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A Bayesian approach to multi-target tracking and data fusion with out-of-sequence measurements

机译:贝叶斯方法用于多目标跟踪和数据融合(序列外测量)

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When fusing the information from several sensors, the possibility that measurements are received in the wrong order must be considered. This is especially true if the sensors are of different types, or if human observations are to be included. Recent advances in the field of Monte Carlo sampling procedures, particularly the particle filter, allow for the sequential tracking of nonlinear and non-Gaussian dynamic systems using a cloud of samples. We build on this to generate an algorithm capable of incorporating out-of-sequence measurements (OOSMs) in the general nonlinear non-Gaussian framework. The algorithm is applied to the problem of tracking where the measurements are made by a scanned sensor.
机译:当融合来自多个传感器的信息时,必须考虑以错误的顺序接收到测量值的可能性。如果传感器属于不同类型,或者要包括人类观察,则尤其如此。蒙特卡洛采样程序领域的最新进展,尤其是粒子滤波器,允许使用一堆样本对非线性和非高斯动态系统进行顺序跟踪。我们以此为基础生成了一种能够在一般的非线性非高斯框架中合并乱序测量(OOSM)的算法。该算法适用于跟踪由扫描传感器在何处进行测量的问题。

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