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Vehicle Localization Using In-Vehicle Pitch Data and Dynamical Models

机译:使用车内音高数据和动力学模型进行车辆定位

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This paper describes a dynamical model-based method for the localization of road vehicles using terrain data from the vehicle's onboard sensors. Road data are encoded using linear dynamical models and then, during travel, the location is identified through continuous comparison of a bank of linear models. The approach presented has several advantages over previous methods described in the literature. First, it creates computationally efficient linear model map representations of the road data. Second, the use of linear models eliminates the need for metrics during the localization process. Third, the localization algorithm is a computationally efficient approach that can have a bounded localization distance in the absence of noise, given certain uniqueness assumptions on the data. Fourth, encoding road data using linear models has the potential to compress the data, while retaining the sensory information. Finally, performing only linear operations on observed noisy data simplifies the creation of noise mitigation algorithms.
机译:本文介绍了一种基于动态模型的道路车辆定位方法,该方法使用了来自车辆车载传感器的地形数据。使用线性动力学模型对道路数据进行编码,然后在行驶过程中,通过连续比较一组线性模型来确定位置。相对于文献中描述的先前方法,提出的方法具有多个优点。首先,它创建道路数据的高效计算线性模型地图表示。其次,线性模型的使用消除了本地化过程中对度量的需求。第三,定位算法是一种计算有效的方法,在给定数据的某些唯一性假设的情况下,在没有噪声的情况下可以具有有限的定位距离。第四,使用线性模型对道路数据进行编码可能会压缩数据,同时保留感官信息。最后,仅对观察到的噪声数据执行线性运算可简化噪声消除算法的创建。

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