ODE-inspired Network Design for Single Image Super-Resolution
He, Xiangyu2; Mo, Zitao2; Wang, Peisong2; Liu, Yang1; Yang, Mingyuan1; Cheng, Jian2
2019-06
会议日期June 16th - June 20th
会议地点Long Beach, CA
页码1732–1741
英文摘要

Single image super-resolution, as a high dimensional structured prediction problem, aims to characterize fine-grain information given a low-resolution sample. Recent advances in convolutional neural networks are introduced into super-resolution and push forward progress in this field. Current studies have achieved impressive performance by manually designing deep residual neural networks but overly relies on practical experience. In this paper, we propose to adopt an ordinary differential equation (ODE)-inspired design scheme for single image super-resolution, which have brought us a new understanding of ResNet in classification problems. Not only is it interpretable for super-resolution but it provides a reliable guideline on network designs. By casting the numerical schemes in ODE as blueprints, we derive two types of network structures: LF-block and RK-block, which correspond to the Leapfrog method and Runge-Kutta method in numerical ordinary differential equations. We evaluate our models on benchmark datasets, and the results show that our methods surpass the state-of-the-arts while keeping comparable parameters and operations.

产权排序1
会议录出版者IEEE
语种英语
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/40124]  
专题类脑芯片与系统研究
作者单位1.Alibaba Group
2.Institute of Automation, Chinese Academy of Sciences
推荐引用方式
GB/T 7714
He, Xiangyu,Mo, Zitao,Wang, Peisong,et al. ODE-inspired Network Design for Single Image Super-Resolution[C]. 见:. Long Beach, CA. June 16th - June 20th.
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