Institut for Forretningsudvikling og Teknologi

Indoor Localization for Optimized Ambient Assisted Living Services

Publikation: Forskning - peer reviewKonferenceabstrakt til konference

  • Miroslav Mitev
    Miroslav MitevSchool of Engineering, University of Essex, ColchesterStorbritannien
  • Albena Dimitrova Mihovska
  • Vladimir Poulkov
    Vladimir PoulkovFaculty of Telecommunications, Technical University of SofiaBulgarien
  • Milica Pejanovic-Djurisic
    Milica Pejanovic-DjurisicUniversity of MontenegroMontenegro
Indoor localization is very critical for the provision of Ambient Assisted Living (AAL) services, such as e-Health, smart home, etc. The success of deploying a real-time localization system depends on selecting the right performance characteristics. Bluetooth Low Energy (BLE) is a technology, which has the properties to be used for such an application. The usage of BLE can ensure long life of usage, low initial and maintenance cost and due to the current widespread use of the technology, the algorithms can be easily commercialized. This paper proposes an optimized fall detection algorithm that is based on the use of 2D trilateration for enhanced accuracy of the fall position. The indoor localization method with BLE, uses pre-defined Mean Absolute Error (MAE) and Kalman filtering of the received signal strength. Further, we show a practical case of using the received signal strength indicator (RSSI) as an only input for a fall detection system and to evaluate the algorithm in terms of accuracy.
OriginalsprogEngelsk
Udgivelsesår26 apr. 2017
StatusUdgivet - 26 apr. 2017
Begivenhed - Chicago, USA

Konference

KonferenceWireless Telecommunications Symposium
LokationHoliday Inn
LandUSA
ByChicago
Periode26/04/201728/04/2017

Se relationer på Aarhus Universitet Citationsformater

ID: 112927346