Image from Google Jackets

Electrical impedance tomography: Regularized imaging and contrast detection

Tipo de material: TextoTextoSeries ; IEEE Transactions on Medical Imaging, 15(2), p.170-179, 1996Trabajos contenidos:
  • Adler, A
  • Guardo, R
Tema(s): Recursos en línea: Resumen: Dynamic electrical impedance tomography (EIT)images changes in the conductivity distribution of a medium from low frequency electrical measurements made at electrodes on the medium surface. Reconstruction of the conductivity distribution is an under-determined and ill-posed problem, typically requiring either simplifying assumptions or regularization based on a priori knowledge. This paper presents a maximum a posteriori (MAP)approach to linearized image reconstruction using knowledge of the noise variance of the measurements and the covariance of the conductivity distribution. This approach has the advantage of an intuitive interpretation of the algorithm parameters as well as fast (near real time)image reconstruction. In order to compare this approach to existing algorithms, we develop figures of merit to measure the reconstructed image resolution, the noise amplification of the image reconstruction, and the fidelity of positioning in the image. Finally, we develop a communications systems approach to calculate the probability of detection of a conductivity contrast in the reconstructed hnage as a function of the measurement noise and the reconstruction algorithm used.
Tags from this library: No tags from this library for this title. Log in to add tags.
Star ratings
    Average rating: 0.0 (0 votes)
Holdings
Item type Current library Collection Call number Status Date due Barcode
Documentos solicitados Documentos solicitados CICY Documento préstamo interbibliotecario Ref1 B-16356 (Browse shelf(Opens below)) Available

Dynamic electrical impedance tomography (EIT)images changes in the conductivity distribution of a medium from low frequency electrical measurements made at electrodes on the medium surface. Reconstruction of the conductivity distribution is an under-determined and ill-posed problem, typically requiring either simplifying assumptions or regularization based on a priori knowledge. This paper presents a maximum a posteriori (MAP)approach to linearized image reconstruction using knowledge of the noise variance of the measurements and the covariance of the conductivity distribution. This approach has the advantage of an intuitive interpretation of the algorithm parameters as well as fast (near real time)image reconstruction. In order to compare this approach to existing algorithms, we develop figures of merit to measure the reconstructed image resolution, the noise amplification of the image reconstruction, and the fidelity of positioning in the image. Finally, we develop a communications systems approach to calculate the probability of detection of a conductivity contrast in the reconstructed hnage as a function of the measurement noise and the reconstruction algorithm used.

There are no comments on this title.

to post a comment.