Robust CT to US 3D-3D Registration by using Principal Component Analysis and Kalman Filtering
Abstract
Algorithms based on the unscented Kalman filter (UKF) have been proposed as an alternative for registration of point clouds obtained from vertebral ultrasound (US) and computed tomography scans, effectively handling the US limited depth and low signal-to-noise ratio. Previously proposed methods are accurate, but their convergence rate is considerably reduced with initial misalignments of the datasets greater than 30 degrees or 30 mm. We propose a novel method which increases robustness by adding a coarse alignment of the datasets’ principal components and batch-based point inclusions for the UKF. Experiments with simulated scans with full coverage of a single vertebra show the method’s capability and accuracy to correct misalignments as large as 180 degrees and 90 mm. Furthermore, the method registers datasets with varying degrees of missing data and datasets with outlier points coming from adjacent vertebrae.
BIB_text
title = {Robust CT to US 3D-3D Registration by using Principal Component Analysis and Kalman Filtering},
pages = {52-63},
keywds = {
Registration, Computerized Tomography, Ultrasound, Principal Component Analysis, Kalman filter
}
abstract = {
Algorithms based on the unscented Kalman filter (UKF) have been proposed as an alternative for registration of point clouds obtained from vertebral ultrasound (US) and computed tomography scans, effectively handling the US limited depth and low signal-to-noise ratio. Previously proposed methods are accurate, but their convergence rate is considerably reduced with initial misalignments of the datasets greater than 30 degrees or 30 mm. We propose a novel method which increases robustness by adding a coarse alignment of the datasets’ principal components and batch-based point inclusions for the UKF. Experiments with simulated scans with full coverage of a single vertebra show the method’s capability and accuracy to correct misalignments as large as 180 degrees and 90 mm. Furthermore, the method registers datasets with varying degrees of missing data and datasets with outlier points coming from adjacent vertebrae.
}
isbn = {978-331941826-1},
isi = {1},
doi = {10.1007/978-3-319-41827-8_5},
date = {2016-07-01},
year = {2016},
}