Neural Representation-Based Method for Metal-induced Artifact Reduction in Dental CBCT Imaging

07/27/2023
by   Hyoung Suk Park, et al.
0

This study introduces a novel reconstruction method for dental cone-beam computed tomography (CBCT), focusing on effectively reducing metal-induced artifacts commonly encountered in the presence of prevalent metallic implants. Despite significant progress in metal artifact reduction techniques, challenges persist owing to the intricate physical interactions between polychromatic X-ray beams and metal objects, which are further compounded by the additional effects associated with metal-tooth interactions and factors specific to the dental CBCT data environment. To overcome these limitations, we propose an implicit neural network that generates two distinct and informative tomographic images. One image represents the monochromatic attenuation distribution at a specific energy level, whereas the other captures the nonlinear beam-hardening factor resulting from the polychromatic nature of X-ray beams. In contrast to existing CT reconstruction techniques, the proposed method relies exclusively on the Beer–Lambert law, effectively preventing the generation of metal-induced artifacts during the backprojection process commonly implemented in conventional methods. Extensive experimental evaluations demonstrate that the proposed method effectively reduces metal artifacts while providing high-quality image reconstructions, thus emphasizing the significance of the second image in capturing the nonlinear beam-hardening factor.

READ FULL TEXT

page 1

page 2

page 4

page 5

page 7

research
10/08/2020

A two-stage approach for beam hardening artifact reduction in low-dose dental CBCT

This paper presents a two-stage method for beam hardening artifact corre...
research
07/29/2016

Image Prediction for Limited-angle Tomography via Deep Learning with Convolutional Neural Network

Limited angle problem is a challenging issue in x-ray computed tomograph...
research
08/02/2017

Sinogram-consistency learning in CT for metal artifact reduction

This paper proposes a sinogram consistency learning method to deal with ...
research
08/06/2018

Metal Artifact Reduction in Cone-Beam X-Ray CT via Ray Profile Correction

In computed tomography (CT), metal implants increase the inconsistencies...
research
06/27/2023

Unsupervised Polychromatic Neural Representation for CT Metal Artifact Reduction

Emerging neural reconstruction techniques based on tomography (e.g., NeR...
research
10/01/2018

One Network to Solve All ROIs: Deep Learning CT for Any ROI using Differentiated Backprojection

Computed tomography for region-of-interest (ROI) reconstruction has adva...
research
06/23/2023

Runtime optimization of acquisition trajectories for X-ray computed tomography with a robotic sample holder

Tomographic imaging systems are expected to work with a wide range of sa...

Please sign up or login with your details

Forgot password? Click here to reset