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Adaptive Multi-Sensor Localization Information Fusion For Autonomous Urban Air Mobility Operations

机译:自动城市空移业务的自适应多传感器定位信息融合

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An adaptive method is developed to iteratively fuse the information provided by multiple sensors to enable autonomous urban air mobility type operations. First, noisy and bias corrupted IMU readings are processed as soon as they arrive using kinematic equations represented in the vehicle's body frame. To correct the systems drift resulting from the integration, an information content measure is introduced to decide on the environment. For the cluttered environment the information provided by environmental sensors is counted as reliable and the drift correction as accurate. For the open space, the GPS data is counted as reliable, and the drift correction is done based on the GPS readings. The measurement noise effects are minimize using Iterated Extended Kalman Filter framework. The algorithm is implemented in the in-house developed FlightDeckz simulation environment using an IMU model, simulated video recorded from a camera mounted on the vehicle (for the purpose of this study, outside scenery was generated with XPlane), which flies in an urban environment, and GPS data generated from the environment's digital map.
机译:开发了一种自适应方法,以迭代地融合多个传感器提供的信息,以实现自动城市空中移动性类型操作。首先,一旦使用车辆车身框架中所示的运动方程,就会处理嘈杂和偏见损坏的IMU读数。为了纠正由集成产生的系统漂移,引入了信息内容度量来决定环境。对于杂乱的环境,环境传感器提供的信息被视为可靠,并且漂移校正为准确。对于开路空间,GPS数据被计算为可靠,并且基于GPS读数完成漂移校正。使用迭代扩展卡尔曼滤波器框架,测量噪声效应最小化。该算法在内部开发的FlightDeckZ模拟环境中使用了IMU模型,从安装在车辆上的摄像机记录的模拟视频(用于本研究的目的,使用XPLANE产生外部风景),在城市环境中飞行,以及从环境的数字地图生成的GPS数据。

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