Article ID Journal Published Year Pages File Type
526110 Computer Vision and Image Understanding 2011 9 Pages PDF
Abstract

This paper presents Markov surfaces, a probabilistic algorithm for user-assisted segmentation of elongated structures in 3D images. The 3D segmentation problem is formulated as a path-finding problem, where path probabilities are described by Markov chains. Users define points, curves, or regions on 2D image slices, and the algorithm connects these user-defined features in a way that respects the underlying elongated structure in data. Transition probabilities in the Markov model are derived from intensity matches and interslice correspondences, which are generated from a slice-to-slice registration algorithm. Bézier interpolations between paths are applied to generate smooth surfaces. Subgrid accuracy is achieved by linear interpolations of image intensities and the interslice correspondences. Experimental results on synthetic and real data demonstrate that Markov surfaces can segment regions that are defined by texture, nearby context, and motion. A parallel implementation on a streaming parallel computer architecture, a graphics processor, makes the method interactive for 3D data.

► A probabilistic framework for user-assisted semi-automatic segmentation of elongated structures in 3D images. ► Utilize both image intensities and registration results between slices. ► Bezier curve interpolation for path regularization. ► GPU utilization for efficiency both in image registration and path backtracking.

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