Multi-Sensor tracking of move-stop-move targets

2017 Sensor Data Fusion: Trends, Solutions, Applications (SDF)(2017)

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摘要
This paper considers targets that exhibit move-stop-move motion patterns, for which we have kinematic-sensor detections. Our particular focus is how best to score the association of tracklets that result from a first stage of single-sensor kinematic tracking. The tracklets may originate from one or more sensors, and target-emission tracks may be available that typically exhibit low measurement rates compared to kinematic sensors. We propose a tracklet-association scoring approach that relies on hybrid-state target modeling and the maximum a posteriori target mode sequence. We describe the use of this filter as part of a graph-based tracking approach that reduces the complexity associated with the multiple-hypothesis tracking solution.
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关键词
multi-target tracking (MTT),Ornstein Uhlenbeck (OU),interacting multiple model (IMM) filter,multiple-hypothesis tracking (MHT),graph-based tracing (GBT)
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