3D Seismic Facies Detection with Elucidative Fusion Capabilities Based on the Information Theory

نویسندگان

  • L. Valet
  • G. Mauris
چکیده

Abstract – The design of an information fusion system is a complex task. This study tries to help in the choice of the relevant input data and in the system adjustment. Such a study relates to a notion referred to in the literature as “Elucidative Fusion System” (EFS). The proposed method is based on information theory tools which provide a means to measure the impact of each input attribute on the fusion system output. The fusion system adjustment can thus be controlled according to these impact measures.

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تاریخ انتشار 2001