Title :
Learning Sensor Network Topology through Monte Carlo Expectation Maximization
Author :
Marinakis, Dimitri ; Dudek, Gregory ; Fleet, David J.
Author_Institution :
Centre for Intelligent Machines, McGill University 3480 University St, Montreal, Quebec, Canada H3A 2A7, dmarinak@cim.mcgill.ca
Abstract :
We consider the problem of inferring sensor positions and a topological (i.e. qualitative) map of an environment given a set of cameras with non-overlapping fields of view. In this way, without prior knowledge of the environment nor the exact position of sensors within the environment, one can infer the topology of the environment, and common traffic patterns within it. In particular, we consider sensors stationed at the junctions of the hallways of a large building. We infer the sensor connectivity graph and the travel times between sensors (and hence the hallway topology) from the sequence of events caused by unlabeled agents (i.e. people) passing within view of the different sensors. We do this based on a first-order semi-Markov model of the agent´s behavior. The paper describes a problem formulation and proposes a stochastic algorithm for its solution. The result of the algorithm is a probabilistic model of the sensor network connectivity graph and the underlying traffic patterns. We conclude with results from numerical simulations
Keywords :
Expectation Maximization; Markov Chain Monte Carlo; learning; sensor networks; Computer science; Educational institutions; Intelligent sensors; Layout; Monte Carlo methods; Network topology; Numerical simulation; Signal detection; Smart cameras; Stochastic processes; Expectation Maximization; Markov Chain Monte Carlo; learning; sensor networks;
Conference_Titel :
Robotics and Automation, 2005. ICRA 2005. Proceedings of the 2005 IEEE International Conference on
Print_ISBN :
0-7803-8914-X
DOI :
10.1109/ROBOT.2005.1570826