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Dual-path attention network for single image super-resolution

机译:单幅图像超分辨率的双路注意网络

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Deep convolutional neural networks (CNNs) have recently made remarkable advances in single image super resolution (SISR). The CNN structures of most existing SISR methods are just based on residual structures, dense structures, or their variants. However, these methods almost all adopt single-path structures, which makes them difficult to make full use of the complementary contextual information of the different ways of feature extraction (e.g., residual and dense connections). In this paper, we develop a novel dual-path attention network, which includes the dual-path attention groups (DPAGs) with dual skip connections (DSCs), in order to combine the advantages of both residual and dense connections for better SR performance. Each DPAG has several dual-path blocks (DPBs) and a path attention fusion (PAF). The DPBs realize the structure of the dual-path topology, while the PAF can further improve the discriminative representation ability by a channel attention (CA) mechanism, adaptively fuse the complementary contextual information produced by the two paths, and stabilize the network. Our DPAN can well pay attention to high-frequency information because each DSC contains a local skip connection and an adaptively weighted global skip connection (AWGSC), which can further adaptively bypass low-frequency features. Extensive experimental results demonstrate the superiority of the proposed DPAN in terms of both quantitative metrics and visual quality, compared with the current state-of-the-art SISR methods. For instance, compared with recent typical methods, for Bicubic (BI) degradation on the difficult dataset Urban100, our DPAN achieved the best PSNR of 33.22 dB for scale x2 , 29.20 dB for scale x3, and 26.99 dB for scale x4, respectively.
机译:深度卷积神经网络(CNNS)最近在单图像超分辨率(SISR)中取得了显着的进步。大多数现有SISR方法的CNN结构仅基于残留结构,致密结构或其变体。然而,这些方法几乎所有采用单路径结构,这使得它们难以充分利用不同特征提取方式的互补语学信息(例如,残差和密集的连接)。在本文中,我们开发了一种新型双径注意网络,包括具有双跳过连接(DSCS)的双向注意力组(DPAG),以便将剩余和密集连接的优点组合以获得更好的SR性能。每个DPAG都有几个双路径块(DPB)和路径注意融合(PAF)。 DPBS实现了双路径拓扑的结构,而PAF可以通过信道注意(CA)机制进一步提高鉴别性表示能力,自适应地融合由两条路径产生的互补语学信息,并稳定网络。我们的DPAN可以重视高频信息,因为每个DSC都包含本地跳过连接和自适应加权的全局跳过连接(AWGSC),这可以进一步自适应地绕过低频功能。与当前最先进的SISR方法相比,广泛的实验结果表明,在定量度量和视觉质量方面,提出了DPAN的优越性。例如,与最近的典型方法相比,对于困难的数据集Urban100上的Bicubic(BI)降级,我们的DPAN分别实现了33.22 dB的最佳PSNR,分别为Scale X3的标度X2和26.99 dB。

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