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Ridge regression and Kalman filtering for target tracking in wireless sensor networks

机译:岭回归和卡尔曼滤波用于无线传感器网络中的目标跟踪

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This paper introduces an original method for target tracking in wireless sensor networks that combines machine learning and Kalman filtering. A database of radio-fingerprints is used, along with the ridge regression learning method, to compute a model that takes as input RSSI information, and yields, as output, the positions where the RSSIs are measured. This model leads to a position estimate for each target. The Kalman filter is used afterwards to combine the model's estimates with predictions of the target's positions based on acceleration information, leading to more accurate ones.
机译:本文介绍了一种结合了机器学习和卡尔曼滤波的无线传感器网络中目标跟踪的原始方法。使用无线电指纹数据库以及岭回归学习方法来计算一个模型,该模型将RSSI信息作为输入,并将测量RSSI的位置作为输出。该模型可得出每个目标的位置估算值。之后使用卡尔曼滤波器将模型的估计值与基于加速度信息的目标位置的预测结合起来,从而得出更准确的估计值。

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