NANAAug 9, 2017

Iterative Methods for Photoacoustic Tomography in Attenuating Acoustic Media

arXiv:1704.0742216 citations
AI Analysis

This work provides theoretically grounded iterative reconstruction algorithms for photoacoustic tomography in attenuating media, addressing a known bottleneck in the field.

The authors developed iterative regularization methods for photoacoustic tomography in attenuating media, providing a clear convergence analysis and stable adjoint formulation. Numerical results demonstrate efficiency and accuracy, including in limited-view scenarios.

The development of efficient and accurate reconstruction methods is an important aspect of tomographic imaging. In this article, we address this issue for photoacoustic tomography. To this aim, we use models for acoustic wave propagation accounting for frequency dependent attenuation according to a wide class of attenuation laws that may include memory. We formulate the inverse problem of photoacoustic tomography in attenuating medium as an ill-posed operator equation in a Hilbert space framework that is tackled by iterative regularization methods. Our approach comes with a clear convergence analysis. For that purpose we derive explicit expressions for the adjoint problem that can efficiently be implemented. In contrast to time reversal, the employed adjoint wave equation is again damping and, thus has a stable solution. This stability property can be clearly seen in our numerical results. Moreover, the presented numerical results clearly demonstrate the Efficiency and accuracy of the derived iterative reconstruction algorithms in various situations including the limited view case.

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