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Assessment of GNSS and Map Integration for Lane-Level Applications in the Scope of Intelligent Transportation Location Based Services (ITLBS)

机译:基于智能运输地点的智能交通服务范围的Line级应用的GNSS和地图集成评估(ITLBS)

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To enable safe and robust Intelligent Transportation Systems (ITS) applications, the integration of different sensors and techniques will certainly be a common reality. One application in this context is the lane-keeping techniques for autonomous driving systems. These systems normally use imagery sensors for lane identification, however imagery systems always depend on light and well-structured roads. One potential worldwide autonomous driving technique without any other lane and road detection/identification sensor would be GNSS positions along with accurate map information. However, this fusion depends on the accuracy and reliability of both GNSS positions and map information. The positioning accuracy that Intelligent Transportation Location Based Services (ITLBS) requires for where-in-lane and active control applications are 0.5 m and 0.1 m, respectively. To evaluate the potential of fusion, this work proposes an integration of GNSS and map information in the attempt to address the lane-keeping problem. This integration is performed by merging a GNSS solutions and lane centerline positions, acquired from aerial orthophotos, into a Kalman Filter and a simple map matching approach. To measure the positioning error, or off-track performance, a conversion of positions to the road space is necessary. To evaluate the results, a positioning accuracy limit, considering the road, vehicle dimensions, and the requirements for ITLBS is also proposed. The results showed that 95% of the time the proposed methodology off-track performances were within 1.89 m, in an average of 4 runs. Half of the runs were within 0.75 m, in average, at 95% of the time. Compared to an accurate GNSS Post Processed Kinematic (PPK) mode, an improvement of 10% was achieved.
机译:为了实现安全且坚固的智能运输系统(其)应用,不同传感器和技术的集成肯定是一个普遍的现实。在此上下文中的一个应用是自动驾驶系统的泳道保持技术。这些系统通常使用用于车道识别的图像传感器,但图像始终取决于光线和结构良好的道路。没有任何其他车道和道路检测/识别传感器的一个潜在全球自主驾驶技术将是GNSS位置以及准确的地图信息。然而,这种融合取决于GNSS位置和地图信息的准确性和可靠性。基于智能运输地点的服务(ITLBS)的定位精度分别需要智能车道和主动控制应用的所需的服务器为0.5米和0.1米。为了评估融合的潜力,这项工作提出了GNSS和地图信息的集成,试图解决车道保持问题。通过合并从空中原子芯片的GNSS解决方案和车道中心线位置来实现这种集成,进入卡尔曼滤波器和简单的地图匹配方法。为了测量定位误差或离径性能,需要将位置转换为道路空间。为了评估结果,考虑到道路,车辆尺寸和ITLBS的要求,还提出了定位精度极限。结果表明,95%的拟议方法偏离轨道性能的时间在1.89米范围内,平均为4次。一半的运行平均在95%的时间内在0.75米范围内。与加工运动后的精确GNSS相比,实现了10%的提高。

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