DocumentCode
761137
Title
Adaptive early-detection ML-PDA estimator for LO targets with EO sensors
Author
Chummun, M.R. ; Bar-Shalom, Y. ; Kirubarajan, T.
Author_Institution
Dept. of Electr. & Comput. Eng., Connecticut Univ., Storrs, CT, USA
Volume
38
Issue
2
fYear
2002
fDate
4/1/2002 12:00:00 AM
Firstpage
694
Lastpage
707
Abstract
The batch maximum likelihood estimator, combined with the probabilistic data association algorithm (ML-PDA), has. been shown to be effective in acquiring low observable (LO)-low signal-to-noise ratio (SNR)-nonmaneuvering targets in the presence of heavy clutter. The use of signal strength or amplitude information (AI) in the ML-PDA estimator facilitates the acquisition of weak targets. We present an adaptive algorithm, which uses the ML-PDA estimator with AI in a sliding-window fashion, to detect possibly maneuvering targets in heavy clutter using electro-optical (EO) sensors. The initial time and the length of the sliding window are adjusted adaptively according to the information content of the received measurements. A track validation scheme via hypothesis testing is developed to confirm the estimated track, that is, the presence of a target, in each window. The sliding-window ML-PDA approach, together with track validation, enables early track detection by rejecting noninformative scans, target reacquisition in case of temporary target disappearance, and the handling of targets with velocities evolving over time. We demonstrate the operation of the adaptive sliding-window ML-PDA estimator on a real scenario for tracking a fast-moving F1 Mirage fighter jet using an imaging sensor. The proposed algorithm is shown to detect the target, which is hidden in as many as 600 false alarms per scan, 10 frames earlier than the multiple hypothesis tracking algorithm. This ability to successfully process large amounts of data, with near real-time performance, under time-varying low SNR conditions makes the proposed estimator superior to other existing approaches
Keywords
adaptive signal detection; clutter; least squares approximations; maximum likelihood detection; optical tracking; sensor fusion; target tracking; Monte Carlo integration; Raleigh model; adaptive algorithm; amplitude information; batch maximum likelihood estimator; electro-optical sensors; fast-moving fighter jet; heavy clutter; hypothesis testing; least squares criterion; long wave infrared data; low observable targets; low signal-to-noise ratio; near real-time performance; negative log-likelihood function; nonmaneuvering targets; probabilistic data association algorithm; sliding-window; track validation scheme; Adaptive algorithm; Amplitude estimation; Artificial intelligence; Electrooptic devices; Electrooptic effects; Length measurement; Maximum likelihood detection; Maximum likelihood estimation; Signal to noise ratio; Target tracking;
fLanguage
English
Journal_Title
Aerospace and Electronic Systems, IEEE Transactions on
Publisher
ieee
ISSN
0018-9251
Type
jour
DOI
10.1109/TAES.2002.1008999
Filename
1008999
Link To Document