ALGORITHM FOR MULTISPECTRAL IMAGE SEGMENTATION BASED ON ENSEMBLE OF NONPARAMETRIC CLUSTERING ALGORITHMS


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Abstract

The method for constructing an ensemble of nonparametric clustering algorithms is proposed. Its theoretical substantiation is resulted. Results of the model data and real images confirm the efficiency of the proposed method.

References

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Copyright (c) 2010 Pestunov I.A., Berikov V.B., Sinyavskiy Y.N., Pestunov I.A., Berikov V.B., Sinyavskiy Y.N.

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