Robust Probabilistic Filtering in Distributed Systems - Robotics Institute Carnegie Mellon University

Robust Probabilistic Filtering in Distributed Systems

Stanislav Funiak, Carlos Ernesto Guestrin, Mark Paskin, and Rahul Sukthankar
Tech. Report, CMU-CALD-05-111, Machine Learning Department, Carnegie Mellon University, 2005

Abstract

We present a robust distributed algorithm for approximate probabilistic inference in dynamical systems, such as sensor networks and teams of mobile robots. Using assumed density filtering, the network nodes maintain a tractable representation of the belief state in a distributed fashion. At each time step, the nodes coordinate to condition this distribution on the observations made throughout the network, and to advance this estimate to the next time step. In addition, we identify a significant challenge for probabilistic inference in dynamical systems: message losses or network partitions can cause nodes to have inconsistent beliefs about the current state of the system. We address this problem by developing distributed algorithms that guarantee that nodes will reach an informative consistent distribution when communication is re-established. We present a suite of experimental results on real-world sensor data for two real sensor network deployments: one with 25 cameras and another with 54 temperature sensors.

BibTeX

@techreport{Funiak-2005-16958,
author = {Stanislav Funiak and Carlos Ernesto Guestrin and Mark Paskin and Rahul Sukthankar},
title = {Robust Probabilistic Filtering in Distributed Systems},
year = {2005},
month = {January},
institute = {Carnegie Mellon University},
address = {Pittsburgh, PA},
number = {CMU-CALD-05-111},
keywords = {Graphical Models, Sensor Networks},
}