移动服务机器人长期运行的动态地图

P. Biber, T. Duckett
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引用次数: 158

摘要

本文介绍了一种移动机器人随时间不断适应的动态地图。它通过同时在多个时间尺度(我们的实验中有五个时间尺度)上表示环境,解决了稳定性可塑性困境(适应新模式和保留旧模式之间的权衡)。提出了一种基于样本的表示,其中较旧的记忆以不同的速度根据时间尺度褪色。使用稳健统计来解释样本。研究表明,这种方法可以跟踪环境的静止和非静止元素,涵盖从移动物体到结构变化的全部变化。该方法在一个真实的动态环境中进行了为期五周的实验。实验结果表明,生成的地图稳定,随时间推移质量不断提高,并能适应变化。
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Dynamic Maps for Long-Term Operation of Mobile Service Robots
This paper introduces a dynamic map for mobile robots that adapts continuously over time. It resolves the stability plasticity dilemma (the tradeoff between adaptation to new patterns and preservation of old patterns) by representing the environment over multiple time scales simultaneously (five in our experiments). A sample-based representation is proposed, where older memories fade at different rates depending on the time scale. Robust statistics are used to interpret the samples. It is shown that this approach can track both stationary and non-stationary elements of the environment, covering the full spectrum of variations from moving objects to structural changes. The method was evaluated in a five-week experiment in a real dynamic environment. Experimental results show that the resulting map is stable, improves its quality over time and adapts to changes.
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