Title :
Performance evaluation of track fusion with information matrix filter
Author :
Chang, K.C. ; Zhi, Tian ; Saha, R.K.
Author_Institution :
Dept. of Syst. Eng. & Oper. Res., George Mason Univ., Fairfax, VA, USA
fDate :
4/1/2002 12:00:00 AM
Abstract :
In a multisensor environment, each sensor detects multiple targets and creates corresponding tracks. Fusion of tracks from these, possibly dissimilar, sensors yields more accurate kinematic and attribute information regarding the target. Two methodologies have been employed for such purpose, which are: measurement fusion and state vector fusion. It is well known that the measurement fusion approach is optimal but computationally inefficient and the state vector fusion algorithms are more efficient but suboptimal, in general. This is so because the state vector estimates to be fused obtained from two sensors, are not conditionally independent in general due to the common process noise from the target being tracked. It is to be noted that there are three approaches to state vector fusion, which are: weighted covariance, information matrix, and pseudomeasurement. This research is restricted solely to performance evaluation of the information matrix form of state vector fusion. Closed-form analytical solution of steady state fused covariance has been derived as a measure of performance using this approach. Note that the results are derived under the assumptions that the two sensors are synchronized and no misassociation or merged measurement is considered in the study. Results are compared with those using Monte Carlo simulation, which was used in the past to predict fusion system performance by various authors. These results provide additional insight into the mechanism of track fusion and greatly simplify evaluation of fusion performance. In addition, availability of such a solution facilitates the trade-off studies for designing fusion systems under various operating conditions
Keywords :
Gaussian noise; covariance matrices; distributed tracking; mean square error methods; sensor fusion; state feedback; target tracking; tracking filters; white noise; MSE matrix; attribute information; closed-form analytical solution; complete feedback; discrete linear time invariant dynamical system; information matrix filter; kinematic information; multiple targets; multisensor environment; partial feedback; performance evaluation; state vector fusion; steady state fused covariance; track fusion; zero-mean white Gaussian noise vector; Availability; Covariance matrix; Kinematics; Performance analysis; Sensor fusion; Sensor phenomena and characterization; State estimation; Steady-state; System performance; Target tracking;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on
DOI :
10.1109/TAES.2002.1008979