A Row-Action Based L1-Minimization Approach to Robust Fluorescent Tomography

نویسندگان

  • Pouyan Mohajerani
  • Ali Behrooz
  • Ali A. Eftekhar
  • Ali Adibi
چکیده

We present a row-action method based on minimization of the L1 norm for improving the accuracy of fluorescent tomography in reconstruction of fluorescent objects. The method is validated using a CW system and milk-based phantoms.

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تاریخ انتشار 2009