University of Wollongong
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Statistical Shape Model Generation Using Diffeomorphic Surface Registration

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conference contribution
posted on 2024-11-14, 11:35 authored by Jiaqi Wu, Guangxu Li, Huimin Lu, Hyoung Kim, Philip OgunbonaPhilip Ogunbona
Statistical shape modelling is an efficient and robust method for medical image segmentation in computer-aided diagnosis. The key step in building a statistical shape model is to find corresponding landmarks in each instance of a training set. In this paper, a novel landmark correspondence estimation method that uses edge collapse surface simplification and the sphere registration is proposed. All the landmarks are selected and transformed by spherical conformal mapping from the instances of the training set and the associated correspondence are automatically found on the spheres. We applied our method on 21 cases of 3-D right lung shapes. The results of image segmentation experiment indicate that our method has a positive influence on the accuracy of segmentation result.

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Citation

Wu, J., Li, G., Lu, H., Kim, H. & Ogunbona, P. O. (2017). Statistical Shape Model Generation Using Diffeomorphic Surface Registration. ICBIP 2017: Proceedings of the 2nd International Conference on Biomedical Signal and Image Processing (pp. 37-41). New York, United States: ACM.

Parent title

ACM International Conference Proceeding Series

Pagination

37-41

Language

English

RIS ID

128198

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