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Accurate single image super-resolution using multi-path wide-activated residual network

机译:使用多路径广域激活残差网络的精确单图像超分辨率

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摘要

In many recent image super-resolution (SR) methods based on convolutional neural networks (CNNs), the superior performance was achieved by training very large networks, which may not be suitable for real-world applications with limited computing resources. Therefore, it is necessary to develop more compact networks that achieve a better trade-off between the model size and the performance. In this paper, we propose an efficient and effective network called multi-path wide-activated residual network (MWRN). Firstly, as the basic building block of MWRN, the multi-path wide-activated residual block (MWRB) is presented to extract the multi-scale features. MWRB consists of three parallel wide-activated residual paths, where the dilated convolutions with different dilation factors are used to increase the receptive fields. Secondly, the fusional channel attention (FCA) module, which contains a bottleneck layer and a multi-path wide-activated residual channel attention (MWRCA) block, is designed to well exploit the multi-level features in MWRN. In each FCA, the MWRCA block refines the fused features by taking the interdependencies among feature channels into consideration. The experiments demonstrate that, compared with the state-of-the-art methods, the proposed MWRN model is able to provide very competitive performance with a relatively small number of parameters.
机译:在许多最近基于卷积神经网络(CNN)的图像超分辨率(SR)方法中,卓越的性能是通过训练非常大的网络实现的,这可能不适合计算资源有限的实际应用。因此,有必要开发更紧凑的网络,以在模型大小和性能之间取得更好的平衡。在本文中,我们提出了一种有效且有效的网络,称为多径广域激活剩余网络(MWRN)。首先,作为MWRN的基本组成部分,提出了多径广域激活剩余块(MWRB)以提取多尺度特征。 MWRB由三个平行的宽激活残差路径组成,其中使用具有不同扩张因子的扩张卷积来增加接收场。其次,融合通道注意(FCA)模块包含瓶颈层和多路径宽激活残余通道注意(MWRCA)块,旨在充分利用MWRN中的多级功能。在每个FCA中,MWRCA块通过考虑特征通道之间的相互依赖性来完善融合特征。实验表明,与最新方法相比,所提出的MWRN模型能够以相对较少的参数提供非常有竞争力的性能。

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