GVIM: GNSS/Visual/IMU/Map Integration Via Sliding Window Factor Graph Optimization in Urban Canyons

Xiwei Bai, Li-Ta Hsu
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Abstract

Globally referenced and accurate positioning is of great significance for the realization of fully autonomous systems. The visual and inertial measurement unit (IMU) integrated navigation system (VINS) can provide accurate positioning in a short period but is subject to drift over time. Meanwhile, the performance of the VINS is significantly degraded in urban canyons due to the numerous outlier visual features caused by moving objects and unstable illuminations. The global navigation satellite system (GNSS) can provide reliable and globally referenced positioning in open areas, but it is challenged in urban canyons due to the signal reflections and blockages from tall buildings. To exploit the complementariness of the GNSS and VINS, this paper proposed a sliding window factor graph optimization (FGO) based GNSS/Visual/IMU/Map Integration. First, the window carrier phase (WCP) and the Doppler measurements are explored to constrain the relative motion of the system within consecutive epochs. Second, a novel sliding window (SW) based map matching model is proposed to correct the states using the lightweight OpenStreetMap (OSM). Different from conventional filtering-based map matching, the states within the sliding window of the FGO are associated with the lane information from the OSM which effectively exploited the measurement redundancy arising from the factor graph model. The effectiveness of the proposed method is validated using the challenging dataset collected in the urban canyons of Hong Kong. The results showed that lane-level positioning can be achieved even in dense urban scenarios, with poor satellite visibilities and numerous visual feature outliers.
GVIM:基于滑动窗口因子图优化的城市峡谷GNSS/Visual/IMU/Map集成
全局参考和精确定位对于实现全自主系统具有重要意义。视觉和惯性测量单元(IMU)组合导航系统(VINS)可以在短时间内提供精确的定位,但随着时间的推移会发生漂移。同时,在城市峡谷中,由于运动物体和不稳定的光照造成了大量的离群视觉特征,使得VINS的性能明显下降。全球卫星导航系统(GNSS)可以在开阔地区提供可靠的全球参考定位,但在城市峡谷中,由于信号反射和高层建筑的阻挡,其定位受到挑战。为了充分发挥GNSS与VINS的互补性,提出了一种基于滑动窗口因子图优化(FGO)的GNSS/Visual/IMU/Map集成。首先,利用窗口载波相位(WCP)和多普勒测量来约束系统在连续历元内的相对运动。其次,提出了一种基于滑动窗口(SW)的地图匹配模型,利用轻量级的OpenStreetMap (OSM)修正状态。与传统的基于滤波的地图匹配不同,FGO滑动窗口内的状态与来自OSM的车道信息相关联,有效地利用了因子图模型产生的测量冗余。利用在香港市区峡谷收集的具有挑战性的数据集验证了所提出方法的有效性。结果表明,即使在卫星能见度较差且视觉特征异常值众多的密集城市场景中,也可以实现车道水平定位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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