Constructing multilayer locality-constrained matrix regression framework for noise robust face super-resolution

作者:

Highlights:

• We focus on face image super resolution scenarios where the testing images have various noises.

• We propose an efficient multilayer locality-constrained matrix regression (MLCMR) framework to learn the representation of the input LR patch and meanwhile preserve the manifold of the original HR space.

• MLCMR uses nuclear norm regularization to capture the structural information of the representation residual and applies an adaptive neighborhood selection scheme to find the HR patches that are compatible with its neighbors.

• Experimental results demonstrate the effectiveness of our method.

摘要

•We focus on face image super resolution scenarios where the testing images have various noises.•We propose an efficient multilayer locality-constrained matrix regression (MLCMR) framework to learn the representation of the input LR patch and meanwhile preserve the manifold of the original HR space.•MLCMR uses nuclear norm regularization to capture the structural information of the representation residual and applies an adaptive neighborhood selection scheme to find the HR patches that are compatible with its neighbors.•Experimental results demonstrate the effectiveness of our method.

论文关键词:Nuclear norm,Matrix based regression,Face super-resolution,Position-patch

论文评审过程:Received 16 October 2019, Revised 22 May 2020, Accepted 3 July 2020, Available online 4 July 2020, Version of Record 1 November 2020.

论文官网地址:https://doi.org/10.1016/j.patcog.2020.107539