Segmenting the Left Ventricle in 3D Using a Coupled ASM and a Learned Non-Rigid Spatial Model
O'Brien S., Ghita O., Whelan P.F.
Dublin City University
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Please use this identifier to cite or link to this publication: http://hdl.handle.net/10380/3110
This paper presents a new approach to higher dimensional segmentation. We present an extended Active Shape Model (ASM) formulation for the segmentation of multi-contour anatomical structures. We employ coupling and weighting schemes to improve the robustness of ASM segmentation. 3D segmentation is achieved through propagation of a 2D ASM using a learned non-rigid spatial model. This approach does not suffer from the training and aligning difficulties faced by direct 3D model-based methods. Experimental results are encouraging at this early stage, and future directions of research are provided.

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Information
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Paper Id: 686
Categories: Feature extraction, Statistical shape models
Keywords: segmentation, coupled ASM, adaptive weighting, active shape model, left ventricle, non-rigid model,
Revision: 1 (07-29-2009)
Status: Open for public review
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