Title :
Tracking in clutter with nearest neighbor filters: analysis and performance
Author :
Li, X. Rong ; Bar-Shalom, Yaakov
Author_Institution :
Dept. of Electr. Eng., New Orleans Univ., LA, USA
fDate :
7/1/1996 12:00:00 AM
Abstract :
The measurement that is "closest" to the predicted target measurement is known as the "nearest neighbor" (NN) measurement in tracking. A common method currently in wide use for tracking in clutter is the so-called NN filter, which uses only the NN measurement as if it were the true one. The purpose of this work is two fold. First, the following theoretical results are derived: the a priori probabilities of all three data association events (updates with correct measurement, with incorrect measurement, and no update), the probability density functions (pdfs) of the NN measurement conditioned on the association events, and the one-step-ahead prediction of the matrix mean square error (MSE) conditioned on the association events. Secondly, a technique for prediction without recourse to expensive Monte Carlo simulations of the performance of tracking in clutter with the NN filter is presented. It can quantify the dynamic process of tracking divergence as well as the steady-state performance. The technique is a new development along the line of the recently developed general approach to the performance prediction of algorithm with both continuous and discrete uncertainties.
Keywords :
clutter; error statistics; filtering theory; performance evaluation; prediction theory; probability; tracking; uncertain systems; uncertainty handling; NN filter; a priori probabilities; analysis; association events; continuous uncertainties; correct measurement; data association events; discrete uncertainties; incorrect measurement; matrix mean square error; nearest neighbor; nearest neighbor filters; one-step-ahead prediction; performance; performance prediction; predicted target measurement; probability density functions; steady-state performance; tracking divergence; Current measurement; Density measurement; Filters; Mean square error methods; Nearest neighbor searches; Neural networks; Performance analysis; Probability density function; Steady-state; Target tracking;
Journal_Title :
Aerospace and Electronic Systems, IEEE Transactions on