• Title of article

    Decentralized Probabilistic World Modeling with Cooperative Sensing

  • Author/Authors

    Arjan Peddemors، نويسنده , , Eiko Yoneki، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2009
  • Pages
    8
  • From page
    1
  • To page
    8
  • Abstract
    Drawing on the projected increase in computing power, solid-state storage and network communication capacity to be available on personal mobile devices, we propose to build and maintain without prior knowledge a fully distributed decentralized large-scale model of the physical world around us using probabilistic methods. We envisage that, by using the multimodal sensing capabilities of modern personal devices, such a probabilistic world model can be constructed as a collaborative effort of a community of participants, where the model data is redundantly stored on individual devices and updated and refined through short-range wireless peer-to-peer communication. Every device holds model data describing its current surroundings, and obtains model data from others when moving into unknown territory. The model represents common spatio-temporal patterns as observed by multiple participants, so that rogue participants can not easily insert false data and only patterns of general applicability dominate. This paper aims to describe - at a conceptual level - an approach for building such a distributed world model. As one possible world modeling approach, it discusses compositional hierarchies, to fuse the data from multiple sensors available on mobile devices in a bottom-up way. Furthermore, it focuses on the intertwining between building a decentralized cooperative world model and the opportunistic communication between participants.
  • Keywords
    cooperative sensing , probabilistic modeling , opportunistic communication , compositional hierarchy , Mobility modeling , Social networks
  • Journal title
    Electronic Communications of the EASST
  • Serial Year
    2009
  • Journal title
    Electronic Communications of the EASST
  • Record number

    679366