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Lightweight Single Image Super-Resolution Through Efficient Second-Order Attention Spindle Network

机译:通过高效的二阶注意力主轴网络实现轻量级单图像超分辨率

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Recent years have witnessed great success of applying deep convolutional neural networks (CNNs) to single image super-resolution (SISR). However, most of these algorithms focus on increasing modeling capability through developing deeper and wider networks, improving the performance but at a cost of huge computation. Targeting at a better trade-off between efficiency and effectiveness, we propose ESASN, an efficient second-order attention spindle network for lightweight SISR. ESASN is built upon efficient second-order attention spindle (ESAS) blocks, each of which contains two well-designed new modules, efficient multi-scale (EMS) module and second-order attention (SOA) module. EMS reduces a considerable number of parameters while retaining the multi-scale structure to explore rich features. SOA further rescales the multi-scale feature maps, capturing the inter-dependencies among channels pixel-wisely with little additional cost. Both qualitative and quantitative experimental results demonstrate that the combination of EMS and SOA works out favorably for SISR, lifting the performance with fewer parameters. Code is available at https://github.com/yiyunchen/ESASN.
机译:近年来见证了将深度卷积神经网络(CNNS)应用于单图像超分辨率(SISR)的巨大成功。然而,大多数这些算法通过开发更深层次和更广泛的网络,提高性能但以巨大的计算成本来说,这些算法中的大多数都侧重于增加建模能力。我们在效率和有效性之间进行更好的权衡,我们提出了esasn,这是一种有效的二阶关注主轴网络,用于轻量级SISR。 ESASN建立在高效的二阶注意主轴(ESAS)块之上,每个块包含两个设计精心设计的新模块,高效的多尺度(EMS)模块和二阶注意(SOA)模块。 EMS减少了相当数量的参数,同时保留了多尺度结构来探索丰富的功能。 SOA进一步重振了多尺度特征映射,捕获频道像素之间的相互作用,明智地具有很少的额外成本。定性和定量实验结果既表明,EMS和SOA的组合对SISR有利地求出,提升性能较少。代码可在https://github.com/yiyunchen/eSasn获得。

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