USB-Net:基于多相特征集成的压缩成像展开分裂Bregman方法

Zhen Guo;Hongping Gan
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引用次数: 0

摘要

现有的基于展开的压缩成像方法总是存在一些问题,包括特征提取效率低下和迭代重建阶段的信息丢失,这些问题在低采样比下尤为明显,即重构图像中明显的细节退化和失真。为了缓解这些挑战,我们提出了USB-Net,这是一种受著名的Split Bregman算法和多相特征集成策略启发的深度展开方法,用于压缩成像重建。具体来说,我们使用定制的深度注意块作为特征提取的基本块,同时也解决了Split Bregman方法中与稀疏归纳相关的分裂算子。在此基础上,我们引入了三个辅助迭代模块:${\mathrm {X}}^{(k)}$、${\mathrm {D}}^{(k)}$和${\mathrm {B}}^{(k)}$,以增强Split Bregman分解策略在问题分解和Bregman迭代中的有效性。此外,我们引入了两类迭代融合模块,以无缝协调和整合迭代重建阶段的见解,增强对边缘信息和纹理等关键特征的利用。总的来说,USB-Net可以充分利用传统的Split Bregman方法的优势,利用多阶段迭代的洞察力来增强特征提取,优化数据保真度,实现高质量的图像重建。大量实验表明,USB-Net在图像压缩感知、cs磁共振成像和快照压缩成像任务上明显优于当前最先进的方法,显示出优越的通用性。我们的代码可在USB-Net。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
USB-Net: Unfolding Split Bregman Method With Multi-Phase Feature Integration for Compressive Imaging
Existing unfolding-based compressive imaging approaches always suffer from certain issues, including inefficient feature extraction and information loss during iterative reconstruction phases, which become particularly evident at low sampling ratios, i.e., significant detail degradation and distortion in reconstructed images. To mitigate these challenges, we propose USB-Net, a deep unfolding method inspired by the renowned Split Bregman algorithm and multi-phase feature integration strategy, for compressive imaging reconstruction. Specifically, we use a customized Depthwise Attention Block as a fundamental block for feature extraction, but also to address the sparse induction-related splitting operator within Split Bregman method. Based on this, we introduce three Auxiliary Iteration Modules: ${\mathrm {X}}^{(k)}$ , ${\mathrm {D}}^{(k)}$ , and ${\mathrm {B}}^{(k)}$ to reinforce the effectiveness of Split Bregman’s decomposition strategy for problem breakdown and Bregman iterations. Moreover, we introduce two categories of Iterative Fusion Modules to seamlessly harmonize and integrate insights across iterative reconstruction phases, enhancing the utilization of crucial features, such as edge information and textures. In general, USB-Net can fully harness the advantages of traditional Split Bregman approach, manipulating multi-phase iterative insights to enhance feature extraction, optimize data fidelity, and achieve high-quality image reconstruction. Extensive experiments show that USB-Net significantly outperforms current state-of-the-art methods on image compressive sensing, CS-magnetic resonance imaging, and snapshot compressive imaging tasks, demonstrating superior generalizability. Our code is available at USB-Net.
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