单图像超分辨率与动态残差连接

Karam Park, Jae Woong Soh, N. Cho
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引用次数: 1

摘要

深度卷积神经网络在单幅图像超分辨率(SISR)领域显示出显著的进步。最近,考虑到实际应用的计算资源有限,已经有人尝试使用轻量级网络来解决SISR问题。特别是对于轻量级网络,参数需求和性能之间的平衡很难调整,大多数轻量级的SISR网络都是基于大量的暴力破解实验手工设计的。此外,网络性能的一个关键因素依赖于结构中反复出现的构建块的跳过连接。值得注意的是,在以前的工作中,这些联系是预先定义的,由人类研究人员手动确定。因此,它们对输入图像统计数据的灵活性较差,对于给定的参数数量可以有更好的解决方案。因此,我们将重点放在基本构建块(残差网络)连接的网络自动化设计上,并提出了动态残差关注网络(DRAN)。该方法基于注意机制的思想,允许网络根据输入图像动态选择残差路径。为此,我们设计了一个动态残差模块,用于确定给定输入图像的基本构建块之间的残差路径。通过寻找块之间的最优残差路径,网络可以选择性地绕过重建目标高分辨率(HR)图像所需的信息特征。实验结果表明,我们提出的DRAN在SISR中优于大多数现有的最先进的轻量化模型。
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Single Image Super-Resolution with Dynamic Residual Connection
Deep convolutional neural networks have shown significant improvement in the single image super-resolution (SISR) field. Recently, there have been attempts to solve the SISR problem using lightweight networks, considering limited computational resources for real-world applications. Especially for lightweight networks, balancing between parameter demand and performance is very difficult to adjust, and most lightweight SISR networks are manually designed based on a huge number of brute-force experiments. Besides, a critical key to the network performance relies on the skip connection of building blocks that are repeatedly in the architecture. Notably, in previous works, these connections are pre-defined and manually determined by human researchers. Hence, they are less flexible to the input image statistics, and there can be a better solution for the given number of parameters. Therefore, we focus on the automated design of networks regarding the connection of basic building blocks (residual networks), and as a result, propose a dynamic residual attention network (DRAN). The proposed method allows the network to dynamically select residual paths depending on the input image, based on the idea of attention mechanism. For this, we design a dynamic residual module that determines the residual paths between the basic building blocks for the given input image. By finding optimal residual paths between the blocks, the network can selectively bypass informative features needed to reconstruct the target high-resolution (HR) image. Experimental results show that our proposed DRAN outperforms most of the existing state-of-the-arts lightweight models in SISR.
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