Multi-stage localization method based on camera-aided GNSS / INS integration in urban canyon areas
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摘要:
城市峡谷环境中卫星信号遮挡严重且质量易变,导致智能车的定位易失准甚至失效。 为有效利用可观测的卫星信号, 提出了一种基于可视卫星的 GNSS / INS 融合定位方法。 首先,利用鱼眼相机筛选视距卫星,进而基于正交回归拟合方法定义空 视情况优劣;接着,构建基于因子图的 GNSS / INS 融合定位框架,考虑到观测的不稳定性,分别构建了伪距、多普勒频率、载波相 位观测因子,并在满足观测条件时增添对应的约束因子进行优化;最后,设计了基于空视情况的区间优化规则,优化长度跟随遮 挡区间变化,以适应不同的遮挡情况。 实车实验表明,相比传统的
Abstract:
The GNSS signal within the urban canyon areas suffers from the severe blockage and variable quality, which can lead to the inaccurate or even ineffective positioning of intelligent vehicles. To effectively utilize available satellite observations, a multi-sensor fusion method based on camera-aided GNSS / INS integration is proposed. Firstly, a sky-pointing camera is utilized to capture the sky view image and exclude the NLOS measurements, meanwhile the satellites distribution state is defined by the remaining LOS measurements with orthogonal linear regression method. Additionally a factor graph fusion framework based on GNSS / INS integration is proposed by considering the instability of observations, three factors consisting of pseudorange, Doppler frequency, and carrier phase are added for the optimization estimation when the corresponding observation conditions are met. Lastly, the dynamic window optimization rules are designed according to the satellites distribution state, and the length of optimization window is adjusted to follow the change of GNSS blockage. The road tests show that the proposed method enhances more than 40% of positioning accuracy in the blockage interval compared to the conventional fusion method and improves positioning accuracy in urban canyons effectively.
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田哲铭,李 旭,胡 悦,韦 坤,刘锡祥.城市峡谷下视觉辅助的 GNSS / INS 多阶段定位方法[J].仪器仪表学报,2024,45(4):217-225