• Title of article

    Particle identification with neural networks using a rotational invariant moment representation

  • Author/Authors

    Sinkus، نويسنده , , R and Voss، نويسنده , , T، نويسنده ,

  • Pages
    3
  • From page
    160
  • To page
    162
  • Abstract
    A feed-forward neural network is used to identify electromagnetic particles based upon their showering properties within a segmented calorimeter. The novel feature is the expansion of the energy distribution in terms of moments of the so-called Zernike functions which are invariant under rotation. The multidimensional input distribution for the neural network is transformed via a principle component analysis and rescaled by its respective variances to ensure input values of the order of one. This results is a better performance in identifying and separating electromagnetic from hadronic particles, especially at low energies.
  • Journal title
    Astroparticle Physics
  • Record number

    2001229