Microwave Biomedical Imaging Using the Multiplicative Regularized Gauss--Newton Inversion

@article{Mojabi2009MicrowaveBI,
  title={Microwave Biomedical Imaging Using the Multiplicative Regularized Gauss--Newton Inversion},
  author={P. Mojabi and J. Lovetri},
  journal={IEEE Antennas and Wireless Propagation Letters},
  year={2009},
  volume={8},
  pages={645-648}
}
  • P. Mojabi, J. Lovetri
  • Published 2009
  • Mathematics
  • IEEE Antennas and Wireless Propagation Letters
  • The weighted L2-norm total variation multiplicative regularized Gauss-Newton inversion method, recently developed for inversion of low-frequency deep electromagnetic geophysical measurements, is used for microwave biomedical imaging. This inversion algorithm automatically adjusts the regularization weight and provides edge-preserving characteristics. The accuracy of this method is demonstrated by inverting experimental data of a human forearm and synthetic data taken from brain and breast… CONTINUE READING
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