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Toward accurate localization in guided transport: Combining GNSS data and imaging information

机译:在引导运输中实现精确定位:将GNSS数据和影像信息相结合

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Global Navigation Satellite Systems (GNSS) are widely spread (with Global Positioning System - GPS) in intelligent transport systems and offer a low cost, continuous and global solution for positioning. Unfortunately, urban users are often the most demanding of accurate localization but receive a degraded service because of signal propagation conditions. Several mitigation solutions can be developed. We propose, within CAPLOC project (2010-2013) to deal with inaccuracy by associating image processing techniques and signal propagation knowledge. In this paper, we focus on the contribution of image processing in more accurate position estimation. Thus, we use a laboratory vehicle, which is equipped with a fisheye camera and two GNSS receivers. The camera is located on the roof and oriented upwards to capture images of the sky. The GNSS receivers are used to obtain raw data, the position of the vehicle and the reference trajectory. The proposed approach consists in determining where satellites are located in the fisheye image, and then excluding those located in non-sky regions when calculating the position. For that, the strategy is based on an image simplification step coupled with a pixels classification. The image-based exclusion procedure is compared with the classical one based on the application of a threshold on carrier-to-noise (CNO) ratio to separate LOS and NLOS signals. Accuracy improvement is satisfying with the CNO-based method and show an improvement from 13 m to 4.5 m. Image-based detection shows mixed improvements but promising: good in a static area and too harsh in another configuration of the scenario.
机译:全球导航卫星系统(GNSS)在智能运输系统中得到了广泛的传播(与全球定位系统-GPS),并提供了一种低成本,连续的全球定位解决方案。不幸的是,城市用户通常最需要精确的定位,但是由于信号传播条件而使服务质量下降。可以开发几种缓解方案。我们建议,在CAPLOC项目(2010-2013年)内,通过将图像处理技术和信号传播知识相关联来处理不准确性。在本文中,我们集中于图像处理在更精确的位置估计中的作用。因此,我们使用的实验室车辆配备了鱼眼镜头和两个GNSS接收器。摄像头位于屋顶上,朝上以捕获天空图像。 GNSS接收器用于获取原始数据,车辆位置和参考轨迹。所提出的方法包括确定卫星在鱼眼图像中的位置,然后在计算位置时排除位于非天空区域的卫星。为此,该策略基于结合了像素分类的图像简化步骤。基于阈值的信噪比(CNO)应用于分离LOS和NLOS信号,将基于图像的排除程序与经典方法进行比较。基于CNO的方法的精度提高令人满意,并且从13 m提高到4.5 m。基于图像的检测显示出混合的改进,但是很有希望:在静态区域中很好,而在场景的其他配置中太苛刻。

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