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Bayesian approach to multisensor data fusion with Pre- and Post-Filtering

机译:贝叶斯探讨多传感器数据融合与过滤后的多传感器数据融合

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Data provided by sensors is always affected by some level of uncertainty or lack of certainty in the measurements. Combining data from several sources using multisensor data fusion algorithms exploits the data redundancy to reduce this uncertainty. This paper proposes an approach to multisensor data fusion that relies on combining a modified Bayesian fusion algorithm with Kalman filtering. Three different approaches namely: Pre-Filtering, Post-Filtering and Pre-Post-Filtering are described based on how filtering is applied to the sensor data, to the fused data or both. A case study of estimating the position of a mobile robot using optical encoder and Hall-effect sensor is presented. Experimental study shows that combining fusion with filtering helps in handling the problem of uncertainty and inconsistency of the data in both centralized and decentralized data fusion architectures.
机译:传感器提供的数据总是受到测量中的某种程度的不确定性或缺乏确定性的影响。使用多传感器数据融合算法组合来自多个来源的数据利用数据冗余来减少这种不确定性。本文提出了一种利用Kalman滤波结合改进的贝叶斯融合算法的多传感器数据融合方法。三种不同的方法是:基于如何将滤波应用于传感器数据或两者来说,描述预过滤,过滤和后滤波后滤波。介绍了使用光学编码器和霍尔效应传感器估计移动机器人的位置的案例研究。实验研究表明,将融合与过滤结合有助于处理集中和分散的数据融合架构中数据的不确定性和不一致的问题。

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