• DocumentCode
    108187
  • Title

    On the Mahalanobis Distance Classification Criterion for Multidimensional Normal Distributions

  • Author

    Gallego, Guillermo ; Cuevas, C. ; Mohedano, Raul ; Garcia, Narciso

  • Author_Institution
    Grupo de Tratamiento de Imagenes (GTI), Univ. Politec. de Madrid (UPM), Madrid, Spain
  • Volume
    61
  • Issue
    17
  • fYear
    2013
  • fDate
    Sept.1, 2013
  • Firstpage
    4387
  • Lastpage
    4396
  • Abstract
    Many existing engineering works model the statistical characteristics of the entities under study as normal distributions. These models are eventually used for decision making, requiring in practice the definition of the classification region corresponding to the desired confidence level. Surprisingly enough, however, a great amount of computer vision works using multidimensional normal models leave unspecified or fail to establish correct confidence regions due to misconceptions on the features of Gaussian functions or to wrong analogies with the unidimensional case. The resulting regions incur in deviations that can be unacceptable in high-dimensional models. Here we provide a comprehensive derivation of the optimal confidence regions for multivariate normal distributions of arbitrary dimensionality. To this end, firstly we derive the condition for region optimality of general continuous multidimensional distributions, and then we apply it to the widespread case of the normal probability density function. The obtained results are used to analyze the confidence error incurred by previous works related to vision research, showing that deviations caused by wrong regions may turn into unacceptable as dimensionality increases. To support the theoretical analysis, a quantitative example in the context of moving object detection by means of background modeling is given.
  • Keywords
    Gaussian processes; computer vision; decision making; image classification; object detection; probability; Gaussian functions; Mahalanobis distance classification criterion; arbitrary dimensionality multivariate normal distributions; background modeling; computer vision; confidence level; confidence regions; decision making; general continuous multidimensional distributions; high-dimensional models; moving object detection; multidimensional normal distributions; multidimensional normal models; normal probability density function; optimal confidence regions; statistical characteristics; Chi-squared distribution; Gaussian distribution; Mahalanobis distance; classification algorithms; multidimensional signal processing; uncertainty;
  • fLanguage
    English
  • Journal_Title
    Signal Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1053-587X
  • Type

    jour

  • DOI
    10.1109/TSP.2013.2269047
  • Filename
    6541961