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A Hybrid Bayesian Framework for Map Matching: Formulation Using Switching Kalman Filter

机译:用于地图匹配的混合贝叶斯框架:使用切换卡尔曼滤波器的公式化

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This paper addresses an important issue for intelligent transportation system, namely the ability of vehicles to safely and reliably localize themselves within an a priori known road map network. For this purpose, we propose an approach based on hybrid dynamic bayesian networks enabling to implement in a unified framework two of the most successful families of probabilistic model commonly used for localization: linear Kalman filters and Hidden Markov Models. The combination of these two models enables to manage and manipulate multi-hypotheses and multi-modality of observations characterizing Map Matching problems and it improves integrity approach. Another contribution of the paper is a chained-form state space representation of vehicle evolution which permits to deal with non-linearity of the used odometry model. Experimental results, using data from encoders' sensors, a DGPS receiver and an accurate digital roadmap, illustrate the performance of this approach, especially in ambiguous situations.
机译:本文讨论了智能交通系统的一个重要问题,即车辆在先验已知的路线图网络中安全可靠地定位自身的能力。为此,我们提出了一种基于混合动态贝叶斯网络的方法,该方法能够在统一框架中实现通常用于本地化的两个最成功的概率模型家族:线性卡尔曼滤波器和隐马尔可夫模型。这两个模型的结合使您能够管理和操纵表征地图匹配问题的多假设和多模态观测,并改进了完整性方法。本文的另一个贡献是车辆进化的链式状态空间表示,它可以处理所用里程表模型的非线性。使用来自编码器传感器,DGPS接收器和准确的数字路线图的数据的实验结果说明了这种方法的性能,尤其是在模棱两可的情况下。

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