Estimation of Large Motion in Lung CT by Integrating Regularized Keypoint Correspondences into Dense Deformable Registration
Jan R\"uhaak, Thomas Polzin, Stefan Heldmann, Ivor J. A. Simpson,, Heinz Handels, Jan Modersitzki, Mattias P. Heinrich

TL;DR
This paper introduces a new pulmonary CT registration algorithm that effectively handles large respiratory motions by combining sparse keypoint correspondences with dense deformable registration, achieving high accuracy and robustness.
Contribution
The novel integration of sparse keypoint correspondences into a dense registration framework for large lung motions is a key innovation of this work.
Findings
Ranks first in EMPIRE10 challenge
Achieves 0.82 mm average landmark distance
Matches inter-observer variability in landmark annotation
Abstract
We present a novel algorithm for the registration of pulmonary CT scans. Our method is designed for large respiratory motion by integrating sparse keypoint correspondences into a dense continuous optimization framework. The detection of keypoint correspondences enables robustness against large deformations by jointly optimizing over a large number of potential discrete displacements, whereas the dense continuous registration achieves subvoxel alignment with smooth transformations. Both steps are driven by the same normalized gradient fields data term. We employ curvature regularization and a volume change control mechanism to prevent foldings of the deformation grid and restrict the determinant of the Jacobian to physiologically meaningful values. Keypoint correspondences are integrated into the dense registration by a quadratic penalty with adaptively determined weight. Using a…
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