Wu Weiwen, Hu Dianlin, Cong Wenxiang, Shan Hongming, Wang Shaoyu, Niu Chuang, Yan Pingkun, Yu Hengyong, Vardhanabhuti Varut, Wang Ge
Biomedical Imaging Center, Center for Biotechnology and Interdisciplinary Studies, Department of Biomedical Engineering, Rensselaer Polytechnic Institute, Troy, NY, USA.
School of Biomedical Engineering, Sun Yat-sen University, Shenzhen, Guangdong, China.
Patterns (N Y). 2022 Apr 6;3(5):100475. doi: 10.1016/j.patter.2022.100475. eCollection 2022 May 13.
Due to lack of the kernel awareness, some popular deep image reconstruction networks are unstable. To address this problem, here we introduce the bounded relative error norm (BREN) property, which is a special case of the Lipschitz continuity. Then, we perform a convergence study consisting of two parts: (1) a heuristic analysis on the convergence of the analytic compressed iterative deep (ACID) scheme (with the simplification that the CS module achieves a perfect sparsification), and (2) a mathematically denser analysis (with the two approximations: [1] A is viewed as an inverse A in the perspective of an iterative reconstruction procedure and [2] a pseudo-inverse is used for a total variation operator H). Also, we present adversarial attack algorithms to perturb the selected reconstruction networks respectively and, more importantly, to attack the ACID workflow as a whole. Finally, we show the numerical convergence of the ACID iteration in terms of the Lipschitz constant and the local stability against noise.
由于缺乏内核感知,一些流行的深度图像重建网络不稳定。为了解决这个问题,我们在此引入有界相对误差范数(BREN)属性,它是利普希茨连续性的一种特殊情况。然后,我们进行了一项由两部分组成的收敛性研究:(1)对解析压缩迭代深度(ACID)方案收敛性的启发式分析(简化为CS模块实现完美稀疏化),以及(2)数学上更密集的分析(有两个近似:[1]从迭代重建过程的角度将A视为逆A,[2]对全变差算子H使用伪逆)。此外,我们分别提出对抗攻击算法来扰动选定的重建网络,更重要的是,对整个ACID工作流程进行攻击。最后,我们根据利普希茨常数和对噪声的局部稳定性展示了ACID迭代的数值收敛性。