利用传感器融合技术在自然环境中导航移动服务机器人

P. Weckesser, R. Dillmann, U. Rembold
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引用次数: 14

摘要

所描述的移动服务机器人被设计成与人类和其他静态或移动物体一起在动态和变化的环境中操作。能够提供所描述场景所需的信息质量的传感器是光学传感器,如数码相机和激光扫描仪。本文介绍了该类传感器的传感器集成与融合。将互补的传感器信息转化为共同的表示,以实现传感器系统的协作。传感器融合是通过将激光扫描仪和相机系统的局部感知与增量构建的全局模型相匹配来实现的。采用马氏距离作为匹配准则,利用卡尔曼滤波融合匹配特征。包括不确定性和置信度在内的通用表示用于所有场景特征。在探索未知环境和逐步建立几何模型的任务中,证明了该系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Navigating a mobile service-robot in a natural environment using sensor-fusion techniques
The mobile service robots described are designed to operate in dynamics and changing environments together with human beings and other static or moving objects. Sensors that are capable of providing the quality of information that is required for the described scenario are optical sensors, like digital cameras and laser scanners. In this paper the sensor integration and fusion for such sensors is described. Complementary sensor information is transformed into a common representation in order to achieve a cooperating sensor system. Sensor fusion is performed by matching the local perception of the laser scanner and camera system with a global model that is being build incrementally. The Mahalanobis distance is used as matching criterion and a Kalman filter is used to fuse matching features. A common representation including the uncertainty and the confidence is used for all scene features. The system's performance is demonstrated for the task of exploring an unknown environment and incrementally building of the geometrical model.
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