Combinative multi-scale level set framework for echocardiographic image segmentation

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Abstract

In the automatic segmentation of echocardiographic images, a priori shape knowledge has been used to compensate for poor features in ultrasound images. This shape knowledge is often learned via an off-line training process, which requires tedious human effort and is highly expertise-dependent. More importantly, a learned shape template can only be used to segment a specific class of images with similar boundary shape. In this paper, we present a multi-scale level set framework for segmentation of endocardial boundaries at each frame in a multiftame echocardiographic image sequence. We point out that the intensity distribution of an ultrasound image at a very coarse scale can be approximately modeled by Gaussian. Then we combine region homogeneity and edge features in a level set approach to extract boundaries automatically at this coarse scale. At finer scale levels, these coarse boundaries are used to both initialize boundary detection and serve as an external constraint to guide contour evolution. This constraint functions similar to a traditional shape prior. Experimental results validate this combinative framework. © 2003 Elsevier B.V. All rights reserved.

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Lin, N., Yu, W., & Duncan, J. S. (2003). Combinative multi-scale level set framework for echocardiographic image segmentation. Medical Image Analysis, 7(4), 529–537. https://doi.org/10.1016/S1361-8415(03)00035-5

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