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Integrity and Collaboration in Dynamic Sensor Networks.

Steffen SchönClaus BrennerHamza AlkhatibMax CoenenHani DboukNicolas Garcia-FernandezColin FischerChristian HeipkeKatja LohmannIngo NeumannUyen NguyenJens-André PaffenholzTorben PetersFranz RottensteinerJulia SchachtschneiderMonika SesterLigang SunSören VogelRaphael VogesBernardo Wagner
Published in: Sensors (Basel, Switzerland) (2018)
Global Navigation Satellite Systems (GNSS) deliver absolute position and velocity, as well as time information (P, V, T). However, in urban areas, the GNSS navigation performance is restricted due to signal obstructions and multipath. This is especially true for applications dealing with highly automatic or even autonomous driving. Subsequently, multi-sensor platforms including laser scanners and cameras, as well as map data are used to enhance the navigation performance, namely in accuracy, integrity, continuity and availability. Although well-established procedures for integrity monitoring exist for aircraft navigation, for sensors and fusion algorithms used in automotive navigation, these concepts are still lacking. The research training group i.c.sens, integrity and collaboration in dynamic sensor networks, aims to fill this gap and to contribute to relevant topics. This includes the definition of alternative integrity concepts for space and time based on set theory and interval mathematics, establishing new types of maps that report on the trustworthiness of the represented information, as well as taking advantage of collaboration by improved filters incorporating person and object tracking. In this paper, we describe our approach and summarize the preliminary results.
Keyphrases
  • machine learning
  • deep learning
  • big data
  • healthcare
  • health information
  • artificial intelligence
  • high speed