Detection of compound structures using hierarchical clustering of statistical and structural features

SIU(2011)

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摘要
We describe a new procedure that combines statistical and structural characteristics of simple primitive objects to discover compound structures in images. The statistical information that is modeled using spectral, shape, and position data of individual objects, and structural information that is modeled in terms of spatial alignments of neighboring object groups are encoded in a graph structure that contains the primitive objects at its vertices, and the edges connect the potentially related objects. Experiments using WorldView-2 data show that hierarchical clustering of these vertices can find high level compound structures that cannot be obtained using traditional techniques.
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关键词
feature extraction,graph theory,object detection,pattern clustering,statistics,WorldView-2 data,compound structure detection,graph structure,hierarchical clustering,image structure,statistical feature,structural feature,Object detection,alignment detection,graph-based representation,hierarchical clustering
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