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GNSS/LiDAR Integration Aided by Self-Adaptive Gaussian Mixture Models in Urban Scenarios: An Approach Robust to Non-Gaussian Noise

机译:自适应高斯混合模型在城市场景中的GNSS / LiDAR集成:一种非高斯噪声的鲁棒方法

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Accurate and globally referenced positioning is crucial to autonomous systems with navigation requirements, such as unmanned aerial vehicles (UAV) and autonomous driving vehicles (ADV). GNSS/LiDAR integration is a popular sensor pair that can provide outstanding positioning performance in open areas. However, the accuracy is significantly degraded in urban canyons, due to the excessive unmodeled non-Gaussian GNSS outliers caused by multipath effects and none-line-of-sight (NLOS) receptions. As a result, the violation of the Gaussian assumption can severely distort the sensor fusion process, such as the extended Kalman filter (EKF). To mitigate the effects of these non-Gaussian GNSS outliers, this paper proposes to leverage the Gaussian mixture model (GMM) to describe the potential noise of GNSS positioning and apply it to further sensor fusion. Instead of relying on excessive offline parameterization and tuning, the parameters of the GMM are estimated simultaneously based on the residuals of the GNSS measurements using an expectation-maximization (EM) algorithm. Then the state-of-the-art factor graph optimization (FGO) is applied to integrate the GNSS positioning and LiDAR odometry based on the estimated GMM. The experiment in a typical urban canyon is conducted to validate the performance of the proposed method. The result shows that the GMM can effectively mitigate the effects of GNSS outliers and improves positioning performance.
机译:准确且全球参考的定位对于具有导航要求的自动驾驶系统至关重要,例如无人驾驶飞机(UAV)和自动驾驶汽车(ADV)。 GNSS / LiDAR集成是一种流行的传感器对,可以在开放区域提供出色的定位性能。但是,由于多径效应和非视距(NLOS)接收导致过多的非模型化非高斯GNSS异常值,城市峡谷中的精度大大降低。结果,违反高斯假设会严重扭曲传感器融合过程,例如扩展卡尔曼滤波器(EKF)。为了减轻这些非高斯GNSS异常值的影响,本文建议利用高斯混合模型(GMM)来描述GNSS定位的潜在噪声,并将其应用于进一步的传感器融合。无需依赖过多的离线参数化和调整,而是使用期望最大化(EM)算法基于GNSS测量的残差同时估算GMM的参数。然后,应用最新的因子图优化(FGO)来基于估计的GMM集成GNSS定位和LiDAR里程表。在典型的城市峡谷中进行了实验,以验证所提出方法的性能。结果表明,GMM可以有效减轻GNSS异常值的影响,并提高定位性能。

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