Abstract:
This paper presents an information processing
framework for Distributed Sensor Networks (DSNs). The framework
is capable of directly processing temporally and spatially
distributed multi-modality sensor data to extract information
buried in the noise clutter. Moreover, we introduce distributed
algorithms to implement Spatio-Temporal filtering applications
in grid sensor networks within the context of the framework. The
proposed framework is based on the belief notions in Dempster-
Shafer (DS) evidence theory and Evidence Filtering method.
Further analysis is done by exploiting a fire propagation scenario
when high noise is present in the sensed data. We compare
intuitively appealing results against Dempster-Shafer fusion
method to grant further credence to the proposed framework.
Citation:
Weeraddana, D. M., Kulasekere, C., & Walgama, K. S. (2015). Dempster–Shafer Information Filtering Framework: Temporal and Spatio-Temporal Evidence Filtering. IEEE Sensors Journal, 15(10), 5576–5583. https://doi.org/10.1109/JSEN.2015.2442153