基于因子图的多相机多目标跟踪器

F. Castaldo, F. Palmieri
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引用次数: 1

摘要

近年来,利用概率图模型(PGM)进行系统建模变得越来越流行。本文设计了一种基于法向因子图概率结构的多目标跟踪器。信念传播充分利用了来自图的不同分支的数据,并通过信息融合产生轨迹。通过传播和组合前向和后向概率信息,在每个时间步上解决了数据关联、轨道生命周期管理和异构传感器模式数据融合等问题。在监视场景中部署的廉价摄像机是主要的传感器模式,即使框架已经设计为接收来自各种传感器(如雷达、红外摄像机等)的数据。该框架已经通过计算由三个摄像机组成的不同船只在港口移动的轨迹进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multi-camera Multi-Target Tracker based on Factor Graphs
System modeling with Probabilistic Graphical Models (PGM) has become increasingly popular in the last years. In this paper we design a Multiple Target Tracker based on the probabilistic architecture of Normal Factor Graph. Belief propagation makes best use of data coming from different branches of the graph and yields the tracks via messages fusion. The issues of data association, track life-cycle management and data fusion from heterogeneous sensor modalities are resolved at each time step by propagating and combining forward and backward probabilistic messages. Inexpensive cameras deployed in the scene under surveillance are the primary sensor modality, even if the framework has been designed to receive data from a wide range of sensors such as Radars, Infrared cameras, etc. The framework has been tested by calculating the tracks of different ships moving in an harbour framed by three cameras.
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