基于全局残差网络优化压缩传感模型的平面设计图像重建

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2024-08-08 DOI:10.7717/peerj-cs.2227
Xinxin Fu, Lujing Tang, Yingjie Bai
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引用次数: 0

摘要

文章旨在解决平面设计中信息退化和失真的难题,重点是优化传统的压缩传感(CS)模型。这种优化包括创建一个由局部图像块的压缩观测数据衍生出的共同重建组。在对类似组内的压缩观测数据进行初始重建后,会得到一个初始重建图像块共重构组,其中包含降级的重建图像。这些图像经过信道拼接后输入全局残差网络。该网络由一个非本地特征自适应交互模块组成,该模块以融合为目的,用于增强本地特征重建。结果表明,在较低的采样率下就能实现重建图像的解空间约束。此外,图像中的高频信息也得到了有效重建,从而提高了图像重建的准确性。
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Image reconstruction in graphic design based on Global residual Network optimized compressed sensing model
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.
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CiteScore
7.20
自引率
4.30%
发文量
567
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