AI Article Synopsis

  • The study investigates methods to improve Near-Infrared (NIR) tomographic image reconstruction by introducing structural information to the objective function.
  • A new framework utilizing weight matrices with Laplacian or Helmholtz-type structures is proposed, allowing for better incorporation of spatial priors in the reconstruction process.
  • Results show that while Helmholtz-type structures offer a generalized approach, relying too heavily on hard prior information can lead to errors if the spatial priors are not accurate.

Article Abstract

Near-Infrared (NIR) tomographic image reconstruction is a non-linear, ill-posed and ill-conditioned problem, and so in this study, different ways of penalizing the objective function with structural information were investigated. A simple framework to incorporate structural priors is presented, using simple weight matrices that have either Laplacian or Helmholtz-type structures. Using both MRI-derived breast geometry and phantom data, a systematic and quantitative comparison was performed with and without spatial priors. The Helmholtz-type structure can be seen as a more generalized approach for incorporating spatial priors into the reconstruction scheme. Moreover, parameter reduction (i.e. hard prior information) in the imaging field through the enforcement of spatially explicit regions may lead to erroneous results with imperfect spatial priors.

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Source
http://dx.doi.org/10.1364/oe.15.008043DOI Listing

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