A Regularised Particle Filter for Context-Aware Sensor Fusion Applications
Enrique Martí, Jesús García, Jose M. Molina
Sensor Data Fusion: Trends, Solutions, Applications at INFORMATIK 2011 - Informatik schafft Communities
Berlin 2011
Berlin 2011
Abstract: Particle Filters are the most suitable filtering techique for some problems
where the prediciton and update models are extremely non-linear. However, they
suffer some problems as sample depletion which can drastically reduce their
performance. There are multiple solutions to this problem. Some of them make
assumptions that invalidate the filter for the most difficult scenarios. Some
others increase the computational cost far beyond the bounds of real time
applications. Context is a very important source of information for those
systems that must work flawlessly in changing scenarios, but it introduces
strong nonlinearities and uncertainties that filtering algorithms must deal
with.
This paper analyzes the performance and robustness of a recently
developed regularisation technique for particle filters. The proposed scenarios
include a navigation problem where a map is used to provide contextual
information, because the final target for the particle filter is a mobile robot
able to navigate both indoors and outdoors.