 0.0013, respectively, thereby achieving state-of-the art performance.
最近,在高效单图像超分辨率领域取得了重大进展,这主要是由信息蒸馏这一创新概念推动的。该方法巧妙地利用多级特征来促进高分辨率图像重建,从而实现增强的细节和清晰度。然而,许多现有方法主要强调对蒸馏特征的增强,常常忽视了改进蒸馏模块本身特征提取能力这一关键方面。在本文中,我们通过引入一种非对称大内核卷积设计来解决这一限制。通过增大卷积内核的大小,我们扩大了感受野,这使得模型能够更有效地捕捉图像像素之间的长距离依赖关系。这种增强显著提高了模型的感知能力,从而实现更准确的重建。为了保持模型复杂度处于可管理水平,我们采用了一种采用非对称卷积技术的轻量级架构。在此基础上,我们提出了轻量级非对称大内核蒸馏网络(ALKDNet)。在五个广泛认可的基准数据集——Set5、Set14、BSD100、Urban100和Manga109上进行的综合实验表明,ALKDNet不仅保持了效率,而且相对于现有的超分辨率方法还展现出性能提升。平均PSNR和SSIM值分别提高了0.10 dB和0.0013,从而实现了当前的最优性能。