研究目的
To propose a novel efficient algorithm for computing the exact Hausdorff distance that has nearly-linear complexity and performs efficiently for large point set sizes as well as for large grid sizes.
研究成果
The proposed algorithm for computing the exact Hausdorff distance combines early breaking and randomization optimizations to achieve a significant increase in speed over other algorithms. It has a nearly-linear runtime in the average case and does not impose any restrictions on the input data, making it generalizable to all applications.
研究不足
The algorithm's performance may decrease when the Hausdorff distance is very small, indicating high match between the point sets.
1:Experimental Design and Method Selection:
The proposed algorithm combines early breaking and randomization optimizations to achieve a significant increase in speed over other algorithms.
2:Sample Selection and Data Sources:
The algorithm was tested with three different types of data, namely real brain tumor segmentations (MRI 3D volumes), trajectories generated from a road network, and random 3D Gaussians.
3:List of Experimental Equipment and Materials:
The experiments were performed on a machine with 3 GHz Intel core processor, 8 GB Memory, and Windows 7 OS.
4:Experimental Procedures and Operational Workflow:
The algorithm was tested against the ITK HD algorithm and an HD algorithm based on R-Trees.
5:Data Analysis Methods:
The performance of the proposed algorithm was compared in terms of speed and memory required.
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