SWS Academic Research eLibraryEarth & Planetary Sciences

Scholarly record

INTELLIGENT DATA FUSION MODEL IN GINISSENSE ARCHITECTURE

Sanja Bogdanović-Dinić

First published: 2011-06-20https://doi.org/10.5593/sgem2011/s11.104View metrics

Abstract

Data fusion has been important field of expl oration, brought to light under the influence of new technologies and the emerging need for information integration and knowledge extraction from heter ogeneous data sources. The main focus of this paper will be set particularly on sensor data fusion. Our cu rrent focus is on designing and developing an intelligent data fusion component for a Sens or Web based architecture that will enable combining different environmental data into coherent information. For addressing the problem efficiently we will give an overview of present data fusion models and then incorporate the most appropriate model into existing Sensor Web based architecture - GinisSense for monitoring environment and co llecting environmental data. In this way we will have an intelligent data fusion system. Furthermore we will explain in detail the fusion process in GinisSense architecture and give an example of its usage.

Publication Impact Profile

PlumX
  • Captures
  • Mendeley - Readers: 5

Publication details

Title
INTELLIGENT DATA FUSION MODEL IN GINISSENSE ARCHITECTURE
Authors
Sanja Bogdanović-Dinić
Proceedings
SGEM International Multidisciplinary Scientific GeoConference EXPO Proceedings; SGEM2011 11th International Multidisciplinary Scientific GeoConference
Publisher
Stef92 Technology
Year
2011
Pages
Not available yet
ISSN
1314-2704
ISBN
Not available yet
Language
en
Publication type
Conference Paper
Keywords
References10
  1. Veljkovic, N. & Bogdanovic, M. & Bogdanovic-Dinic, S. & Stoimenov, L. GinisSense – Visualizing Sens or Data, 10th International Multidisciplinary Scientific Geo-Conference, Albena, Bulgaria, 2010

  2. Veljkovic N., Bogdanovic-Dinic S., Stoi menov L., GinisSense - Applying OGC Sensor Web Enablement, Proceedings of 13th AGILE Conference on GIScience, Guimaraies, Portugal, 2010

  3. Nakamura, E. & Loureiro, A. & Frery, A. Information fusion for wireless sensor networks: methods, models, and classifications. ACM Computing Surveys vol. 39/issue 3, Article 9, 2007.

  4. Hall, D. & Linas, J. An introduction to multisensor data fu sion, Invited paper, Proceedings of the IEEE, vol. 85/issue 1, 1997.

  5. Wald, L. Some terms of reference in da ta fusion, IEEE Transactions on Geoscienses and Remote Sensing, vol. 37, n. 3, pp. 1190-1193, 1999.

  6. Esteban, J. & Starr, A. & Willetts, R. & Hannah, P. & Bryanston-Cross, P. A review of data fusion models and architectures: towards engineering guidelines, Neural Computing and Applications, 2005

  7. Lucien, W. Some terms of reference in data fusion, IEEE Transactions on Geoscienses and Remote Sensing, 37,3,1190-1193, 1999

  8. Shahbazian, E. & Blodgett, D. E. & Labbé, P. The extended OODA model for data fusion systems, Proceedings of the 4th International Conference on Information Fusion, Montreal, Canada, August 2001

  9. Bedworth, M. & O’Brien, J. The Omnibus model: A new model of data fusion?, IEEE Aerospace and Electronics Systems Magazine 15, pp. 30–36, 2000.

  10. Simonis, I. OGC Sensor Web Enablement Architecture, OGC Best Practise Document, Reference Number 06-021r4, Version 0.4.0, 2008.

View or Download full articleAccess options
Full paper accessChoose SWS login, librarian support, or instant article download.

SWS access login

Login as SWS Scientific Committee

Authors and approved SWS contributors will read and export their own linked papers after identity matching by SWS profile, email and SGEM GlobalID.

For librarian assistance: [email protected]

Purchase Instant Access

48-hour online accessComing soon
Online-only accessComing soon
Download the full article in PDF formatEUR 35
  • Article can be downloaded after successful payment.
  • Article may be used according to SWS library access terms.
  • Article cannot be redistributed.
Get full paper

Back to publication list