Roger TaitGerald SchaeferAdrian A. HopgoodShao Ying Zhu
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
Roger TaitGerald SchaeferAdrian A. HopgoodShao Ying Zhu
Roger TaitGerald SchaeferAdrian A. HopgoodTomoharu Nakashima
Roger TaitGerald SchaeferAdrian A. Hopgood
Roger TaitAdrian A. HopgoodGerald Schaefer
Aldi Fahluzi MuharamAfandi Ahmad