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Target Tracking for Sensor Networks: A Survey

机译:传感器网络的目标跟踪:一项调查

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Target-tracking algorithms typically organize the network into a logical structure (e.g., tree, cluster, or faces) to enable data fusion and reduce communication costs. These algorithms often predict the target's future position. In addition to using position forecasts for decision making, we can also use such information to save energy by activating only the set of sensors nearby the target's trajectory. In this work, we survey of the state of the art of target-tracking techniques in sensor networks. We identify three different formulations for the target-tracking problem and classify the target-tracking algorithms based on common characteristics. Furthermore, for the sake of a better understanding of the target-tracking process, we organize this process in six components: target detection, node cooperation, position computation, future-position estimation, energy management, and target recovery. Each component has different solutions that affect the target-tracking performance.
机译:目标跟踪算法通常将网络组织成逻辑结构(例如,树,集群或面孔),以实现数据融合并降低通信成本。这些算法通常可以预测目标的未来位置。除了使用位置预测进行决策外,我们还可以通过仅激活目标轨迹附近的一组传感器来使用此类信息来节省能源。在这项工作中,我们调查了传感器网络中目标跟踪技术的发展水平。我们针对目标跟踪问题确定了三种不同的表达方式,并根据共同特征对目标跟踪算法进行了分类。此外,为了更好地了解目标跟踪过程,我们将此过程分为六个部分:目标检测,节点协作,位置计算,未来位置估计,能量管理和目标恢复。每个组件都有影响目标跟踪性能的不同解决方案。

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