Salzburg Interest Group on Integrated Systems Evolutionary Training Data Sets with N{dimensional Encoding for Neural Insar Classiiers Salzburg Interest Group on Integrated Systems Evolutionary Training Data Sets with N{dimensional Encoding for Neural Insar Classiiers

نویسندگان

  • Helmut A. Mayer
  • Reinhold Huber
چکیده

siGis-014-1998 June 30, 1998 Evolutionary Training Data Sets with n{dimensional Encoding for Neural InSAR Classi ers Special Session on Evolutionary Computation in Imaging Science 1998 International Conference on Imaging Science, Systems, and Technology July 6{9, 1998, Las Vegas, Nevada, USA Helmut A. Mayer Reinhold Huber [email protected] [email protected] Department of Computer Science University of Salzburg, Austria Aero{Sensing Radarsysteme GmbH c/o DLR Oberpfa enhofen, Germany

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تاریخ انتشار 2007