Harmonic Mean Density Fusion in Distributed Tracking: Performance and Comparison
Abstract
A distributed sensor fusion architecture is preferred in a real
target-tracking scenario as compared to a centralized scheme since it provides
many practical advantages in terms of computation load, communication
bandwidth, fault-tolerance, and scalability. In multi-sensor target-tracking
literature, such systems are better known by the pseudonym - track fusion,
since processed tracks are fused instead of raw measurements. A fundamental
problem, however, in such systems is the presence of unknown correlations
between the tracks, which renders a standard Kalman filter (naive fusion)
useless.
A widely accepted solution is covariance intersection (CI) which provides
near-optimal estimates but at the cost of a conservative covariance. Thus, the
estimates are pessimistic, which might result in a delayed error convergence.
Also, fusion of Gaussian mixture densities is an active area of research where
standard methods of track fusion cannot be used. In this article, harmonic mean
density (HMD) based fusion is discussed, which seems to handle both of these
issues. We present insights on HMD fusion and prove that the method is a result
of minimizing average Pearson divergence. This article also provides an
alternative and easy implementation based on an importance-sampling-like method
without the requirement of a proposal density. Similarity of HMD with inverse
covariance intersection is an interesting find, and has been discussed in
detail.
Results based on a real-world multi-target multi-sensor scenario show that
the proposed approach converges quickly than existing track fusion algorithms
while also being consistent, as evident from the normalized estimation-error
squared (NEES) plots.