Using Spatial Characteristics To Aid Automation Of Som Segmentation Of Functional Image Data

2017 12TH INTERNATIONAL WORKSHOP ON SELF-ORGANIZING MAPS AND LEARNING VECTOR QUANTIZATION, CLUSTERING AND DATA VISUALIZATION (WSOM)(2017)

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摘要
We propose a new similarity measure, Combined Connectivity and Spatial Adjacency (CCSA), to be used in hierarchical agglomerative clustering (HAC) for automated segmentation of Self-Organizing Maps (SOMs, Kohonen [1]). The CCSA measure is specifically designed to assist segmentation of large, complex, functional image data by exploiting general spatial characteristics of such data. The proposed CCSA measure is constructed from two strong indicators of cluster structure: the degree of localization of data points in physical space and the degree of connectivity of SOM prototypes (as defined by Tasdemir and Merenyi [2]). The new measure is expected to enhance cluster capture in large functional image data cubes such as hyperspectral imagery or fMRI brain images, where many relevant clusters exist with widely varying statistical properties and in complex relationships both in feature space and in physical (image) space. We demonstrate the effectiveness of our approach using the CCSA measure on progressively complex synthetic spatial data and on real fMRI brain data.
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关键词
SOM segmentation,spatial characteristics,similarity measure,combined connectivity and spatial adjacency,hierarchical agglomerative clustering,automated self-organizing map segmentation,large complex functional image data,CCSA measure,cluster structure,physical space,data point localization,degree of connectivity,SOM prototypes,cluster capture,large functional image data cubes,hyperspectral imagery,fMRI brain images,varying statistical properties,feature space,complex synthetic spatial data,fMRI brain data,HAC
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