1. Image reconstruction in graphic design based on Global residual Network optimized compressed sensing model
- Author
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Xinxin Fu, Lujing Tang, and Yingjie Bai
- Subjects
Compressed sensing ,CNN ,Image reconstruction ,Global residuals ,Planar design ,Electronic computers. Computer science ,QA75.5-76.95 - 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.
- Published
- 2024
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