Semi-supervised student-teacher learning for single image super-resolution
作者:
Highlights:
• We propose a deep learning-based semi-supervised approach for SISR. We build our framework via adversarial learning.
• To better facilitate the learning of unlabelled data, we propose a student-teacher (S-T) model to transfer the knowledge from supervised learning (teacher) to the unsupervised learning (student). The S-T model is based on partial weight-sharing of dual discriminators and a pair matching network playing two roles: cycle consistency and ‘latent discriminator’ for better learning of unlabelled data.
• We propose a new SR network structure to better learn the non-local features from LR images via channel in channel and spatial in spatial mechanisms.
• We demonstrate that our method outperforms some purely supervised and unsupervised methods on various experimental settings.
摘要
•We propose a deep learning-based semi-supervised approach for SISR. We build our framework via adversarial learning.•To better facilitate the learning of unlabelled data, we propose a student-teacher (S-T) model to transfer the knowledge from supervised learning (teacher) to the unsupervised learning (student). The S-T model is based on partial weight-sharing of dual discriminators and a pair matching network playing two roles: cycle consistency and ‘latent discriminator’ for better learning of unlabelled data.•We propose a new SR network structure to better learn the non-local features from LR images via channel in channel and spatial in spatial mechanisms.•We demonstrate that our method outperforms some purely supervised and unsupervised methods on various experimental settings.
论文关键词:Semi-supervised learning,Image super-resolution,Student-teacher model,Adversarial learning
论文评审过程:Received 14 March 2021, Revised 21 May 2021, Accepted 24 July 2021, Available online 25 July 2021, Version of Record 30 July 2021.
论文官网地址:https://doi.org/10.1016/j.patcog.2021.108206