Article ID Journal Published Year Pages File Type
527808 Computer Vision and Image Understanding 2013 13 Pages PDF
Abstract

Deformable models are widely used for image segmentation, most commonly to find single objects within an image. Although several methods have been proposed to segment multiple objects using deformable models, substantial limitations in their utility remain. This paper presents a multiple object segmentation method using a novel and efficient object representation for both two and three dimensions. The new framework guarantees object relationships and topology, prevents overlaps and gaps, enables boundary-specific speeds, and has a computationally efficient evolution scheme that is largely independent of the number of objects. Maintaining object relationships and straightforward use of object-specific and boundary-specific smoothing and advection forces enables the segmentation of objects with multiple compartments, a critical capability in the parcellation of organs in medical imaging. Comparing the new framework with previous approaches shows its superior performance and scalability.

► We describe a multi-object level set segmentation framework called MGDM. ► Our method efficiently represents an arbitrary number of objects. ► Gaps and overlaps between objects are prevented. ► Forces may be specified on object boundaries rather than on the objects themselves.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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