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A ROBUST AND MODULAR MULTI-SENSOR FUSION APPROACH APPLIED TO MAV NAVIGATION

机译:一种鲁棒模块化多传感器融合方法在maV导航中的应用

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摘要

It has been long known that fusing information from multiple sensors for robot navigation results in increased robustness and accuracy. However, accurate calibration of the sensor ensemble prior to deployment in the field as well as coping with sensor outages, different measurement rates and delays, render multi-sensor fusion a challenge. As a result, most often, systems do not exploit all the sensor information available in exchange for simplicity. For example, on a mission requiring transition of the robot from indoors to outdoors, it is the norm to ignore the Global Positioning System (GPS) signals which become freely available once outdoors and instead, rely only on sensor feeds (e.g., vision and laser) continuously available throughout the mission. Naturally, this comes at the expense of robustness and accuracy in real deployment. This paper presents a generic framework, dubbed MultiSensor-Fusion Extended Kalman Filter (MSF-EKF), able to process delayed, relative and absolute measurements from a theoretically unlimited number of different sensors and sensor types, while allowing self-calibration of the sensor-suite online. The modularity of MSF-EKF allows seamless handling of additional/lost sensor signals during operation while employing a state buffering scheme augmented with Iterated EKF (IEKF) updates to allow for efficient re-linearization of the prediction to get near optimal linearization points for both absolute and relative state updates. We demonstrate our approach in outdoor navigation experiments using a Micro Aerial Vehicle (MAV) equipped with a GPS receiver as well as visual, inertial, and pressure sensors.
机译:长期以来,将来自多个传感器的信息融合以进行机器人导航会提高鲁棒性和准确性。但是,在现场部署之前对传感器整体进行精确校准以及应对传感器故障,不同的测量速率和延迟,都给多传感器融合带来了挑战。结果,大多数情况下,系统不会为了简单起见而利用所有可用的传感器信息。例如,在需要将机器人从室内转移到室外的任务中,通常会忽略全球定位系统(GPS)信号,该信号一旦在室外便可以自由使用,而是仅依靠传感器的馈电(例如视觉和激光) )在整个任务期间持续可用。自然地,这是以实际部署中的健壮性和准确性为代价的。本文介绍了一个通用框架,称为MultiSensor-Fusion扩展卡尔曼滤波器(MSF-EKF),它能够处理理论上无限数量的不同传感器和传感器类型的延迟,相对和绝对测量,同时允许对传感器进行自校准。在线套房。 MSF-EKF的模块性允许在操作期间无缝处理附加/丢失的传感器信号,同时采用通过迭代EKF(IEKF)更新增强的状态缓冲方案,以实现对预测的有效重新线性化,从而获得两个绝对值附近的最佳线性化点和相对状态更新。我们使用配备GPS接收器以及视觉,惯性和压力传感器的微型飞行器(MAV)在户外导航实验中展示了我们的方法。

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