Self-localization based on a short-term memory of bearings and odometry

M. Jungel
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引用次数: 2

Abstract

In this paper we introduce a localization method which is based on a memory of horizontal bearings to landmarks and odometry. The approach is perfectly suited for mobile robots equipped with a camera because bearings can be extracted from images with high accuracy. In contrast to existing approaches, our method does not need any internal representation of the robot's position which is updated by alternating motion and sensor updates. In our approach the location is calculated by applying constraints on the robot's position which are derived from the observations and performed actions that are stored in a short-term memory. We give a detailed description of the method and analyze the properties of different observation selection mechanisms. Results of experiments done in simulation and conducted on a Sony Aibo robot are presented in this paper demonstrating the precision of the method.
自我定位基于短期记忆的轴承和里程计
本文介绍了一种基于水平方位对地标和里程计记忆的定位方法。该方法非常适合配备相机的移动机器人,因为可以从图像中高精度地提取轴承。与现有方法相比,我们的方法不需要机器人位置的任何内部表示,而是通过交替运动和传感器更新来更新。在我们的方法中,位置是通过对机器人的位置施加约束来计算的,这些约束来自于存储在短期记忆中的观察和执行的动作。详细介绍了该方法,并分析了不同观测选择机制的特性。本文给出了在索尼Aibo机器人上进行的仿真实验结果,证明了该方法的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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