Multi-Step Differential Approaches for the Localization of 3D Point Landmarks in Medical Images
Abstract
In this contribution, we are concerned with the detection and refined subvoxel localization of 3D point landmarks. We propose multi-step differential approaches which are generalizations of an existing two-step approach for subpixel localization of 2D point landmarks. This two-step approach combines landmark detection by applying a differential operator with refined localization through a differential edge intersection approach. In this paper, we investigate the localization performance of this two-step approach for an analytical model of a Gaussian blurred L-corner as well as a Gaussian blurred ellipse. By varying the model parameters, differently tapered and curved structures are represented. The results motivate the use of an analogous approach to 3D point landmark localization. We generalize the edge intersection approach to 3D and, by combining it with 3D differential operators for landmark detection, we propose multi-step approaches for subvoxel localization of 3D point landmarks. The multi-step approaches are experimentally tested on 3D synthetic images and 3D MR images of the human head. We show that the multi-step approaches significantly improve the localization accuracy in comparison to applying a 3D detection operator alone.
Keywords
3D anatomical point landmarks, 3D differential operators, 3D differential edge intersection approach, subvoxel localization
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