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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Fusion of Sensor Data in Siemens Car Navigation System
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Fusion of Sensor Data in Siemens Car Navigation System

机译:西门子汽车导航系统中传感器数据的融合

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Car navigation systems have three main tasks, namely 1) positioning; 2) routing; and 3) navigation (guidance). Positioning of the car is carried out by appropriately combining information from several sensors and information sources, including odometers, gyroscopes, Global Positioning System (GPS) information, and digital maps. This paper describes two sensor-fusion steps implemented in commercial Siemens car navigation systems. The first step is the fusion of the odometer, gyroscope, and GPS sensory information. The dynamic model of the car movement is implemented in a Kalman filter, which relays the GPS signal as a teacher. In the second step, the available digital map is used to find the most likely position on the roads. Contrary to the standard application of the digital map, where the current estimated car position is just projected on the road map, the approach presented here compares the features of the integrated vehicle path with the features of the candidate roads from the digital map. In addition, this paper presents the results of the experimental drives. The developed car navigation system was awarded the best car navigation system among ten competing systems in 2002 by the Auto Build magazine
机译:汽车导航系统具有三个主要任务,即:1)定位; 2)路由;和3)导航(指导)。通过适当组合来自多个传感器和信息源的信息(包括里程表,陀螺仪,全球定位系统(GPS)信息和数字地图)来进行汽车的定位。本文介绍了在商用西门子汽车导航系统中实现的两个传感器融合步骤。第一步是里程表,陀螺仪和GPS感官信息的融合。汽车运动的动态模型在卡尔曼滤波器中实现,该卡尔曼滤波器以教师的身份中继GPS信号。第二步,使用可用的数字地图查找道路上最可能的位置。与数字地图的标准应用相反,在数字地图的标准应用中,当前估计的汽车位置只是投影在道路地图上,此处介绍的方法将集成车辆路径的特征与数字地图中候选道路的特征进行比较。此外,本文还介绍了实验驱动器的结果。该开发的汽车导航系统在2002年被《汽车制造》杂志评选为十个竞争系统中最好的汽车导航系统

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