Iterative tomographic reconstruction with TV prior for low-dose CBCT dental imaging
Louise Friot-Giroux (CREATIS), Fran\c{c}oise Peyrin (CREATIS),, Voichita Maxim (CREATIS)

TL;DR
This paper compares advanced iterative reconstruction algorithms incorporating TV prior for low-dose 3D dental CBCT imaging, demonstrating improved image quality and convergence speed on simulated and real clinical data.
Contribution
It introduces and evaluates pre-conditioned PDHG and MLEM-TV algorithms tailored for 3D dental CBCT with truncated projections and metal artifacts.
Findings
PDHG and MLEM-TV yield superior reconstruction quality.
Pre-conditioning improves convergence speed.
First evaluation of these algorithms on experimental dental CBCT data.
Abstract
Abstract Objective. Cone-beam computed tomography is becoming more and more popular in applications such as 3D dental imaging. Iterative methods compared to the standard Feldkamp algorithm have shown improvements in image quality of reconstruction of low-dose acquired data despite their long computing time. An interesting aspect of iterative methods is their ability to include prior information such as sparsity-constraint. While a large panel of optimization algorithms along with their adaptation to tomographic problems are available, they are mainly studied on 2D parallel or fan-beam data. The issues raised by 3D CBCT and moreover by truncated projections are still poorly understood. Approach. We compare different carefully designed optimization schemes in the context of realistic 3D dental imaging. Besides some known algorithms, SIRT-TV and MLEM, we investigate the primal-dual hybrid…
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Taxonomy
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
