Zibetti Marcelo V W, Helou Elias S, Regatte Ravinder R, Herman Gabor T
New York University School of Medicine, USA.
State University of São Paulo in São Carlos, Brazil.
IEEE Trans Comput Imaging. 2019 Mar;5(1):109-119. doi: 10.1109/TCI.2018.2882681. Epub 2018 Nov 21.
An improvement of the monotone fast iterative shrinkage-thresholding algorithm (MFISTA) for faster convergence is proposed. Our motivation is to reduce the reconstruction time of compressed sensing problems in magnetic resonance imaging. The proposed modification introduces an extra term, which is a multiple of the proximal-gradient step, into the so-called momentum formula used for the computation of the next iterate in MFISTA. In addition, the modified algorithm selects the next iterate as a possibly-improved point obtained by any other procedure, such as an arbitrary shift, a line search, or other methods. As an example, an arbitrary-length shift in the direction from the previous iterate to the output of the proximal-gradient step is considered. The resulting algorithm accelerates MFISTA in a manner that varies with the iterative steps. Convergence analysis shows that the proposed modification provides improved theoretical convergence bounds, and that it has more flexibility in its parameters than the original MFISTA. Since such problems need to be studied in the context of functions of several complex variables, a careful extension of FISTA-like methods to complex variables is provided.
提出了一种改进的单调快速迭代收缩阈值算法(MFISTA),以实现更快的收敛。我们的动机是减少磁共振成像中压缩感知问题的重建时间。所提出的改进在用于计算MFISTA中下一个迭代点的所谓动量公式中引入了一个额外的项,该项是近端梯度步长的倍数。此外,改进后的算法将下一个迭代点选择为由任何其他过程(如任意移位、线搜索或其他方法)获得的可能改进的点。例如,考虑从前一个迭代点到近端梯度步长输出方向的任意长度移位。所得算法以随迭代步骤变化的方式加速了MFISTA。收敛性分析表明,所提出的改进提供了改进的理论收敛界,并且其参数比原始MFISTA具有更大的灵活性。由于此类问题需要在几个复变量函数的背景下进行研究,因此提供了对类似FISTA方法到复变量的仔细扩展。