Image reconstruction in graphic design based on Global residual Network optimized compressed sensing model

Author:

Fu Xinxin1,Tang Lujing1,Bai Yingjie2

Affiliation:

1. Department of Integrated Industrial Design, Hanseo University, Seosan, Republic of South Korea

2. School of Design, Guangxi Normal University, Guilin, China

Abstract

The article aims to address the challenges of information degradation and distortion in graphic design, focusing on optimizing the traditional compressed sensing (CS) model. This optimization involves creating a co-reconstruction group derived from compressed observations of local image blocks. Following an initial reconstruction of compressed observations within similar groups, an initially reconstructed image block co-reconstruction group is obtained, featuring degraded reconstructed images. These images undergo channel stitching and are input into a global residual network. This network is composed of a non-local feature adaptive interaction module stacked with the aim of fusion to enhance local feature reconstruction. Results indicate that the solution space constraint for reconstructed images is achieved at a low sampling rate. Moreover, high-frequency information within the images is effectively reconstructed, improving image reconstruction accuracy.

Publisher

PeerJ

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