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Robust Tracking under Measurement Model Mismatch via Linearly Constrained Extended Kalman Filtering

机译:通过线性约束扩展卡尔曼滤波,测量模型下的鲁棒跟踪不匹配

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Standard state estimation techniques, ranging from the linear Kalman filter to nonlinear sigma-point or particle filters, assume a perfectly known system model, that is, process and measurement functions and system noise statistics (both the distribution and its parameters). This is a strong assumption which may not hold in practice, reason why several approaches have been proposed for robust filtering. In the context of linear filtering, a solution to cope with a possible system matrices mismatch is to use linear constraints. In this contribution we further explore the extension and use of recent results on linearly constrained Kalman filtering (LCKF) for robust tracking/localization under measurement model mismatch. We first derive the natural extension of the LCKF to nonlinear systems, and its use to mitigate parametric modelling errors in the nonlinear measurement function. A tracking problem where a set of sensors at possibly mismatched (unknown to a certain extent) positions track a moving object from time of arrival measurements is used to support the discussion.
机译:标准状态估计技术,从线性Kalman滤波器到非线性Σ点或粒子滤波器,假设一个完全已知的系统模型,即过程和测量函数和系统噪声统计(分布及其参数)。这是一个强烈的假设,可能无法在实践中持有,原因是为什么已经提出了若干方法的强大滤波。在线性滤波的背景下,要应对可能的系统矩阵的解决方案不匹配是使用线性约束。在此贡献中,我们进一步探索了在测量模型不匹配下的鲁棒跟踪/定位的线性受约束的卡尔曼滤波(LCKF)上的近期结果的扩展和使用。我们首先将LCKF的自​​然延伸导出到非线性系统,并用于减轻非线性测量功能中的参数建模误差。一种跟踪问题,其中一组传感器可能不匹配(在一定程度上未知)位置跟踪从到达时测量的移动对象用于支持讨论。

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