基于多传感器融合的机器人单基站定位

Yuanhao Ding, Lurong Jiang, Jiang Wu, Meng Li, Liwen Jing, Wei Li
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引用次数: 1

摘要

随着技术的发展,定位系统已经从室外转向室内,从低精度转向高精度。室内定位对包括室内机器人导航在内的许多应用提出了更高的要求。为了提高室内定位的精度、成本和稳定性,本文提出了一种基于超宽带、IMU和编码器传感器融合的机器人单基站定位方法。通过多个传感器的组合,携带超宽带标签的机器人可以在室内环境中实现高精度定位和良好的鲁棒性。它已在室内走廊和通道中得到验证。与传统的多基站定位方法相比,该方法降低了定位成本,提高了定位的灵活性。通过实验验证了定位性能。结果表明,在大多数室内场景下,平均定位误差可以满足要求。
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Single Base Station Positioning for Robots Based on Multiple Sensor Fusion
With the development of technology, positioning systems have shifted from outdoor to indoor and from low precision to high precision. The indoor positioning has put forward greater demands on many applications including indoor robot navigation. Aiming at improving the accuracy, cost, and stability of indoor localization, this paper proposed a single base station positioning approach for robots based on the fusion of UWB, IMU, and encoder sensors. With the combination of several sensors, robots that carry UWB tags can achieve high accuracy localization and well robustness in an indoor environment. It has been validated in indoor corridors and passages. Compared with traditional multi-base station positioning methods, the approach which we proposed cuts the positioning cost and improves flexibility. Experiments are carried out to validate the localization performance. The results confirm that the average positioning errors can meet requirements in most indoor scenes.
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