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Algorithm for Multi-sensor Asynchronous Track-to-Track Fusion

机译:多传感器异步航迹融合算法

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This paper derives an algorithm for multi-sensor asynchronous track-to-track fusion that combines tracks provided by different sensors, which have each communication delay. In this algorithm, an adaptive approach for fusion in a multi-sensors environment is used. The measurements of two sensors tracking the same target are processed by linear Kalman Filters, and the outputs of the local trackers are sent to the central node. In this node, a decision logic, which is based on the comparison between distance metrics and thresholds, selects the method to obtain the global estimate. The simulation result illustrates that this algorithms approaches the Weighted Covariance Fusion (WCF) algorithm in the fusion precision, and the computational burden reduces one about the half.
机译:本文推导了一种用于多传感器异步轨道到轨道融合的算法,该算法结合了不同传感器提供的轨道,每个传感器都有通信延迟。在该算法中,使用了一种在多传感器环境中进行融合的自适应方法。跟踪同一目标的两个传感器的测量值由线性卡尔曼滤波器处理,本地跟踪器的输出发送到中心节点。在该节点中,基于距离度量和阈值之间比较的决策逻辑选择获取全局估计的方法。仿真结果表明,该算法在融合精度上接近加权协方差融合(WCF)算法,计算量减少了一半左右。

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