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Sellf-Adaptive Weighted Skip Connections for Image Super-Resolution

机译:Sellf自适应加权跳过连接可实现图像超分辨率

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Recently, the introduction of deep convolutional neural networks has achieved great performance in low-level vision tasks like single image super-resolution. However, deeper networks tend to have larger number of parameters and be more difficult to be trained. Considering massive low-frequency information in low-resolution inputs, we propose a self-adaptive weighted skip connections (SAWSC) structure to make full use of both the low-level and high-level features in order to better the representation ability of super-resolution networks. In our proposed network, we follow a coarse-to-fine strategy, which reconstructs high-resolution images progressively based on the Laplacian pyramid. At each upscale level, feature maps of each block are connected to subsequent blocks with self-adaptive weights. During each block, several residual channel attention layers are cascaded. Evaluations on five public benchmark datasets show that this algorithm achieves better performance than some other existing methods.
机译:最近,深度卷积神经网络的引入在诸如单图像超分辨率的低级视觉任务中取得了出色的性能。但是,更深的网络往往具有更多的参数,并且更难以训练。考虑到低分辨率输入中的大量低频信息,我们提出了一种自适应加权跳过连接(SAWSC)结构,以充分利用低级和高级功能,从而更好地表示超高分辨率信号。分辨率网络。在我们提出的网络中,我们遵循从粗到细的策略,该策略基于拉普拉斯金字塔逐步重建高分辨率图像。在每个高级级别,每个块的特征图都通过自适应权重连接到后续块。在每个块期间,级联几个剩余的频道关注层。对五个公共基准数据集的评估表明,该算法比其他一些现有方法具有更好的性能。

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