Title :
Nonlinear Generalized Likelihood Ratio Algorithms for Maneuver Detection and Estimation
Author :
Dawdle, John R. ; Willsky, Alan S. ; Gully, Sal W.
Author_Institution :
ALPHATECH, Inc., 3 New England Executive Park, Burlington, Massachusetts 01803
Abstract :
The design and application of a nonlinear Generalized Likelihood Ratio (GLR) algorithm for target maneuver detection and estimation for short-range air-to-air missile scenarios is addressed. The problem, which is inherently nonlinear, is first reformulated into a linear problem by preprocessing the measurements. The maneuver detection algorithm then consists of a Kalman filter that is tuned to track the target under nonmaneuvering conditions and a GLR which monitors the innovations process of the filter to determine if a maneuver has occurred. Maneuver estimation is accomplished via maximum likelihood techniques and, once a maneuver is estimated, the states of the Kalman filter and their error covariances are suitably adjusted.
Keywords :
Acceleration; Active appearance model; Filters; Force measurement; Infrared sensors; Maximum likelihood detection; Maximum likelihood estimation; Missiles; State estimation; Target tracking;
Conference_Titel :
American Control Conference, 1982
Conference_Location :
Arlington, VA, USA