传感器网络中基于数据融合和分布式检测的多目标跟踪

Juo-Yu Lee, K. Yao
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引用次数: 0

摘要

我们考虑了一个多目标跟踪问题,该问题的目的是同时确定野外移动目标的数量和状态。传统的模式往往根据集中检测和数据融合,只报告目标的存在和状态。相反,我们研究了一个多目标、多传感器的场景,其中(a)目标的数量和状态都是先验未知的;以及(b)对目标的探测是以分布式方式进行的。为此,我们利用随机集理论,一种基于贝叶斯框架的统计工具,建立广义似然和马尔可夫密度函数,以产生迭代滤波过程。研究了分布式检测的设计对系统级信息融合结果的影响。贝叶斯滤波的公式表明跟踪系统的设计可以适应检测性能的变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-target tracking based on data fusion and distributed detection in sensor networks
We consider a multi-target tracking problem that aims to simultaneously determine the number and state of mobile targets in the field. Conventional paradigms tend to report only the existence and state of targets according to centralized detection and data fusion. On the contrary, we investigate a multi-target, multi-sensor scenario in which (a) both the number and the state of the targets are unknown a priori; and (b) the detection with respect to targets is employed in a distributed manner. Toward this end, we exploit random set theory, a statistical tool based on Bayesian framework, for establishing generalized likelihood and Markov density functions to yield an iterative filtering procedure. We conduct a study regarding how the design of distributed detection has impact on the result of system level information fusion. The formulation of Bayesian filtering suggests that a design of a tracking system be adaptive to change of detection performance.
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