General Metropolis-Hastings jump diffusions for automatic target recognition in infrared scenes

被引:22
作者
Lanterman, AD
Miller, MI
Snyder, DL
机构
[1] Washington University, Department of Electrical Engineering, Electron. Syst. Signals Res. Lab., St. Louis
关键词
automatic target recognition; pattern theory; jump diffusion; infrared; forward-looking infrared;
D O I
10.1117/1.601302
中图分类号
O43 [光学];
学科分类号
070207 ; 0803 ;
摘要
To locate and recognize ground-based targets in forward-looking IR (FLIR) images, 3-D faceted models with associated pose parameters are formulated to accommodate the variability found in FLIR imagery. Taking a Bayesian approach, scenes are simulated from the emissive characteristics of the CAD models and compared with the collected data by a likelihood function based on sensor statistics. This likelihood is combined with a prior distribution defined over the set of possible scenes to form a posterior distribution. To accommodate scenes with variable numbers of targets, the posterior distribution is defined over parameter vectors of varying dimension. An inference algorithm based on Metropolis-Hastings jump-diffusion processes empirically samples from the posterior distribution, generating configurations of templates and transformations that match the collected sensor data with high probability. The jumps accommodate the addition and deletion of targets and the estimation of target identities; diffusions refine the hypotheses by drifting along the gradient of the posterior distribution with respect to the orientation and position parameters. Previous results on jumps strategies analogous to the Metropolis acceptance/rejection algorithm, with proposals drawn from the prior and accepted based on the likelihood, are extended to encompass general Metropolis-Hastings proposal densities. In particular, the algorithm proposes moves by drawing from the posterior distribution over computationally tractible subsets of the parameter space. The algorithm is illustrated by an implementation on a Silicon Graphics Onyx/Reality Engine. (C) 1997 Society of Photo-Optical Instrumentation Engineers.
引用
收藏
页码:1123 / 1137
页数:15
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