articleIEEE Transactions on Signal ProcessingJan 1, 2002GREEN OA

Particle filters for positioning, navigation, and tracking

Linköping University · Ericsson (Sweden) · +2 more institutions

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Abstract

A framework for positioning, navigation, and tracking problems using particle filters (sequential Monte Carlo methods) is developed. It consists of a class of motion models and a general nonlinear measurement equation in position. A general algorithm is presented, which is parsimonious with the particle dimension. It is based on marginalization, enabling a Kalman filter to estimate all position derivatives, and the particle filter becomes low dimensional. This is of utmost importance for high-performance real-time applications. Automotive and airborne applications illustrate numerically the advantage over classical Kalman filter-based algorithms. Here, the use of nonlinear models and non-Gaussian noise is the…

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1,689
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30.70
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100%
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Authors

7

Topics & keywords

Keywords
  • Particle filter
  • Computer science
  • Kalman filter
  • Extended Kalman filter
  • Global Positioning System
  • Computer vision
  • Monte Carlo localization
  • Tracking (education)
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