Login / Signup

Noise-Robust Image Reconstruction Based on Minimizing Extended Class of Power-Divergence Measures.

Ryosuke KasaiYusaku YamaguchiTakeshi KojimaOmar M Abou Al-OlaTetsuya Yoshinaga
Published in: Entropy (Basel, Switzerland) (2021)
The problem of tomographic image reconstruction can be reduced to an optimization problem of finding unknown pixel values subject to minimizing the difference between the measured and forward projections. Iterative image reconstruction algorithms provide significant improvements over transform methods in computed tomography. In this paper, we present an extended class of power-divergence measures (PDMs), which includes a large set of distance and relative entropy measures, and propose an iterative reconstruction algorithm based on the extended PDM (EPDM) as an objective function for the optimization strategy. For this purpose, we introduce a system of nonlinear differential equations whose Lyapunov function is equivalent to the EPDM. Then, we derive an iterative formula by multiplicative discretization of the continuous-time system. Since the parameterized EPDM family includes the Kullback-Leibler divergence, the resulting iterative algorithm is a natural extension of the maximum-likelihood expectation-maximization (MLEM) method. We conducted image reconstruction experiments using noisy projection data and found that the proposed algorithm outperformed MLEM and could reconstruct high-quality images that were robust to measured noise by properly selecting parameters.
Keyphrases
  • deep learning
  • image quality
  • machine learning
  • computed tomography
  • artificial intelligence
  • convolutional neural network
  • dual energy
  • air pollution
  • big data
  • magnetic resonance
  • preterm infants
  • low birth weight