Incorporation of Time Delayed Measurements in a Discrete-time Kalman Filter
In many practical systems there is a delay in some of the sensor devices,
for instance vision measurements that may have a long processing time. How
to fuse these measurements in a Kalman filter is not a trivial problem if
the computational delay is critical. Depending on how much time
there is at hand, the designer has to make trade offs between optimality
and computational burden of the filter. In this paper various methods
in the literature along with a new method proposed by the authors will
be presented and compared. The new method is based on "extrapolating"
the measurement to present time using past and present estimates of the
Kalman filter and calculating an optimal gain for this extrapolated
measurement.
KEYWORDS:
delayed measurements, Kalman filter