Marker‐based C‐arm self‐calibration with unknown calibration pattern

Author:

Pivot Odran1,Voros Sandrine1,Chappard Christine2,Bernard Guillaume3,Grondin Yannick4,Desbat Laurent1

Affiliation:

1. Université Grenoble Alpes, CNRS, UMR 5525, VetAgro Sup, Grenoble INP INSERM, TIMC Grenoble France

2. B3OA, CNRS UMR 7052, U 1271 Inserm Université Paris Cité Paris France

3. Thales‐AVS Moirans France

4. SQI Meylan France

Abstract

AbstractBackgroundAccurate tomographic reconstructions require the knowledge of the actual acquisition geometry. Many mobile C‐arm CT scanners have poorly reproducible acquisition geometries and thus need acquisition‐specific calibration procedures. Most of geometric self‐calibration methods based on projection data either need prior information or are limited to the estimation of a low number of geometric calibration parameters. Other self‐calibration methods generally use a calibration pattern with known geometry and are hardly implementable in practice for clinical applications.PurposeWe present a three‐step marker based self‐calibration method which does not require the prior knowledge of the calibration pattern and thus enables the use of calibration patterns with arbitrary markers positions.MethodsThe first step of the method aims at detecting the set of markers of the calibration pattern in each projection of the CT scan and is performed using the YOLO (You Only Look Once) Convolutional Neural Network. The projected marker trajectories are then estimated by a sequential projection‐wise marker association scheme based on the Linear Assignment Problem which uses Kalman filters to predict the markers 2D positions in the projections. The acquisition geometry is finally estimated from the marker trajectories using the Bundle‐adjustment algorithm.ResultsThe calibration method has been tested on realistic simulated images of the ICRP (International Commission on Radiological Protection) phantom, using calibration patterns with 10 and 20 markers. The backprojection error was used to evaluate the self‐calibration method and exhibited sub‐millimeter errors. Real images of two human knees with 10 and 30 markers calibration patterns were then used to perform a qualitative evaluation of the method, which showed a remarkable artifacts reduction and bone structures visibility improvement.ConclusionsThe proposed calibration method gave promising results that pave the way to patient‐specific geometric self‐calibrations in clinics.

Funder

Agence Nationale de la Recherche

Publisher

Wiley

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