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arxiv: 1104.4376 · v1 · pith:SE3NB5U7new · submitted 2011-04-22 · 📊 stat.ME · cs.CV· cs.LG

Intent Inference and Syntactic Tracking with GMTI Measurements

classification 📊 stat.ME cs.CVcs.LG
keywords targetalgorithmsspatialsyntacticcontextexperimentalextractingfiltering
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In conventional target tracking systems, human operators use the estimated target tracks to make higher level inference of the target behaviour/intent. This paper develops syntactic filtering algorithms that assist human operators by extracting spatial patterns from target tracks to identify suspicious/anomalous spatial trajectories. The targets' spatial trajectories are modeled by a stochastic context free grammar (SCFG) and a switched mode state space model. Bayesian filtering algorithms for stochastic context free grammars are presented for extracting the syntactic structure and illustrated for a ground moving target indicator (GMTI) radar example. The performance of the algorithms is tested with the experimental data collected using DRDC Ottawa's X-band Wideband Experimental Airborne Radar (XWEAR).

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