Cleaning trajectory data of RFID-monitored objects through conditioning under integrity constraints.
Conference Paper
Publication Date:
2014
abstract:
A probabilistic framework is introduced for reducing the inherent
uncertainty of trajectory data collected for RFID-monitored objects.
The framework represents the position of an object at each
instant as a random variable over the set of possible locations. The
probability density function of this random variable is initialized
according to an a-priori probability distribution, and then revised
by conditioning it w.r.t. the event that integrity constraints are satisfied.
In particular, integrity constraints implied by the structure
of the map of locations and the motility characteristics (such as the
maximum speed) of the monitored objects are exploited (namely,
direct unreachability, latency and minimum traveling time constraints).
The efficiency and effectiveness of the proposed approach are assessed
experimentally on synthetic data.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
RFID
List of contributors: