首页> 外文会议>Joint international symposium on robotics;ISR 2010;German conference on robotics;ROBOTIK 2010 >Multi-Sensor Fusion for Localization of a Mobile Robot in Outdoor Environments
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Multi-Sensor Fusion for Localization of a Mobile Robot in Outdoor Environments

机译:多传感器融合,用于室外环境中移动机器人的本地化

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An essential key capability for a mobile robot to perform autonomous navigation is the ability to localize itself in its environment. The most basic way to perform localization is dead-reckoning, i.e., to use relative measuring sensors of the robot like odometry (wheel encoders) by incrementally incorporating the measured revolutions of the robots wheels from a known starting position. As these sensors only deliver relative measurements and all sensors are subjected to noise, the uncertainty of the pose grows boundlessly over the covered distance. In outdoor environments navigation sensors like GPS and compass are a viable option. They are measuring absolute quantities and therefore are not suffering from error accumulation but are prone to local disturbances by surrounding objects. The measurements of the compass are degraded by disturbances of the terrestrial magnetic field, e.g., by metal fences or ventilation fans of air condition systems. Using a low-cost differential GPS receiver, the significant remaining source of error is multipath propagation due to reflections and shadowing effects of large objects like buildings. As the reflections are dependent on the constellation of the receiver and the satellites relative to nearby reflecting surfaces the errors are time variant and locally varying. For precise self localization the combination of several sensors is essential as due to the noisy measurements no single sensor is sufficient. The data from the sensors is fused to a combined estimate resulting in a more accurate localization.A new Kalman filter based approach will be presented to perform multi-sensor fusion for on-line localization under realtime constraints. While for indoor applications of mobile robots a 2D localization usually is sufficient, as the robot typically operates on flat floors, a full 6 DoF estimation of position and attitude is necessary in outdoor environments where the assumption of a flat ground cannot be applied. To accomplish the 6 DoF estimation relative measuring sensors and absolute measuring sensors are combined by means of multi-sensor fusion. The fusion combines the advantages of the relative measuring sensors regarding their local precision with the capability of absolute sensors to confine the global uncertainty and thus preventing unbounded error growth.
机译:移动机器人执行自主导航的基本关键能力是在其环境中定位自身的能力。执行定位的最基本方法是死锁,即通过逐步合并从已知起始位置开始测量的机器人车轮转速来使用机器人的相对测量传感器(如里程表(车轮编码器))。由于这些传感器仅提供相对测量值,并且所有传感器都受到噪声的影响,因此在整个覆盖范围内,姿势的不确定性会无限增加。在室外环境中,GPS和指南针等导航传感器是一个可行的选择。它们测量的是绝对量,因此不会出现误差累积,但容易受到周围物体的局部干扰。指南针的测量值会由于诸如金属栅栏或空调系统的通风风扇等地磁场的干扰而降低。使用低成本的差分GPS接收器,由于建筑物等大型物体的反射和阴影效应,主要的剩余误差源是多径传播。由于反射取决于接收机和卫星相对于附近反射面的星座,因此误差是时变的,并且局部地变化。对于精确的自我定位,必须结合使用多个传感器,因为由于测量噪声大,单个传感器是不够的。来自传感器的数据被融合到组合的估计值中,从而实现更准确的定位。 将提出一种新的基于Kalman滤波器的方法,以在实时约束下执行多传感器融合,以进行在线定位。尽管对于移动机器人的室内应用来说,二维定位通常就足够了,因为机器人通常在平坦的地板上运行,但是在无法应用平坦地面的室外环境中,必须对位置和姿态进行完整的6自由度估计。为了完成6 DoF估计,通过多传感器融合将相对测量传感器和绝对测量传感器组合在一起。这种融合将相对测量传感器在其局部精度方面的优势与绝对传感器的能力相结合,以限制全局不确定性,从而防止无限误差的增长。

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