Efficient 3-D Medical Image Registration Using a Distributed Blackboard Architecture

A major drawback of 3-D medical image registration techniques is the performance bottleneck associated with re-sampling and similarity computation. Such bottlenecks limit registration applications in clinical situations where fast execution times are required and become particularly apparent in the...

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Veröffentlicht in:2006 International Conference of the IEEE Engineering in Medicine and Biology Society 2006, Vol.2006, p.3045-3048
Hauptverfasser: Tait, R.J., Schaefer, G., Hopgood, A.A., Zhu, S.Y.
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Sprache:eng
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Zusammenfassung:A major drawback of 3-D medical image registration techniques is the performance bottleneck associated with re-sampling and similarity computation. Such bottlenecks limit registration applications in clinical situations where fast execution times are required and become particularly apparent in the case of registering 3-D data sets. In this paper a novel framework for high performance intensity-based volume registration is presented. Geometric alignment of both reference and sensed volume sets is achieved through a combination of scaling, translation, and rotation. Crucially, resampling and similarity computation is performed intelligently by a set of knowledge sources. The knowledge sources work in parallel and communicate with each other by means of a distributed blackboard architecture. Partitioning of the blackboard is used to balance communication and processing workloads. Large-scale registrations with substantial speedups, when compared with a conventional implementation, have been demonstrated
ISSN:1557-170X
DOI:10.1109/IEMBS.2006.260146