A hybrid ASM approach for sparse volumetric data segmentation
Contribuinte(s) |
Department of Computer Science Vision, Graphics and Visualisation Group |
---|---|
Data(s) |
04/03/2008
04/03/2008
2007
|
Resumo |
Y. Zhu, S. Williams and R. Zwiggelaar, 'A hybrid ASM approach for sparse volumetric data segmentation', Pattern Recognition and Image Analysis 17 (2), 252-258 (2007) Three-Dimensional (3D) Active Shape Modeling (ASM) is a straightforward extension of 2D ASM. 3D ASM is robust when true volumetric data is considered. However, when the information in one dimension is sparse, pure 3D ASM tends to be less robust. We present a hybrid 2D + 3D methodology which can deal with sparse 3D data. 2D and 3D ASMs are combined to obtain a 'global optimal' segmentation of the 3D object embedded in the data set, rather than the 'locally optimal' segmentation on separate slices. Experimental results indicate that the developed approach shows equivalent precision on separate slices but higher consistency for whole volumes when compared to 2D ASM, while the results for whole volumes are improved when compared to the pure 3D ASM approach. Peer reviewed |
Formato |
7 |
Identificador |
Zhu , Y , Williams , S & Zwiggelaar , R 2007 , ' A hybrid ASM approach for sparse volumetric data segmentation ' Pattern Recognition and Image Analysis , vol 17 , no. 2 , pp. 252-258 . DOI: 10.1134/S1054661807020125 1054-6618 PURE: 75824 PURE UUID: a9bee9a8-d2d1-411c-9960-4d3d0a8243e5 dspace: 2160/521 http://hdl.handle.net/2160/521 |
Idioma(s) |
eng |
Relação |
Pattern Recognition and Image Analysis |
Tipo |
/dk/atira/pure/researchoutput/researchoutputtypes/contributiontojournal/article Article (Journal) |
Direitos |