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Single image super-resolution via multi-scale residual channel attention network

机译:通过多尺度残差通道关注网络实现单幅图像超分辨率

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Recently, various convolutional neural networks (CNNs) based single image super-resolution (SR) methods have been vigorously explored, and a lot of impressive results have emerged. However, more or less unfortunately, most of the methods mainly focused on increasing the depth of network to improve reconstruction performance. As a matter of fact, deeper depth of network usually means an increase in parameters and computations, or worse still, the increase in parameters or computations often results in the difficulty to train the network. This paper develops a new SR approach called multi-scale residual channel attention network (MSRCAN), which is comparative shallow two-stage neural network structure, and can extract more details to effectively ameliorate the quality of SR. Specifically, a multi-scale residual channel attention block (MSRCAB) is designed to plenarily exploit the image features with convolutional kernels of different sizes. At the same time, a channel attention mechanism is introduced to recalibrate the channel significance of feature mappings adaptively. Furthermore, multiple short skip connections and a long skip connection are presented in each MSRCAB to complement information loss. Moreover, the two-stage design contributes to fully uncover low-level and high-level information. Evaluation on the benchmark data set indicates that the proposed method can rival the state-of-the-art convolutional methods. (C) 2019 Elsevier B.V. All rights reserved.
机译:近来,已经大力探索了各种基于卷积神经网络(CNN)的单图像超分辨率(SR)方法,并且出现了许多令人印象深刻的结果。然而,不幸的是,大多数方法主要集中在增加网络深度以改善重建性能上。实际上,更深的网络深度通常意味着参数和计算量的增加,或者更糟的是,参数或计算量的增加通常会导致难以训练网络。本文开发了一种新的SR方法,称为多尺度残差通道注意网络(MSRCAN),它是比较浅的两阶段神经网络结构,可以提取更多细节以有效改善SR的质量。具体而言,设计了多尺度残差通道注意块(MSRCAB),以充分利用具有不同大小的卷积核的图像特征。同时,引入了一种频道关注机制来自适应地重新校准特征映射的频道重要性。此外,在每个MSRCAB中提供了多个短跳转连接和长跳转连接以补充信息丢失。此外,两阶段设计有助于完全发现底层和高层信息。对基准数据集的评估表明,该方法可以与最新的卷积方法相媲美。 (C)2019 Elsevier B.V.保留所有权利。

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