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首页> 外文期刊>Cybernetics, IEEE Transactions on >A Reduced-Complexity Data-Fusion Algorithm Using Belief Propagation for Location Tracking in Heterogeneous Observations
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A Reduced-Complexity Data-Fusion Algorithm Using Belief Propagation for Location Tracking in Heterogeneous Observations

机译:基于信念传播的异构观测中位置复杂度降低的数据融合算法

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摘要

This paper presents a low-complexity and high-accuracy algorithm to reduce the computational load of the traditional data-fusion algorithm with heterogeneous observations for location tracking. For the location-estimation technique with the data fusion of radio-based ranging measurement and speed-based sensing measurement, the proposed tracking scheme, based on the Bayesian filtering concept, is handled by a state space model. The location tracking problem is divided into many mutual-interaction local constraints with the inherent message- passing features of factor graphs. During each iteration cycle, the messages with reliable information are passed efficiently between the prediction phase and the correction phase to simplify the data-fusion implementation for tracking the location of the mobile terminal. Numerical simulations show that the proposed forward and one-step backward refining tracking approach that combines radio ranging with speed sensing measurements for data fusion not only can achieve an accurate location close to that of the traditional Kalman filtering data-fusion algorithm, but also has much lower computational complexity.
机译:本文提出了一种低复杂度,高精度的算法,以减少传统数据融合算法的计算量,并采用异构观测进行位置跟踪。对于具有基于无线电的测距测量和基于速度的感测测量的数据融合的位置估计技术,基于贝叶斯滤波概念的拟议跟踪方案由状态空间模型处理。位置跟踪问题分为许多相互影响的局部约束,以及因子图的固有消息传递功能。在每个迭代周期中,具有可靠信息的消息在预测阶段和校正阶段之间有效地传递,以简化用于跟踪移动终端位置的数据融合实现。数值模拟表明,提出的将无线电测距与速度传感测量相结合的正向和一步向精炼跟踪方法不仅可以实现接近传统卡尔曼滤波数据融合算法的精确定位,而且具有很多优点降低计算复杂度。

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