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A Hybrid Neural Network-Fuzzy Logic Architecture for Multisensor Data Fusion in Target Tracking System

机译:目标跟踪系统中用于多传感器数据融合的混合神经网络-模糊逻辑架构

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In this work, a new multisensor data fusion architecture integrating neural network and fuzzy logic techniques is introduced, which has the ability of fast adjusting acceleration parameter and covariance of measurement noise of sensors. In this architecture, the neural network estimates acceleration and fuzzy logic adapts the covariance of measurement noise on-line and also offers degree of confidence of sensors for fusion. The results of simulation show that this new architecture can adjust maneuver parameter in nearly one sample time and change the covariance of measurement noise effectively.
机译:本文提出了一种新的融合了神经网络和模糊逻辑技术的多传感器数据融合架构,该架构具有快速调整加速度参数和传感器测量噪声的协方差的能力。在这种架构中,神经网络估计加速度,而模糊逻辑则可以在线适应测量噪声的协方差,还可以提供融合传感器的置信度。仿真结果表明,该新架构可以在近一个采样时间内调整操纵参数,有效改变测量噪声的协方差。

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