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Graz University of Technology Insti
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Abstract The segmentation of tubula
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Kurzfassung Die Segmentierung tubul
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Acknowledgements I am deeply gratef
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xviii LIST OF FIGURES 4.2 Shape pri
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98 Chapter 6. Coronary Artery Tree
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