Detection of Indoor Actions Through Probabilistic Induction Model

  • Umberto Maniscalco
  • Giovanni Pilato
  • Filippo Vella
Conference paper
Part of the Smart Innovation, Systems and Technologies book series (SIST, volume 76)

Abstract

In the present work a system able to classify the indoor action is presented. The data are recorded with multiple kind of sensor collecting the position of the joints of the person in the room, the acceleration recorded on the person wrist and the presence or absence in a specific room. The latent semantic analysis, based on the principal component search, allows to estimate the probability of a given action according the sampled values.

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Copyright information

© Springer International Publishing AG 2018

Authors and Affiliations

  • Umberto Maniscalco
    • 1
  • Giovanni Pilato
    • 1
  • Filippo Vella
    • 1
  1. 1.ICAR, National Research Council of ItalyPalermoItaly

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