Combining Automatic Landmark Detection and Variational Methods for Lung CT Registration
نویسندگان
چکیده
This paper proposes a novel method for image registration of lung CT scans. Our approach consists of a procedure for automatically establishing landmark correspondences in lung CT scan pairs and an elaborate variational image registration scheme. The landmark information is incorporated into the registration scheme as pre-registration using the landmark-based Thin-Plate-Spline (TPS) method. The TPS displacement field is improved by an additional minimization of an objective function consisting of a Normalized Gradient Field distance measure, a volume term, and a curvature regularizer. As a special property, landmark correspondences as established by the TPS registration are guaranteed to remain within a user-defined tolerance during the variational registration step. The new method, called LMP (LandMark Penalty), is applied to the 20 publicly available DIR-Lab data sets and compared to state-of-theart methods. Particularly on the challenging COPDgene data sets, LMP stands out with an average landmark error of 1.43 mm.
منابع مشابه
Lung registration using automatically detected landmarks.
OBJECTIVES Accurate registration of lung CT images is inevitable for numerous clinical applications. Usually, nonlinear intensity-based methods are used. Their accuracy is typically evaluated using corresponding anatomical points (landmarks; e.g. bifurcations of bronchial and vessel trees) annotated by medical experts in the images to register. As image registration can be interpreted as corres...
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