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Distributed Recursive Gaussian Processes for RSS Map Applied to Target Tracking

机译:RSS映射的分布式递归高斯过程应用于目标跟踪

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摘要

We propose a distributed recursive Gaussian process (drGP) regression framework for building received-signal-strength (RSS) map. The proposed framework adopts independent mobile devices in prescribed local areas to construct local RSS maps through recursive computation of the posterior distribution of the RSS on a fixed set of grids as training data gradually become available. The training input positions can be either precise or subject to errors of known distribution. All the local RSS maps are then fused to give a global map in the second step. The proposed framework is of significantly reduced computational complexity and scalable to big data generated from large-scale sensor networks. We further demonstrate its use in both static fingerprinting and mobile target tracking. The experimental results show that with our distributed framework satisfactory positioning accuracy can be achieved with much less complexity and storage than the standard framework.
机译:我们提出了一个分布式递归高斯过程(drGP)回归框架,用于构建接收信号强度(RSS)映射。所提出的框架在规定的局部区域采用独立的移动设备,以随着训练数据逐渐可用,通过在固定的一组网格上递归计算RSS的后验分布,来构建本地RSS地图。训练输入位置可以是精确的,也可以是已知分布的误差。然后在第二步中融合所有本地RSS映射以提供全局映射。所提出的框架显着降低了计算复杂度,并且可扩展到大规模传感器网络生成的大数据。我们进一步展示了它在静态指纹识别和移动目标跟踪中的使用。实验结果表明,与标准框架相比,使用我们的分布式框架可以实现令人满意的定位精度,而复杂性和存储量要少得多。

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