Zhao You, Liao Xiaofeng, He Xing, Tang Rongqiang
IEEE Trans Neural Netw Learn Syst. 2022 Dec;33(12):7488-7501. doi: 10.1109/TNNLS.2021.3085314. Epub 2022 Nov 30.
This article develops several centralized and collective neurodynamic approaches for sparse signal reconstruction by solving the L -minimization problem. First, two centralized neurodynamic approaches are designed based on the augmented Lagrange method and the Lagrange method with derivative feedback and projection operator. Then, the optimality and global convergence of them are derived. In addition, considering that the collective neurodynamic approaches have the function of information protection and distributed information processing, first, under mild conditions, we transform the L -minimization problem into two network optimization problems. Later, two collective neurodynamic approaches based on the above centralized neurodynamic approaches and multiagent consensus theory are proposed to address the obtained network optimization problems. As far as we know, this is the first attempt to use the collective neurodynamic approaches to deal with the L -minimization problem in a distributed manner. Finally, several comparative experiments on sparse signal and image reconstruction demonstrate that our proposed centralized and collective neurodynamic approaches are efficient and effective.
本文通过解决L -最小化问题,开发了几种用于稀疏信号重建的集中式和集体神经动力学方法。首先,基于增广拉格朗日方法以及带有导数反馈和投影算子的拉格朗日方法,设计了两种集中式神经动力学方法。然后,推导了它们的最优性和全局收敛性。此外,考虑到集体神经动力学方法具有信息保护和分布式信息处理功能,首先,在温和条件下,我们将L -最小化问题转化为两个网络优化问题。随后,基于上述集中式神经动力学方法和多智能体共识理论,提出了两种集体神经动力学方法来解决所得到的网络优化问题。据我们所知,这是首次尝试使用集体神经动力学方法以分布式方式处理L -最小化问题。最后,在稀疏信号和图像重建方面的几个对比实验表明,我们提出的集中式和集体神经动力学方法是高效且有效的。