Physical field models for pattern classification

  title={Physical field models for pattern classification},
  author={Dymitr Ruta and Bogdan Gabrys},
  journal={Soft Comput.},
Recent findings in pattern recognition show that dramatic improvement of the recognition rate can be obtained by application of fusion systems utilizing many different and diverse classifiers for the same task. Apart from a good individual performance of individual classifiers the most important factor is the useful diversity they exhibit. In this work we present an example of a novel non-parametric classifier design, which shows a substantial level of diversity with respect to other commonly… CONTINUE READING

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