On Pooling-Based Track Fusion Strategies : Harmonic Mean Density
Abstract
In a distributed sensor fusion architecture, using standard Kalman filter
(naive fusion) can lead to degraded results as track correlations are ignored
and conservative fusion strategies are employed as a sub-optimal alternative to
the problem. Since, Gaussian mixtures provide a flexible means of modeling any
density, therefore fusion strategies suitable for use with Gaussian mixtures
are needed. While the generalized covariance intersection (CI) provides a means
to fuse Gaussian mixtures, the procedure is cumbersome and requires evaluating
a non-integer power of the mixture density. In this paper, we develop a
pooling-based fusion strategy using the harmonic mean density (HMD)
interpolation of local densities and show that the proposed method can handle
both Gaussian and mixture densities without much changes to the framework.
Mathematical properties of the proposed fusion strategy are studied and
simulated on 2D and 3D maneuvering target tracking scenarios. The simulations
suggest that the proposed HMD fusion performs better than other conservative
strategies in terms of root-mean-squared error while being consistent.