• Title of article

    A novel feature extraction algorithm for asymmetric classification

  • Author/Authors

    D.، Lindgren, نويسنده , , P.، Spangeus, نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2004
  • Pages
    -642
  • From page
    643
  • To page
    0
  • Abstract
    A linear feature extraction technique for asymmetric distributions is introduced, the asymmetric class projection (ACP). By asymmetric classification is understood discrimination among distributions with different covariance matrices. Two distributions with unequal covariance matrices do not, in general, have a symmetry plane, a fact that makes the analysis more difficult compared to the symmetric case. The ACP is similar to linear discriminant analysis (LDA) in the respect that both aim at extracting discriminating features (linear combinations or projections) from many variables. However, the drawback of the well-known LDA is the assumption of symmetric classes with separated centroids. The ACP, in contrast, works on (two) possibly concentric distributions with unequal covariance matrices. The ACP is tested on data from an array of semiconductor gas sensors with the purpose of distinguish bad grain from good.
  • Keywords
    DMTA , Ethylene-Propylene Copolymer , DSC , TGA , Microstructure , XRD , liquid crystalline polymer
  • Journal title
    IEEE Sensors Journal
  • Serial Year
    2004
  • Journal title
    IEEE Sensors Journal
  • Record number

    114868