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Random weighting estimation for fusion of multi-dimensional position data

机译:用于多维位置数据融合的随机加权估计

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摘要

This paper adopts the concept of random weighting estimation to multi-sensor data fusion. It presents a new random weighting estimation methodology for optimal fusion of multi-dimensional position data. A multi-sensor observation model is constructed for multi-dimensional position. Based on this observation model, a random weighting estimation algorithm is developed for estimation of position data from single sensors. Using the random weighting estimations from each single sensor, an optimization theory is established for optimal fusion of multi-sensor position data. Experimental results demonstrate that the proposed methodology can effectively fuse multi-sensor dimensional position data, and the fusion accuracy is much higher than that of the Kalman fusion method.
机译:本文采用随机加权估计的概念进行多传感器数据融合。为多维位置数据的最优融合提出了一种新的随机加权估计方法。构建了用于多维位置的多传感器观察模型。基于此观察模型,开发了一种随机加权估计算法,用于估计来自单个传感器的位置数据。使用来自每个单个传感器的随机加权估计,建立了一个优化理论,以实现多传感器位置数据的最佳融合。实验结果表明,该方法能够有效地融合多传感器维位置数据,融合精度远高于卡尔曼融合方法。

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