• DocumentCode
    10102
  • Title

    Novelty Detection Using Level Set Methods

  • Author

    Xuemei Ding ; Yuhua Li ; Belatreche, Ammar ; Maguire, Liam P.

  • Author_Institution
    Fac. of Software, Fujian Normal Univ., Fuzhou, China
  • Volume
    26
  • Issue
    3
  • fYear
    2015
  • fDate
    Mar-15
  • Firstpage
    576
  • Lastpage
    588
  • Abstract
    This paper presents a level set boundary description (LSBD) approach for novelty detection that treats the nonlinear boundary directly in the input space. The proposed approach consists of level set function (LSF) construction, boundary evolution, and termination of the training process. It employs kernel density estimation to construct the LSF of the initial boundary for the training data set. Then, a sign of the LSF-based algorithm is proposed to evolve the boundary and make it fit more tightly in the data distribution. The training process terminates when an expected fraction of rejected normal data is reached. The evolution process utilizes the signs of the LSF values at all training data points to decide whether to expand or shrink the boundary. Extensive experiments are conducted on benchmark data sets to evaluate the proposed LSBD method and compare it against four representative novelty detection methods. The experimental results demonstrate that the novelty detector modeled with the proposed LSBD can effectively detect anomalies.
  • Keywords
    data handling; learning (artificial intelligence); LSBD method; LSF construction; LSF values; LSF-based algorithm; boundary evolution; data distribution; evolution process; kernel density estimation; level set boundary description; level set function; level set methods; nonlinear boundary; novelty detector; representative novelty detection methods; training data set; Estimation; Feature extraction; Kernel; Level set; Support vector machines; Training; Training data; Level set methods (LSMs); novelty detection; one-class classification; surface evolution; surface evolution.;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2014.2320293
  • Filename
    6817597