PLoS ONE (Jan 2015)

An Efficient Augmented Lagrangian Method for Statistical X-Ray CT Image Reconstruction.

  • Jiaojiao Li,
  • Shanzhou Niu,
  • Jing Huang,
  • Zhaoying Bian,
  • Qianjin Feng,
  • Gaohang Yu,
  • Zhengrong Liang,
  • Wufan Chen,
  • Jianhua Ma

DOI
https://doi.org/10.1371/journal.pone.0140579
Journal volume & issue
Vol. 10, no. 10
p. e0140579

Abstract

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Statistical iterative reconstruction (SIR) for X-ray computed tomography (CT) under the penalized weighted least-squares criteria can yield significant gains over conventional analytical reconstruction from the noisy measurement. However, due to the nonlinear expression of the objective function, most exiting algorithms related to the SIR unavoidably suffer from heavy computation load and slow convergence rate, especially when an edge-preserving or sparsity-based penalty or regularization is incorporated. In this work, to address abovementioned issues of the general algorithms related to the SIR, we propose an adaptive nonmonotone alternating direction algorithm in the framework of augmented Lagrangian multiplier method, which is termed as "ALM-ANAD". The algorithm effectively combines an alternating direction technique with an adaptive nonmonotone line search to minimize the augmented Lagrangian function at each iteration. To evaluate the present ALM-ANAD algorithm, both qualitative and quantitative studies were conducted by using digital and physical phantoms. Experimental results show that the present ALM-ANAD algorithm can achieve noticeable gains over the classical nonlinear conjugate gradient algorithm and state-of-the-art split Bregman algorithm in terms of noise reduction, contrast-to-noise ratio, convergence rate, and universal quality index metrics.