Cephalometric Landmark Tracing Using Deformable Templates

Healthcare Informatics, Imaging and Systems Biology(2011)

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摘要
Automatic detection and identification of landmarks in cephalometry is of great significance to orthognathic surgery and clinic applications. Motivated by the increasing demands of computerized cephalometric analysis, we present a tree-shaped deformable template which detects the landmark points of a grayscale cephalometric x-ray image. After normalization, a group of randomly selected images are used to train the geometric prior, and a dynamic programming algorithm enhanced by down sampling is employed to find the optimal landmark configuration. The proposed algorithm demonstrates promising detection results as well as time efficiency on both soft and hard contours. This leads to a significant improvement over the state-of-art diagnostic tools in the area of cephalometric diagnosis.
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关键词
deformable template,grayscale cephalometric x-ray image,medical image analysis,landmark point,computerized cephalometric analysis,automatic landmark detection,computational geometry,tree shaped deformable template,cephalometry,automatic detection,orthognathic surgery,proposed algorithm,soft contours,geometric prior,cephalometric diagnosis,anthropometry,dynamic programming algorithm,automatic landmark identification,detection result,cephalometric landmark tracing,deformable templates,dynamic programming,optimal landmark configuration,spatial variables measurement,x-ray imaging,hard contours,clinic application,medical image processing,prototypes,imaging,shape
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