Recently, deep convolutional neural network methods have achieved an excellent performance in image superresolution (SR), but they can not be easily applied to embedded devices due to large memory cost. To solve this problem, we propose a pyramidal dense attention network (PDAN) for lightweight image super-resolution in this paper. In our method, the proposed pyramidal dense learning can gradually increase the width of the densely connected layer inside a pyramidal dense block to extract deep features efficiently. Meanwhile, the adaptive group convolution that the number of groups grows linearly with dense convolutional layers is introduced to relieve the parameter explosion. Besides, we also present a novel joint attention to capture cross-dimension interaction between the spatial dimensions and channel dimension in an efficient way for providing rich discriminative feature representations. Extensive experimental results show that our method achieves superior performance in comparison with the state-of-the-art lightweight SR methods.
翻译:最近,深卷动神经网络方法在图像超分辨率(SR)方面取得了极佳的性能,但由于记忆成本巨大,这些方法无法轻易地应用于嵌入装置。为了解决这个问题,我们提议在本文中建立一个金字塔式密集关注网络(PDAN),用于轻量图像超分辨率。按照我们的方法,拟议的金字塔式密集学习可以逐步增加金字塔式稠密区块内密相连层的宽度,以便有效地挖掘深层特征。与此同时,引入适应性群体变异,即与密集的卷发层成线状的群数增长,以缓解参数爆炸。此外,我们还提出了一种新的联合关注点,以有效的方式捕捉空间维度和频道维度之间的交叉分层互动,以提供丰富的有区别性特征表现。广泛的实验结果表明,我们的方法与最先进的光重SR方法相比,取得了更高的性能。