Image super-resolution reconstruction achieves better results than traditional methods with the help of the powerful nonlinear representation ability of convolution neural network. However, some existing algorithms also have some problems, such as insufficient utilization of phased features, ignoring the importance of early phased feature fusion to improve network performance, and the inability of the network to pay more attention to high-frequency information in the reconstruction process. To solve these problems, we propose a multi-branch feature multiplexing fusion network with mixed multi-layer attention (MBMFN), which realizes the multiple utilization of features and the multistage fusion of different levels of features. To further improve the networks performance, we propose a lightweight enhanced residual channel attention (LERCA), which can not only effectively avoid the loss of channel information but also make the network pay more attention to the key channel information and benefit from it. Finally, the attention mechanism is introduced into the reconstruction process to strengthen the restoration of edge texture and other details. A large number of experiments on several benchmark sets show that, compared with other advanced reconstruction algorithms, our algorithm produces highly competitive objective indicators and restores more image detail texture information.
翻译:超分辨率图像重建比传统方法取得更好的结果,在卷发神经网络强大的非线性代表能力的帮助下,超分辨率图像重建取得了比传统方法更好的结果。然而,一些现有的算法也存在一些问题,例如,没有充分利用分阶段功能,忽视早期阶段性特征融合对于改善网络性能的重要性,以及网络无法在重建过程中更多地关注高频信息。为了解决这些问题,我们提议建立一个多部门特征多重融合网络,具有混合的多层次关注(MBMMFN),这种网络认识到多重利用功能和不同程度特征的多阶段融合。为了进一步改善网络的性能,我们建议一种轻量级强化的留置频道关注(LERCA),这不仅能够有效避免频道信息的丢失,而且能够使网络更多地关注关键频道信息并从中受益。最后,在重建过程中引入了关注机制,以加强边缘文本和其他细节的恢复。在几个基准组上进行的大量实验表明,与其他先进的重建算法相比,我们的算法产生了高度竞争性的客观指标,并恢复了图像详细文本信息。