Lightweight super resolution networks have extremely importance for real-world applications. In recent years several SR deep learning approaches with outstanding achievement have been introduced by sacrificing memory and computational cost. To overcome this problem, a novel lightweight super resolution network is proposed, which improves the SOTA performance in lightweight SR and performs roughly similar to computationally expensive networks. Multi-Path Residual Network designs with a set of Residual concatenation Blocks stacked with Adaptive Residual Blocks: ($i$) to adaptively extract informative features and learn more expressive spatial context information; ($ii$) to better leverage multi-level representations before up-sampling stage; and ($iii$) to allow an efficient information and gradient flow within the network. The proposed architecture also contains a new attention mechanism, Two-Fold Attention Module, to maximize the representation ability of the model. Extensive experiments show the superiority of our model against other SOTA SR approaches.
翻译:近些年来,通过牺牲记忆和计算成本,引入了几项具有杰出成就的SR深层次学习方法,以克服这一问题。为了克服这一问题,提出了一个新的轻度超分辨率网络,改进SOTA在轻体重SR的性能,并运行与计算成本高的网络大致相似。多太平洋残余网络设计了一套堆积在适应性残余区块的残余凝聚区块:(美元)用于适应性抽取信息功能,并学习更清晰的空间背景信息;(二)在取样阶段前更好地利用多层次的演示;(三)使网络内的信息和梯度有效流动成为可能。拟议的结构还包含一个新的关注机制,即双倍关注模块,以最大限度地发挥模型的代表性能力。广泛的实验显示我们模型相对于其他SOTASR方法的优势。