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A new approach in distributed multisensor tracking systems based on Kalman filter methods

机译:基于卡尔曼滤波方法的分布式多传感器跟踪系统的新方法

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In multisensor tracking systems, the state fusion also known as ”track to track” fusion is a crucial issue where the derivation of the ”best” track combination is obtained according to a stochastic criteria in a minimum variance sense. Recently, sub-optimal weighted combination fusion algorithms involving matrices and scalars were developed. However, hence they only depend on the initial parameters of the system motion model and noise characteristics, these techniques are not robust against erroneous measures and unstable environment. To overcome this drawbacks, this work introduces a new approach to the optimal decentralized state fusion that copes with erroneous observations and system shortcomings. The simulations results show the effectiveness of the proposed approach. Moreover, the reduced complexity of the designed algorithm is well suited for real-time implementation.
机译:在多传感器跟踪系统中,状态融合(也称为“跟踪到轨道”融合)是一个关键问题,其中,根据最佳方差意义上的随机标准获得“最佳”跟踪组合的推导。最近,开发了涉及矩阵和标量的次优加权组合融合算法。但是,因此,它们仅取决于系统运动模型的初始参数和噪声特性,这些技术对于错误的措施和不稳定的环境均不具有鲁棒性。为了克服这些缺点,这项工作引入了一种新的最佳分散状态融合方法,该方法可以解决错误的观测结果和系统缺陷。仿真结果表明了该方法的有效性。而且,所设计算法的降低的复杂度非常适合实时实现。

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