Multitarget Track-Before-Detect From Image Observations Based On Multi-Object Particle Phd Filter

2017 PROGRESS IN ELECTROMAGNETICS RESEARCH SYMPOSIUM - SPRING (PIERS)(2017)

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摘要
In order to deal with more complicated situations such as closely spaced objects and target crossings, we propose a recursive multitarget TBD algorithm for image observations based on multi-object particle PHD (MOP-PHD) filter. Instead of sampling from the single target PHD intensity, multi-object set particle sampling is utilized in the approximation of predicted multi object density. Update of the multi-object state incorporates the multi-object set likelihood function corresponding to a more general observation model to accommodate the overlapping illumination of closely spaced point targets. Each multi-object set particle contains random number of possible single target states, and thus combined with the generalized observation model, the effect of multi-object states can be taken into account simultaneously during the multi-object measurement update procedure. Based on the standard Sequential Monte Carlo PHD (SMC-PHD) filter, multi-object particle PHD filter for image observations is developed and evaluated. Simulation results demonstrate that the proposed method can achieve more accurate estimation without the restriction of non-overlapping assumption, especially when the moving targets become closely spaced.
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关键词
single target states,standard Sequential Monte Carlo PHD filter,multiobject measurement update procedure,generalized observation model,closely spaced point targets,general observation model,multiobject state,predicted multiobject density,multiobject set particle sampling,single target PHD intensity,MOP-PHD,image observations,recursive multitarget TBD algorithm,multiobject particle PHD filter
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