Publication | Closed Access
<i>k</i>-Means Algorithm in Statistical Shape Analysis
19
Citations
13
References
2010
Year
Geometric ModelingDocument ClusteringClustering (Nuclear Physics)Image AnalysisData ScienceData MiningPattern RecognitionEngineeringNatural SciencesStatistical Shape AnalysisShape AnalysisShape ModelingClustering (Data Mining)Computational GeometryK-means MethodFuzzy Clustering
In this work it is shown how the k-means method for clustering objects can be applied in the context of statistical shape analysis. Because the choice of the suitable distance measure is a key issue for shape analysis, the Hartigan and Wong k-means algorithm is adapted for this situation. Simulations on controlled artificial data sets demonstrate that distances on the pre-shape spaces are more appropriate than the Euclidean distance on the tangent space. Finally, results are presented of an application to a real problem of oceanography, which in fact motivated the current work.
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