Application of Bayesian Statistical Analysis to Multisource Data Integration

  • Hong, Sa-Hyun (ESI3 Laboratory, School of Earth and Environmental Sciences, Seoul National University) ;
  • Moon, Wooil-M. (ESI3 Laboratory, School of Earth and Environmental Sciences, Seoul National University, Geophysics, The University of Manitoba)
  • 발행 : 2002.10.01

초록

In this paper, Multisource data classification methods based on Bayesian formula are considered. For this decision fusion scheme, the individual data sources are handled separately by statistical classification algorithms and then Bayesian fusion method is applied to integrate from the available data sources. This method includes the combination of each expert decisions where the weights of the individual experts represent the reliability of the sources. The reliability measure used in the statistical approach is common to all pixels in previous work. In this experiment, the weight factors have been assigned to have different value for all pixels in order to improve the integrated classification accuracies. Although most implementations of Bayesian classification approaches assume fixed a priori probabilities, we have used adaptive a priori probabilities by iteratively calculating the local a priori probabilities so as to maximize the posteriori probabilities. The effectiveness of the proposed method is at first demonstrated on simulations with artificial and evaluated in terms of real-world data sets. As a result, we have shown that Bayesian statistical fusion scheme performs well on multispectral data classification.

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