The recent progress of deep convolutional neural networks has enabled great success in single image super-resolution (SISR) and many other vision tasks. Their performances are also being increased by deepening the networks and developing more sophisticated network structures. However, finding an optimal structure for the given problem is a difficult task, even for human experts. For this reason, neural architecture search (NAS) methods have been introduced, which automate the procedure of constructing the structures. In this paper, we expand the NAS to the super-resolution domain and find a lightweight densely connected network named DeCoNASNet. We use a hierarchical search strategy to find the best connection with local and global features. In this process, we define a complexity-based penalty for solving image super-resolution, which can be considered a multi-objective problem. Experiments show that our DeCoNASNet outperforms the state-of-the-art lightweight super-resolution networks designed by handcraft methods and existing NAS-based design.
翻译:最近深层革命性神经网络的进步使得单一图像超分辨率(SISR)和其他许多视觉任务取得了巨大成功。它们的表现也正在通过深化网络和开发更先进的网络结构而得到提高。然而,找到一个最佳的问题结构是一项困难的任务,甚至对人类专家来说也是如此。为此,引入了神经结构搜索(NAS)方法,使构建结构的程序自动化。在本文件中,我们将NAS扩大到超级分辨率域,并找到一个叫DeCONASNet的轻量级密集连接网络。我们使用一个等级搜索战略来寻找与本地和全球特征的最佳联系。在这个过程中,我们定义了一种基于复杂性的处罚,用于解决图像超分辨率,这可以被视为一个多目标问题。实验表明,我们的DeCONASNet超越了由手工艺方法和现有NAS设计的最先进的轻度超分辨率网络。